Skip to main content
Erschienen in: Soft Computing 16/2021

28.05.2021 | Application of soft computing

Advances of metaheuristic algorithms in training neural networks for industrial applications

verfasst von: Hue Yee Chong, Hwa Jen Yap, Shing Chiang Tan, Keem Siah Yap, Shen Yuong Wong

Erschienen in: Soft Computing | Ausgabe 16/2021

Einloggen

Aktivieren Sie unsere intelligente Suche, um passende Fachinhalte oder Patente zu finden.

search-config
loading …

Abstract

In recent decades, researches on optimizing the parameter of the artificial neural network (ANN) model has attracted significant attention from researchers. Hybridization of superior algorithms helps improving optimization performance and capable of solving complex applications. As a traditional gradient-based learning algorithm, ANN suffers from a slow learning rate and is easily trapped in local minima when training techniques such as gradient descent (GD) and back-propagation (BP) algorithm are used. The characteristics of randomization and selection of the best or near-optimal solution of metaheuristic algorithm provide an effective and robust solution; therefore, it has always been used in training of ANN to improve and overcome the above problems. New metaheuristic algorithms are proposed every year. Therefore, the review of its latest developments is essential. This article attempts to summarize the metaheuristic algorithms which have been proposed from the year 1975 to 2020 from various journals, conferences, technical papers, and books. The comparison of the popularity of the metaheuristic algorithm is presented in two time frames, such as algorithms proposed in the recent 20 years and those proposed earlier. Then, some of the popular metaheuristic algorithms and their working principle are reviewed. This article further categorizes the latest metaheuristic search algorithm in the literature to indicate their efficiency in training ANN for various industry applications. More and more researchers tend to develop new hybrid optimization tools by combining two or more metaheuristic algorithms to optimize the training parameters of ANN. Generally, the algorithm’s optimal performance must be able to achieve a fine balance of their exploration and exploitation characteristics. Hence, this article tries to compare and summarize the properties of various metaheuristic algorithms in terms of their convergence rate and the ability to avoid the local minima. This information is useful for researchers working on algorithm hybridization by providing a good understanding of the convergence rate and the ability to find a global optimum.

Sie haben noch keine Lizenz? Dann Informieren Sie sich jetzt über unsere Produkte:

Springer Professional "Wirtschaft+Technik"

Online-Abonnement

Mit Springer Professional "Wirtschaft+Technik" erhalten Sie Zugriff auf:

  • über 102.000 Bücher
  • über 537 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Maschinenbau + Werkstoffe
  • Versicherung + Risiko

Jetzt Wissensvorsprung sichern!

Springer Professional "Wirtschaft"

Online-Abonnement

Mit Springer Professional "Wirtschaft" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 340 Zeitschriften

aus folgenden Fachgebieten:

  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Finance + Banking
  • Management + Führung
  • Marketing + Vertrieb
  • Versicherung + Risiko




Jetzt Wissensvorsprung sichern!

Springer Professional "Technik"

Online-Abonnement

Mit Springer Professional "Technik" erhalten Sie Zugriff auf:

  • über 67.000 Bücher
  • über 390 Zeitschriften

aus folgenden Fachgebieten:

  • Automobil + Motoren
  • Bauwesen + Immobilien
  • Business IT + Informatik
  • Elektrotechnik + Elektronik
  • Energie + Nachhaltigkeit
  • Maschinenbau + Werkstoffe




 

Jetzt Wissensvorsprung sichern!

Literatur
Zurück zum Zitat Abdual-Salam ME, Abdul-Kader HM, Abdel-Wahed WF (2010) Comparative study between differential evolution and particle swarm optimization algorithms in training of feed-forward neural network for stock price prediction. In: 2010 The 7th International Conference on Informatics and Systems (INFOS). IEEE Abdual-Salam ME, Abdul-Kader HM, Abdel-Wahed WF (2010) Comparative study between differential evolution and particle swarm optimization algorithms in training of feed-forward neural network for stock price prediction. In: 2010 The 7th International Conference on Informatics and Systems (INFOS). IEEE
Zurück zum Zitat Abedinia O, Amjady N, Ghasemi A (2016) A new metaheuristic algorithm based on shark smell optimization. Complexity 21(5):97–116MathSciNet Abedinia O, Amjady N, Ghasemi A (2016) A new metaheuristic algorithm based on shark smell optimization. Complexity 21(5):97–116MathSciNet
Zurück zum Zitat Abraham A, Grosan C, Pedrycz W (2008) Engineering evolutionary intelligent systems. Springer, Berlin HeidelbergMATH Abraham A, Grosan C, Pedrycz W (2008) Engineering evolutionary intelligent systems. Springer, Berlin HeidelbergMATH
Zurück zum Zitat Afrakhteh S et al (2020) Accurate classification of EEG signals using neural networks trained by hybrid population-physic-based algorithm. Int J Autom Comput 17(1):108–122 Afrakhteh S et al (2020) Accurate classification of EEG signals using neural networks trained by hybrid population-physic-based algorithm. Int J Autom Comput 17(1):108–122
Zurück zum Zitat Aguilar-Rivera R, Valenzuela-Rendón M, Rodríguez-Ortiz JJ (2015) Genetic algorithms and Darwinian approaches in financial applications: a survey. Expert Syst Appl 42(21):7684–7697 Aguilar-Rivera R, Valenzuela-Rendón M, Rodríguez-Ortiz JJ (2015) Genetic algorithms and Darwinian approaches in financial applications: a survey. Expert Syst Appl 42(21):7684–7697
Zurück zum Zitat Ahmed MH, Hasan S, Ali A (2015) Learning enhancement of radial basis function neural network with harmony search algorithm. Int J Adv Soft Comput Appl. 7(1):98 Ahmed MH, Hasan S, Ali A (2015) Learning enhancement of radial basis function neural network with harmony search algorithm. Int J Adv Soft Comput Appl. 7(1):98
Zurück zum Zitat Akinosho TD et al (2020) Deep learning in the construction industry: a review of present status and future innovations. J Build Eng 32:101827 Akinosho TD et al (2020) Deep learning in the construction industry: a review of present status and future innovations. J Build Eng 32:101827
Zurück zum Zitat Al-Betar MA et al (2016) Tournament-based harmony search algorithm for non-convex economic load dispatch problem. Appl Soft Comput 47:449–459 Al-Betar MA et al (2016) Tournament-based harmony search algorithm for non-convex economic load dispatch problem. Appl Soft Comput 47:449–459
Zurück zum Zitat Al-Betar MA et al (2018) Economic load dispatch problems with valve-point loading using natural updated harmony search. Neural Comput Appl 29(10):767–781 Al-Betar MA et al (2018) Economic load dispatch problems with valve-point loading using natural updated harmony search. Neural Comput Appl 29(10):767–781
Zurück zum Zitat Aladag CH (2011) A new architecture selection method based on tabu search for artificial neural networks. Expert Syst Appl 38(4):3287–3293 Aladag CH (2011) A new architecture selection method based on tabu search for artificial neural networks. Expert Syst Appl 38(4):3287–3293
Zurück zum Zitat Alia OM, Mandava R, Aziz ME (2010) A hybrid Harmony Search algorithm to MRI brain segmentation. In: 2010 9th IEEE International Conference on Cognitive Informatics (ICCI) Alia OM, Mandava R, Aziz ME (2010) A hybrid Harmony Search algorithm to MRI brain segmentation. In: 2010 9th IEEE International Conference on Cognitive Informatics (ICCI)
Zurück zum Zitat Alpaydin E (2004) Introduction to machine learning. MIT Press, CambridgeMATH Alpaydin E (2004) Introduction to machine learning. MIT Press, CambridgeMATH
Zurück zum Zitat Alweshah M (2014) Firefly algorithm with artificial neural network for time series problems. Res J Appl Sci Eng Technol 7(19):3978–3982 Alweshah M (2014) Firefly algorithm with artificial neural network for time series problems. Res J Appl Sci Eng Technol 7(19):3978–3982
Zurück zum Zitat Amali DGB, Dinakaran M (2016) A review of heuristic global optimization based artificial neural network training approaches. Int J Pharm Technol 8(4):21670–21679 Amali DGB, Dinakaran M (2016) A review of heuristic global optimization based artificial neural network training approaches. Int J Pharm Technol 8(4):21670–21679
Zurück zum Zitat Ansari A et al (2020) A hybrid metaheuristic method in training artificial neural network for bankruptcy prediction. IEEE Access 8:176640–176650 Ansari A et al (2020) A hybrid metaheuristic method in training artificial neural network for bankruptcy prediction. IEEE Access 8:176640–176650
Zurück zum Zitat Arora S, Singh S (2019) Butterfly optimization algorithm: a novel approach for global optimization. Soft Comput 23(3):715–734 Arora S, Singh S (2019) Butterfly optimization algorithm: a novel approach for global optimization. Soft Comput 23(3):715–734
Zurück zum Zitat Askari Q, Younas I, Saeed M (2020) Political optimizer: a novel socio-inspired meta-heuristic for global optimization. Knowl-Based Syst 195:105709 Askari Q, Younas I, Saeed M (2020) Political optimizer: a novel socio-inspired meta-heuristic for global optimization. Knowl-Based Syst 195:105709
Zurück zum Zitat Askarzadeh A (2016) A novel metaheuristic method for solving constrained engineering optimization problems: crow search algorithm. Comput Struct 169:1–12 Askarzadeh A (2016) A novel metaheuristic method for solving constrained engineering optimization problems: crow search algorithm. Comput Struct 169:1–12
Zurück zum Zitat Askarzadeh A, Rezazadeh A (2013) Artificial neural network training using a new efficient optimization algorithm. Appl Soft Comput 13(2):1206–1213 Askarzadeh A, Rezazadeh A (2013) Artificial neural network training using a new efficient optimization algorithm. Appl Soft Comput 13(2):1206–1213
Zurück zum Zitat Atashpaz-Gargari E, Lucas C (2007) Imperialist competitive algorithm: An algorithm for optimization inspired by imperialistic competition. In: 2007 IEEE Congress on Evolutionary Computation Atashpaz-Gargari E, Lucas C (2007) Imperialist competitive algorithm: An algorithm for optimization inspired by imperialistic competition. In: 2007 IEEE Congress on Evolutionary Computation
Zurück zum Zitat Awadallah MA et al (2017) Hybridization of harmony search with hill climbing for highly constrained nurse rostering problem. Neural Comput Appl 28(3):463–482 Awadallah MA et al (2017) Hybridization of harmony search with hill climbing for highly constrained nurse rostering problem. Neural Comput Appl 28(3):463–482
Zurück zum Zitat Ayvaz MT (2009) Application of harmony search algorithm to the solution of groundwater management models. Adv Water Resour 32(6):916–924 Ayvaz MT (2009) Application of harmony search algorithm to the solution of groundwater management models. Adv Water Resour 32(6):916–924
Zurück zum Zitat Bahrami S, Doulati Ardejani F, Baafi E (2016) Application of artificial neural network coupled with genetic algorithm and simulated annealing to solve groundwater inflow problem to an advancing open pit mine. Journal of Hydrology 536:471–484 Bahrami S, Doulati Ardejani F, Baafi E (2016) Application of artificial neural network coupled with genetic algorithm and simulated annealing to solve groundwater inflow problem to an advancing open pit mine. Journal of Hydrology 536:471–484
Zurück zum Zitat Bashir ZA, El-Hawary ME (2009) Applying wavelets to short-term load forecasting using PSO-based neural networks. IEEE Trans Power Syst 24(1):20–27 Bashir ZA, El-Hawary ME (2009) Applying wavelets to short-term load forecasting using PSO-based neural networks. IEEE Trans Power Syst 24(1):20–27
Zurück zum Zitat Basu M (2016) Quasi-oppositional differential evolution for optimal reactive power dispatch. Int J Electr Power Energy Syst 78:29–40 Basu M (2016) Quasi-oppositional differential evolution for optimal reactive power dispatch. Int J Electr Power Energy Syst 78:29–40
Zurück zum Zitat Battiti R, Tecchiolli G (1994) The reactive tabu search. ORSA J Comput 6(2):126–140MATH Battiti R, Tecchiolli G (1994) The reactive tabu search. ORSA J Comput 6(2):126–140MATH
Zurück zum Zitat Beheshti Z, Shamsuddin SMH (2013) A review of population-based meta-heuristic algorithms. Int J Adv Soft Comput Appl 5(1):1–35 Beheshti Z, Shamsuddin SMH (2013) A review of population-based meta-heuristic algorithms. Int J Adv Soft Comput Appl 5(1):1–35
Zurück zum Zitat Bensingh RJ et al (2019) Injection molding process optimization of a bi-aspheric lens using hybrid artificial neural networks (ANNs) and particle swarm optimization (PSO). Measurement 134:359–374 Bensingh RJ et al (2019) Injection molding process optimization of a bi-aspheric lens using hybrid artificial neural networks (ANNs) and particle swarm optimization (PSO). Measurement 134:359–374
Zurück zum Zitat Benyelloul K, Aourag H (2013) Bulk modulus prediction of austenitic stainless steel using a hybrid GA–ANN as a data mining tools. Comput Mater Sci 77:330–334 Benyelloul K, Aourag H (2013) Bulk modulus prediction of austenitic stainless steel using a hybrid GA–ANN as a data mining tools. Comput Mater Sci 77:330–334
Zurück zum Zitat Bhargava V, Fateen S-EK, Bonilla-Petriciolet A (2013) Cuckoo search: a new nature-inspired optimization method for phase equilibrium calculations. Fluid Phase Equilib 337:191–200 Bhargava V, Fateen S-EK, Bonilla-Petriciolet A (2013) Cuckoo search: a new nature-inspired optimization method for phase equilibrium calculations. Fluid Phase Equilib 337:191–200
Zurück zum Zitat Bhesdadiya R et al (2018) Training multilayer perceptrons in neural network using interior search algorithm. Advances in Computer and Computational Sciences. Springer, pp 69–77 Bhesdadiya R et al (2018) Training multilayer perceptrons in neural network using interior search algorithm. Advances in Computer and Computational Sciences. Springer, pp 69–77
Zurück zum Zitat Bhoskar MT et al (2015) Genetic algorithm and its applications to mechanical engineering: a review. Mater Today Proc 2(4–5):2624–2630 Bhoskar MT et al (2015) Genetic algorithm and its applications to mechanical engineering: a review. Mater Today Proc 2(4–5):2624–2630
Zurück zum Zitat Biglari M et al (2013) Solving blasius differential equation by using hybrid neural network and gravitational search algorithm (HNNGSA). Global J Sci Eng Technol 11:29–36 Biglari M et al (2013) Solving blasius differential equation by using hybrid neural network and gravitational search algorithm (HNNGSA). Global J Sci Eng Technol 11:29–36
Zurück zum Zitat Bolaji AL et al (2014) University course timetabling using hybridized artificial bee colony with hill climbing optimizer. J Comput Sci 5(5):809–818 Bolaji AL et al (2014) University course timetabling using hybridized artificial bee colony with hill climbing optimizer. J Comput Sci 5(5):809–818
Zurück zum Zitat Bolaji AL, Ahmad AA, Shola PB (2018) Training of neural network for pattern classification using fireworks algorithm. Int J Syst Assur Eng Manag 9(1):208–215 Bolaji AL, Ahmad AA, Shola PB (2018) Training of neural network for pattern classification using fireworks algorithm. Int J Syst Assur Eng Manag 9(1):208–215
Zurück zum Zitat Bousmaha R, Hamou RM, Amine A (2019) Training feedforward neural networks using hybrid particle swarm optimization, multi-verse optimization. In: CITSC Bousmaha R, Hamou RM, Amine A (2019) Training feedforward neural networks using hybrid particle swarm optimization, multi-verse optimization. In: CITSC
Zurück zum Zitat Brajevic I, Tuba M (2013) Training feed-forward neural networks using firefly algorithm. In: Proceedings of the 12th International Conference on Artificial Intelligence, Knowledge Engineering and Data Bases (AIKED’13) Brajevic I, Tuba M (2013) Training feed-forward neural networks using firefly algorithm. In: Proceedings of the 12th International Conference on Artificial Intelligence, Knowledge Engineering and Data Bases (AIKED’13)
Zurück zum Zitat Busetti F (2003) Simulated annealing overview. JP Morgan, Italy Busetti F (2003) Simulated annealing overview. JP Morgan, Italy
Zurück zum Zitat Buyukozkan K et al (2016) Lexicographic bottleneck mixed-model assembly line balancing problem: artificial bee colony and tabu search approaches with optimised parameters. Expert Syst Appl 50:151–166 Buyukozkan K et al (2016) Lexicographic bottleneck mixed-model assembly line balancing problem: artificial bee colony and tabu search approaches with optimised parameters. Expert Syst Appl 50:151–166
Zurück zum Zitat Cantu-Paz E, Kamath C (2005) An empirical comparison of combinations of evolutionary algorithms and neural networks for classification problems. IEEE Trans Syst Man Cybern Part b Cybern 35(5):915–927 Cantu-Paz E, Kamath C (2005) An empirical comparison of combinations of evolutionary algorithms and neural networks for classification problems. IEEE Trans Syst Man Cybern Part b Cybern 35(5):915–927
Zurück zum Zitat Cao C et al (2018) Deep learning and its applications in biomedicine. Genom Proteom Bioinf 16(1):17–32 Cao C et al (2018) Deep learning and its applications in biomedicine. Genom Proteom Bioinf 16(1):17–32
Zurück zum Zitat Carvalho M, Ludermir TB (2007) Particle swarm optimization of neural network architectures andweights. In: 7th international conference on hybrid intelligent systems, 2007. HIS 2007 Carvalho M, Ludermir TB (2007) Particle swarm optimization of neural network architectures andweights. In: 7th international conference on hybrid intelligent systems, 2007. HIS 2007
Zurück zum Zitat Castellani M, Rowlands H (2009) Evolutionary Artificial Neural Network Design and Training for wood veneer classification. Eng Appl Artif Intell 22(4–5):732–741 Castellani M, Rowlands H (2009) Evolutionary Artificial Neural Network Design and Training for wood veneer classification. Eng Appl Artif Intell 22(4–5):732–741
Zurück zum Zitat Catalbas MC, Gulten A (2018) Circular structures of puffer fish: a new metaheuristic optimization algorithm. In: 2018 Third international conference on electrical and biomedical engineering, clean energy and green computing (EBECEGC) Catalbas MC, Gulten A (2018) Circular structures of puffer fish: a new metaheuristic optimization algorithm. In: 2018 Third international conference on electrical and biomedical engineering, clean energy and green computing (EBECEGC)
Zurück zum Zitat Ceylan H et al (2008) Transport energy modeling with meta-heuristic harmony search algorithm, an application to Turkey. Energy Policy 36(7):2527–2535 Ceylan H et al (2008) Transport energy modeling with meta-heuristic harmony search algorithm, an application to Turkey. Energy Policy 36(7):2527–2535
Zurück zum Zitat Chaki S, Ghosal S (2011) Application of an optimized SA-ANN hybrid model for parametric modeling and optimization of LASOX cutting of mild steel. Prod Eng Res Devel 5(3):251–262 Chaki S, Ghosal S (2011) Application of an optimized SA-ANN hybrid model for parametric modeling and optimization of LASOX cutting of mild steel. Prod Eng Res Devel 5(3):251–262
Zurück zum Zitat Chakraborty S, Mitra A (2018) Parametric optimization of abrasive water-jet machining processes using grey wolf optimizer. Mater Manuf Processes 33(13):1471–1482 Chakraborty S, Mitra A (2018) Parametric optimization of abrasive water-jet machining processes using grey wolf optimizer. Mater Manuf Processes 33(13):1471–1482
Zurück zum Zitat Chandrasekar K, Ramana N (2012) Performance comparison of GA, DE, PSO and SA approaches in enhancement of total transfer capability using facts devices. J Electr Eng Technol 7(4):493–500 Chandrasekar K, Ramana N (2012) Performance comparison of GA, DE, PSO and SA approaches in enhancement of total transfer capability using facts devices. J Electr Eng Technol 7(4):493–500
Zurück zum Zitat Chatterjee A, Mahanti GK, Chatterjee A (2012) Design of a fully digital controlled reconfigurable switched beam concentric ring array antenna using firefly and particle swarm optimization algorithm. Prog Electromagn Res B 36:113–131 Chatterjee A, Mahanti GK, Chatterjee A (2012) Design of a fully digital controlled reconfigurable switched beam concentric ring array antenna using firefly and particle swarm optimization algorithm. Prog Electromagn Res B 36:113–131
Zurück zum Zitat Chen R et al (2018) Intelligent fault diagnosis of gearbox based on improved fireworks algorithm and probabilistic neural network. Trans Chin Soc Agric Eng 34(17):192–198 Chen R et al (2018) Intelligent fault diagnosis of gearbox based on improved fireworks algorithm and probabilistic neural network. Trans Chin Soc Agric Eng 34(17):192–198
Zurück zum Zitat Chen J, Cai H, Wang W (2018) A new metaheuristic algorithm: car tracking optimization algorithm. Soft Comput 22(12):3857–3878 Chen J, Cai H, Wang W (2018) A new metaheuristic algorithm: car tracking optimization algorithm. Soft Comput 22(12):3857–3878
Zurück zum Zitat Chen QH Do, Hsieh HN (2015) Training artificial neural networks by a hybrid PSO-CS algorithm. Algorithms 8(2):292–308MathSciNetMATH Chen QH Do, Hsieh HN (2015) Training artificial neural networks by a hybrid PSO-CS algorithm. Algorithms 8(2):292–308MathSciNetMATH
Zurück zum Zitat Chen et al (2008) A novel hybrid Evolutionary Algorithm based on PSO and AFSA for feedforward neural network training. In: 4th International Conference on Wireless Communications, Networking and Mobile Computing, 2008. WiCOM'08. IEEE Chen et al (2008) A novel hybrid Evolutionary Algorithm based on PSO and AFSA for feedforward neural network training. In: 4th International Conference on Wireless Communications, Networking and Mobile Computing, 2008. WiCOM'08. IEEE
Zurück zum Zitat Cheng M-Y, Prayogo DJC (2014) Structures, symbiotic organisms search: a new metaheuristic optimization algorithm. Comput Struct 139:98–112 Cheng M-Y, Prayogo DJC (2014) Structures, symbiotic organisms search: a new metaheuristic optimization algorithm. Comput Struct 139:98–112
Zurück zum Zitat Civicioglu P (2012) Transforming geocentric cartesian coordinates to geodetic coordinates by using differential search algorithm. Comput Geosci 46:229–247 Civicioglu P (2012) Transforming geocentric cartesian coordinates to geodetic coordinates by using differential search algorithm. Comput Geosci 46:229–247
Zurück zum Zitat Civicioglu P (2013) Artificial cooperative search algorithm for numerical optimization problems. Inf Sci 229:58–76MATH Civicioglu P (2013) Artificial cooperative search algorithm for numerical optimization problems. Inf Sci 229:58–76MATH
Zurück zum Zitat Cobo P, Moraes E, Simón F (2015) Inverse estimation of the non-acoustical parameters of loose granular absorbers by simulated annealing. Build Environ 94:859–866 Cobo P, Moraes E, Simón F (2015) Inverse estimation of the non-acoustical parameters of loose granular absorbers by simulated annealing. Build Environ 94:859–866
Zurück zum Zitat Codreanu I (2005) A parallel between differential evolution and genetic algorithms with exemplification in a microfluidics optimization problem. In: 2005 International Semiconductor Conference, 2005. CAS 2005 Proceedings. IEEE Codreanu I (2005) A parallel between differential evolution and genetic algorithms with exemplification in a microfluidics optimization problem. In: 2005 International Semiconductor Conference, 2005. CAS 2005 Proceedings. IEEE
Zurück zum Zitat Cogill R, Hindi H (2007) Optimal routing and scheduling in flexible manufacturing systems using integer programming. In: 2007 46th IEEE Conference on Decision and Control Cogill R, Hindi H (2007) Optimal routing and scheduling in flexible manufacturing systems using integer programming. In: 2007 46th IEEE Conference on Decision and Control
Zurück zum Zitat Dai L et al (2017) Deep learning for speech recognition: review of state-of-the-arts technologies and prospects. J Data Acquisit Process 2(2):1004–9037 Dai L et al (2017) Deep learning for speech recognition: review of state-of-the-arts technologies and prospects. J Data Acquisit Process 2(2):1004–9037
Zurück zum Zitat Das S et al (2009) Differential evolution using a neighborhood-based mutation operator. IEEE Trans Evol Comput 13(3):526–553 Das S et al (2009) Differential evolution using a neighborhood-based mutation operator. IEEE Trans Evol Comput 13(3):526–553
Zurück zum Zitat Das R et al (2016) Application of artificial bee colony algorithm for maximizing heat transfer in a perforated fin. Proc Inst Mech Eng Part E: J Process Mech Eng. 232(1):38–48 Das R et al (2016) Application of artificial bee colony algorithm for maximizing heat transfer in a perforated fin. Proc Inst Mech Eng Part E: J Process Mech Eng. 232(1):38–48
Zurück zum Zitat Das S, Mullick SS, Suganthan P (2016) Recent advances in differential evolution—an updated survey. Swarm Evol Comput 27:1–30 Das S, Mullick SS, Suganthan P (2016) Recent advances in differential evolution—an updated survey. Swarm Evol Comput 27:1–30
Zurück zum Zitat Das S, Suganthan PN (2011) Differential evolution: a survey of the state-of-the-art. IEEE Trans Evol Comput 15(1):4–31 Das S, Suganthan PN (2011) Differential evolution: a survey of the state-of-the-art. IEEE Trans Evol Comput 15(1):4–31
Zurück zum Zitat Dastanpour A et al (2014) Using gravitational search algorithm to support artificial neural network in intrusion detection system. Smart Comput Rev 4(6):426–434 Dastanpour A et al (2014) Using gravitational search algorithm to support artificial neural network in intrusion detection system. Smart Comput Rev 4(6):426–434
Zurück zum Zitat de Lima AMM et al (2008) A nuclear reactor core fuel reload optimization using artificial ant colony connective networks. Ann Nucl Energy 35(9):1606–1612 de Lima AMM et al (2008) A nuclear reactor core fuel reload optimization using artificial ant colony connective networks. Ann Nucl Energy 35(9):1606–1612
Zurück zum Zitat Deng Y, Wu J, Tan Y-J (2016) Optimal attack strategy of complex networks based on tabu search. Phys A 442:74–81MathSciNetMATH Deng Y, Wu J, Tan Y-J (2016) Optimal attack strategy of complex networks based on tabu search. Phys A 442:74–81MathSciNetMATH
Zurück zum Zitat Devendiran S et al (2015) Bearing fault diagnosis using CWT, BGA and Artificial Bee Colony Algorithm. Int J Mech Mechatron Eng. 15(3) Devendiran S et al (2015) Bearing fault diagnosis using CWT, BGA and Artificial Bee Colony Algorithm. Int J Mech Mechatron Eng. 15(3)
Zurück zum Zitat Dhiman G, Kumar V (2017) Spotted hyena optimizer: a novel bio-inspired based metaheuristic technique for engineering applications. Adv Eng Softw 114:48–70 Dhiman G, Kumar V (2017) Spotted hyena optimizer: a novel bio-inspired based metaheuristic technique for engineering applications. Adv Eng Softw 114:48–70
Zurück zum Zitat Diop L et al (2020) Annual rainfall forecasting using hybrid artificial intelligence model: integration of multilayer perceptron with whale optimization algorithm. Water Resour Manage 34(2):733–746 Diop L et al (2020) Annual rainfall forecasting using hybrid artificial intelligence model: integration of multilayer perceptron with whale optimization algorithm. Water Resour Manage 34(2):733–746
Zurück zum Zitat Do Q (2015) A hybrid gravitational search algorithm and back-propagation for training feedforward neural networks. In: Nguyen V-H, Le A-C, Huynh V-N (eds) Knowledge and Systems Engineering. Springer International Publishing, Berlin, pp 381–392 Do Q (2015) A hybrid gravitational search algorithm and back-propagation for training feedforward neural networks. In: Nguyen V-H, Le A-C, Huynh V-N (eds) Knowledge and Systems Engineering. Springer International Publishing, Berlin, pp 381–392
Zurück zum Zitat Dorigo M (1992) Optimization, learning and natural algorithms. Ph. D. Thesis, Politecnico di Milano, Italy Dorigo M (1992) Optimization, learning and natural algorithms. Ph. D. Thesis, Politecnico di Milano, Italy
Zurück zum Zitat Doğan B, Ölmez T (2015) A new metaheuristic for numerical function optimization: vortex search algorithm. Comput Oper Res 293:125–145 Doğan B, Ölmez T (2015) A new metaheuristic for numerical function optimization: vortex search algorithm. Comput Oper Res 293:125–145
Zurück zum Zitat Duman E, Uysal M, Alkaya AF (2012) Migrating birds Optimization: a new metaheuristic approach and its performance on quadratic assignment problem. Inf Sci 217:65–77MathSciNet Duman E, Uysal M, Alkaya AF (2012) Migrating birds Optimization: a new metaheuristic approach and its performance on quadratic assignment problem. Inf Sci 217:65–77MathSciNet
Zurück zum Zitat Eberhart R, Kennedy J (1995) A new optimizer using particle swarm theory. In: Proceedings of the Sixth International Symposium on Micro Machine and Human Science, 1995. MHS '95 Eberhart R, Kennedy J (1995) A new optimizer using particle swarm theory. In: Proceedings of the Sixth International Symposium on Micro Machine and Human Science, 1995. MHS '95
Zurück zum Zitat Ebrahimi A, Khamehchi E (2016) Sperm whale algorithm: an effective metaheuristic algorithm for production optimization problems. J Nat Gas Sci Eng 29:211–222 Ebrahimi A, Khamehchi E (2016) Sperm whale algorithm: an effective metaheuristic algorithm for production optimization problems. J Nat Gas Sci Eng 29:211–222
Zurück zum Zitat Eker E et al (2020) Training multi-layer perceptron using harris hawks optimization. In: 2020 International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA) Eker E et al (2020) Training multi-layer perceptron using harris hawks optimization. In: 2020 International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA)
Zurück zum Zitat Esen H et al (2008) Artificial neural networks and adaptive neuro-fuzzy assessments for ground-coupled heat pump system. Energy Buildings 40(6):1074–1083 Esen H et al (2008) Artificial neural networks and adaptive neuro-fuzzy assessments for ground-coupled heat pump system. Energy Buildings 40(6):1074–1083
Zurück zum Zitat Fan Q, Zhang Y (2016) Self-adaptive differential evolution algorithm with crossover strategies adaptation and its application in parameter estimation. Chemom Intell Lab Syst 151:164–171 Fan Q, Zhang Y (2016) Self-adaptive differential evolution algorithm with crossover strategies adaptation and its application in parameter estimation. Chemom Intell Lab Syst 151:164–171
Zurück zum Zitat Fan C, Zhou Y, Tang Z (2020) Neighborhood centroid opposite-based learning Harris Hawks optimization for training neural networks. Evol Intell 2020:1–21 Fan C, Zhou Y, Tang Z (2020) Neighborhood centroid opposite-based learning Harris Hawks optimization for training neural networks. Evol Intell 2020:1–21
Zurück zum Zitat Fang S, Zhang X (2016) A Hybrid Algorithm of Particle swarm optimization and tabu search for distribution network reconfiguration. Math Problems Eng 2016:1–7 Fang S, Zhang X (2016) A Hybrid Algorithm of Particle swarm optimization and tabu search for distribution network reconfiguration. Math Problems Eng 2016:1–7
Zurück zum Zitat Faris H, Aljarah I, Mirjalili S (2016) Training feedforward neural networks using multi-verse optimizer for binary classification problems. Appl Intell 45(2):322–332 Faris H, Aljarah I, Mirjalili S (2016) Training feedforward neural networks using multi-verse optimizer for binary classification problems. Appl Intell 45(2):322–332
Zurück zum Zitat Faris H et al (2018) Grey wolf optimizer: a review of recent variants and applications. Neural Comput Appl 30(2):413–435 Faris H et al (2018) Grey wolf optimizer: a review of recent variants and applications. Neural Comput Appl 30(2):413–435
Zurück zum Zitat Farmer JD, Packard NH, Perelson AS (1986) The immune system, adaptation, and machine learning. Phys D 22(1):187–204MathSciNet Farmer JD, Packard NH, Perelson AS (1986) The immune system, adaptation, and machine learning. Phys D 22(1):187–204MathSciNet
Zurück zum Zitat Farshidpour S, Keynia F (2012) Using artificial bee colony algorithm for MLP training on software defect prediction. Oriental J Comput Sci Technol 5(2):231–239 Farshidpour S, Keynia F (2012) Using artificial bee colony algorithm for MLP training on software defect prediction. Oriental J Comput Sci Technol 5(2):231–239
Zurück zum Zitat Fathollahi-Fard AM, Hajiaghaei-Keshteli M, Tavakkoli-Moghaddam R (2020) Red deer algorithm (RDA): a new nature-inspired meta-heuristic. Soft Comput 24(19):14637–14665 Fathollahi-Fard AM, Hajiaghaei-Keshteli M, Tavakkoli-Moghaddam R (2020) Red deer algorithm (RDA): a new nature-inspired meta-heuristic. Soft Comput 24(19):14637–14665
Zurück zum Zitat Fesanghary M, Damangir E, Soleimani I (2009) Design optimization of shell and tube heat exchangers using global sensitivity analysis and harmony search algorithm. Appl Therm Eng 29(5):1026–1031 Fesanghary M, Damangir E, Soleimani I (2009) Design optimization of shell and tube heat exchangers using global sensitivity analysis and harmony search algorithm. Appl Therm Eng 29(5):1026–1031
Zurück zum Zitat Gambhir S, Malik SK, Kumar Y (2017) PSO-ANN based diagnostic model for the early detection of dengue disease. New Horizons Trans Med 4(1):1–8 Gambhir S, Malik SK, Kumar Y (2017) PSO-ANN based diagnostic model for the early detection of dengue disease. New Horizons Trans Med 4(1):1–8
Zurück zum Zitat Gandomi AH (2014) Interior search algorithm (ISA): a novel approach for global optimization. ISA Trans 53(4):1168–1183 Gandomi AH (2014) Interior search algorithm (ISA): a novel approach for global optimization. ISA Trans 53(4):1168–1183
Zurück zum Zitat Gandomi AH, Alavi AH (2012) Krill herd: a new bio-inspired optimization algorithm. Commun Nonlinear Sci Numer Simul 17(12):4831–4845MathSciNetMATH Gandomi AH, Alavi AH (2012) Krill herd: a new bio-inspired optimization algorithm. Commun Nonlinear Sci Numer Simul 17(12):4831–4845MathSciNetMATH
Zurück zum Zitat Gandomi AH, Yang X-S, Alavi AH (2013) Cuckoo search algorithm: a metaheuristic approach to solve structural optimization problems. Eng Comput 29(1):17–35 Gandomi AH, Yang X-S, Alavi AH (2013) Cuckoo search algorithm: a metaheuristic approach to solve structural optimization problems. Eng Comput 29(1):17–35
Zurück zum Zitat Gandomi et al (2015) Optimization of retaining wall design using recent swarm intelligence techniques. Eng Struct 103:72–84 Gandomi et al (2015) Optimization of retaining wall design using recent swarm intelligence techniques. Eng Struct 103:72–84
Zurück zum Zitat Gao H et al (2014) A hybrid particle-swarm tabu search algorithm for solving job shop scheduling problems. IEEE Trans Industr Inf 10(4):2044–2054 Gao H et al (2014) A hybrid particle-swarm tabu search algorithm for solving job shop scheduling problems. IEEE Trans Industr Inf 10(4):2044–2054
Zurück zum Zitat Geem ZW (2009a) Multiobjective optimization of time-cost trade-off using harmony search. J Construct Eng Manag 136(6):711–716 Geem ZW (2009a) Multiobjective optimization of time-cost trade-off using harmony search. J Construct Eng Manag 136(6):711–716
Zurück zum Zitat Geem ZW (2009b) Harmony search algorithms for structural design optimization. Springer, Berlin Heidelberg Geem ZW (2009b) Harmony search algorithms for structural design optimization. Springer, Berlin Heidelberg
Zurück zum Zitat Geem ZW, Kim JH, Loganathan G (2001) A new heuristic optimization algorithm: harmony search. Simulation 76(2):60–68 Geem ZW, Kim JH, Loganathan G (2001) A new heuristic optimization algorithm: harmony search. Simulation 76(2):60–68
Zurück zum Zitat Gen M, Cheng R (1997) Genetic algorithms and engineering design. Wiley, Newyork Gen M, Cheng R (1997) Genetic algorithms and engineering design. Wiley, Newyork
Zurück zum Zitat Ghalambaz M et al (2011) A hybrid neural network and gravitational search algorithm (HNNGSA) method to solve well known Wessinger’s equation. World Acad Sci Eng Technol 73:803–807 Ghalambaz M et al (2011) A hybrid neural network and gravitational search algorithm (HNNGSA) method to solve well known Wessinger’s equation. World Acad Sci Eng Technol 73:803–807
Zurück zum Zitat Ghanem WAH, Jantan A (2014) Using hybrid artificial bee colony algorithm and particle swarm optimization for training feed-forward neural networks. J Theor Appl Inf Technol 67(3) Ghanem WAH, Jantan A (2014) Using hybrid artificial bee colony algorithm and particle swarm optimization for training feed-forward neural networks. J Theor Appl Inf Technol 67(3)
Zurück zum Zitat Ghanem WAHM et al (2020) An efficient intrusion detection model based on hybridization of artificial bee colony and dragonfly algorithms for training multilayer perceptrons. IEEE Access 8:130452–130475 Ghanem WAHM et al (2020) An efficient intrusion detection model based on hybridization of artificial bee colony and dragonfly algorithms for training multilayer perceptrons. IEEE Access 8:130452–130475
Zurück zum Zitat Gholizadeh S, Barati H (2012) A comparative study of three metaheuristics for optimum design of trusses. Int J Optim Civil Eng 3(3):423–441 Gholizadeh S, Barati H (2012) A comparative study of three metaheuristics for optimum design of trusses. Int J Optim Civil Eng 3(3):423–441
Zurück zum Zitat Glover FJD (1977) Heuristics for integer programming using surrogate constraints. Decis Sci 8(1):156–166 Glover FJD (1977) Heuristics for integer programming using surrogate constraints. Decis Sci 8(1):156–166
Zurück zum Zitat Glover F (1986) Future paths for integer programming and links to artificial intelligence. Comput Oper Res 13(5):533–549MathSciNetMATH Glover F (1986) Future paths for integer programming and links to artificial intelligence. Comput Oper Res 13(5):533–549MathSciNetMATH
Zurück zum Zitat Glover F (1989) Tabu search—part I. ORSA J Comput 1(3):190–206MATH Glover F (1989) Tabu search—part I. ORSA J Comput 1(3):190–206MATH
Zurück zum Zitat Glover F (1990) Tabu search—part II. ORSA J Comput 2(1):4–32MATH Glover F (1990) Tabu search—part II. ORSA J Comput 2(1):4–32MATH
Zurück zum Zitat Goldberg DE (1989) Genetic algorithms in search, optimization, and machine learning. Addison-Wesley Publishing Company, BostonMATH Goldberg DE (1989) Genetic algorithms in search, optimization, and machine learning. Addison-Wesley Publishing Company, BostonMATH
Zurück zum Zitat González B et al (2015) Fuzzy logic in the gravitational search algorithm for the optimization of modular neural networks in pattern recognition. Expert Syst Appl 42(14):5839–5847 González B et al (2015) Fuzzy logic in the gravitational search algorithm for the optimization of modular neural networks in pattern recognition. Expert Syst Appl 42(14):5839–5847
Zurück zum Zitat Grzechca D (2011) Simulated annealing with artificial neural network fitness function for ECG amplifier testing. In: 2011 20th European Conference on Circuit Theory and Design (ECCTD) Grzechca D (2011) Simulated annealing with artificial neural network fitness function for ECG amplifier testing. In: 2011 20th European Conference on Circuit Theory and Design (ECCTD)
Zurück zum Zitat Gudise VG, Venayagamoorthy GK (2003) Comparison of particle swarm optimization and backpropagation as training algorithms for neural networks. In: Swarm Intelligence Symposium, 2003. SIS '03. Proceedings of the 2003 IEEE Gudise VG, Venayagamoorthy GK (2003) Comparison of particle swarm optimization and backpropagation as training algorithms for neural networks. In: Swarm Intelligence Symposium, 2003. SIS '03. Proceedings of the 2003 IEEE
Zurück zum Zitat Haddad OB, Afshar A, Mariño MA (2006) Honey-bees mating optimization (HBMO) algorithm: a new heuristic approach for water resources optimization. Water Resour Manage 20(5):661–680 Haddad OB, Afshar A, Mariño MA (2006) Honey-bees mating optimization (HBMO) algorithm: a new heuristic approach for water resources optimization. Water Resour Manage 20(5):661–680
Zurück zum Zitat Haghnegahdar L, Wang Y (2020) A whale optimization algorithm-trained artificial neural network for smart grid cyber intrusion detection. Neural Comput Appl 32(13):9427–9441 Haghnegahdar L, Wang Y (2020) A whale optimization algorithm-trained artificial neural network for smart grid cyber intrusion detection. Neural Comput Appl 32(13):9427–9441
Zurück zum Zitat Hai-Jew S (2014) Enhancing qualitative and mixed methods research with technology. IGI Global, Pennsylvania Hai-Jew S (2014) Enhancing qualitative and mixed methods research with technology. IGI Global, Pennsylvania
Zurück zum Zitat Halliday D, Resnick R, Walker J (1994) Fundamentals of physics. Wiley, New YorkMATH Halliday D, Resnick R, Walker J (1994) Fundamentals of physics. Wiley, New YorkMATH
Zurück zum Zitat Hamdan S et al (2017) On the performance of artificial neural network with sine-cosine algorithm in forecasting electricity load demand. In: 2017 International Conference on Electrical and Computing Technologies and Applications (ICECTA) Hamdan S et al (2017) On the performance of artificial neural network with sine-cosine algorithm in forecasting electricity load demand. In: 2017 International Conference on Electrical and Computing Technologies and Applications (ICECTA)
Zurück zum Zitat Hanseth O, Aanestad M (2001) Bootstrapping networks, communities and infrastructures. On the evolution of ICT solutions in health care. In: Proceedings of the 1st International Conference on Information Technology in Health Care (ITHC’01) Hanseth O, Aanestad M (2001) Bootstrapping networks, communities and infrastructures. On the evolution of ICT solutions in health care. In: Proceedings of the 1st International Conference on Information Technology in Health Care (ITHC’01)
Zurück zum Zitat Harifi S et al (2019) Emperor Penguins colony: a new metaheuristic algorithm for optimization. Evol Intel 12(2):211–226 Harifi S et al (2019) Emperor Penguins colony: a new metaheuristic algorithm for optimization. Evol Intel 12(2):211–226
Zurück zum Zitat Hassanin MF, Shoeb AM, Hassanien AE (2017) Designing multilayer feedforward neural networks using multi-verse optimizer. Handbook of Research on Machine Learning Innovations and Trends. IGI Global, Pennyslyvia, pp 1076–1093 Hassanin MF, Shoeb AM, Hassanien AE (2017) Designing multilayer feedforward neural networks using multi-verse optimizer. Handbook of Research on Machine Learning Innovations and Trends. IGI Global, Pennyslyvia, pp 1076–1093
Zurück zum Zitat Hassanzadeh T, Vojodi H, Moghadam AME (2011) An image segmentation approach based on maximum variance intra-cluster method and firefly algorithm. In: 2011 Seventh International Conference on Natural Computation (ICNC). IEEE Hassanzadeh T, Vojodi H, Moghadam AME (2011) An image segmentation approach based on maximum variance intra-cluster method and firefly algorithm. In: 2011 Seventh International Conference on Natural Computation (ICNC). IEEE
Zurück zum Zitat Hatamlou A, Abdullah S, Nezamabadi-pour H (2011) Application of gravitational search algorithm on data clustering. In: Yao J et al (eds) Rough sets and knowledge technology. Springer, Berlin Heidelberg, pp 337–346 Hatamlou A, Abdullah S, Nezamabadi-pour H (2011) Application of gravitational search algorithm on data clustering. In: Yao J et al (eds) Rough sets and knowledge technology. Springer, Berlin Heidelberg, pp 337–346
Zurück zum Zitat Haykin S (1998) Neural networks: a comprehensive foundation. Hoboken, Prentice Hall PTR, p 842 Haykin S (1998) Neural networks: a comprehensive foundation. Hoboken, Prentice Hall PTR, p 842
Zurück zum Zitat He Y et al (2005) Optimizing weights of neural network using an adaptive tabu search approach. In: Wang J, Liao X, Yi Z (Eds) Advances in neural networks—ISNN 2005: Second International Symposium on Neural Networks, Chongqing, China, May 30–June 1, 2005, Proceedings, Part I. Springer, Berlin, Heidelberg, pp 672–676 He Y et al (2005) Optimizing weights of neural network using an adaptive tabu search approach. In: Wang J, Liao X, Yi Z (Eds) Advances in neural networks—ISNN 2005: Second International Symposium on Neural Networks, Chongqing, China, May 30–June 1, 2005, Proceedings, Part I. Springer, Berlin, Heidelberg, pp 672–676
Zurück zum Zitat He S, Wu Q, Saunders J (2006) A novel group search optimizer inspired by animal behavioural ecology. In: 2006 IEEE international conference on evolutionary computation. IEEE He S, Wu Q, Saunders J (2006) A novel group search optimizer inspired by animal behavioural ecology. In: 2006 IEEE international conference on evolutionary computation. IEEE
Zurück zum Zitat Heidari AA et al (2019) Harris hawks optimization: algorithm and applications. Futur Gener Comput Syst 97:849–872 Heidari AA et al (2019) Harris hawks optimization: algorithm and applications. Futur Gener Comput Syst 97:849–872
Zurück zum Zitat Hinton GE, Osindero S, Teh Y-WJN (2006) A fast learning algorithm for deep belief nets. Neural Comput 18(7):1527–1554MathSciNetMATH Hinton GE, Osindero S, Teh Y-WJN (2006) A fast learning algorithm for deep belief nets. Neural Comput 18(7):1527–1554MathSciNetMATH
Zurück zum Zitat Holland JH (1975) Adaptation in natural and artificial systems: an introductory analysis with applications to biology, control, and artificial intelligence. U Michigan Press, Ann ArborMATH Holland JH (1975) Adaptation in natural and artificial systems: an introductory analysis with applications to biology, control, and artificial intelligence. U Michigan Press, Ann ArborMATH
Zurück zum Zitat Horng M-H et al (2012) Firefly meta-heuristic algorithm for training the radial basis function network for data classification and disease diagnosis. INTECH Open Access Publisher, London Horng M-H et al (2012) Firefly meta-heuristic algorithm for training the radial basis function network for data classification and disease diagnosis. INTECH Open Access Publisher, London
Zurück zum Zitat Horng M-H (2012) Vector quantization using the firefly algorithm for image compression. Expert Syst Appl 39(1):1078–1091 Horng M-H (2012) Vector quantization using the firefly algorithm for image compression. Expert Syst Appl 39(1):1078–1091
Zurück zum Zitat Hosseini HS (2007) Problem solving by intelligent water drops. In: 2007 IEEE congress on evolutionary computation. IEEE Hosseini HS (2007) Problem solving by intelligent water drops. In: 2007 IEEE congress on evolutionary computation. IEEE
Zurück zum Zitat Hussain K et al (2018) Metaheuristic research: a comprehensive survey. Artif Intell Rev 52(4):2191–2233 Hussain K et al (2018) Metaheuristic research: a comprehensive survey. Artif Intell Rev 52(4):2191–2233
Zurück zum Zitat Husseinzadeh Kashan A (2015) A new metaheuristic for optimization: optics inspired optimization (OIO). Comput Oper Res 55:99–125MathSciNetMATH Husseinzadeh Kashan A (2015) A new metaheuristic for optimization: optics inspired optimization (OIO). Comput Oper Res 55:99–125MathSciNetMATH
Zurück zum Zitat Ingber L (1993) Simulated annealing: practice versus theory. Math Comput Model 18(11):29–57MathSciNetMATH Ingber L (1993) Simulated annealing: practice versus theory. Math Comput Model 18(11):29–57MathSciNetMATH
Zurück zum Zitat Irani R, Nasimi R (2011) Application of artificial bee colony-based neural network in bottom hole pressure prediction in underbalanced drilling. J Petrol Sci Eng 78(1):6–12 Irani R, Nasimi R (2011) Application of artificial bee colony-based neural network in bottom hole pressure prediction in underbalanced drilling. J Petrol Sci Eng 78(1):6–12
Zurück zum Zitat Jadon SS et al (2017) Hybrid artificial bee colony algorithm with differential evolution. Appl Soft Comput 58:11–24 Jadon SS et al (2017) Hybrid artificial bee colony algorithm with differential evolution. Appl Soft Comput 58:11–24
Zurück zum Zitat Jain M, Singh V, Rani A (2019) A novel nature-inspired algorithm for optimization: squirrel search algorithm. Swarm Evol Comput 44:148–175 Jain M, Singh V, Rani A (2019) A novel nature-inspired algorithm for optimization: squirrel search algorithm. Swarm Evol Comput 44:148–175
Zurück zum Zitat Janakiraman S (2018) A hybrid ant colony and artificial bee colony optimization algorithm-based cluster head selection for IoT. Proc Comput Sci 143:360–366 Janakiraman S (2018) A hybrid ant colony and artificial bee colony optimization algorithm-based cluster head selection for IoT. Proc Comput Sci 143:360–366
Zurück zum Zitat Jarraya B, Bouri A (2012) Metaheuristic optimization backgrounds: a literature review. Int J Contemp Bus Stud 3(12):31-44 Jarraya B, Bouri A (2012) Metaheuristic optimization backgrounds: a literature review. Int J Contemp Bus Stud 3(12):31-44
Zurück zum Zitat Javidy B, Hatamlou A, Mirjalili S (2015) Ions motion algorithm for solving optimization problems. Appl Soft Comput 32:72–79 Javidy B, Hatamlou A, Mirjalili S (2015) Ions motion algorithm for solving optimization problems. Appl Soft Comput 32:72–79
Zurück zum Zitat Jayaswal S, Agarwal P (2014) Balancing U-shaped assembly lines with resource dependent task times: a simulated annealing approach. J Manuf Syst 33(4):522–534 Jayaswal S, Agarwal P (2014) Balancing U-shaped assembly lines with resource dependent task times: a simulated annealing approach. J Manuf Syst 33(4):522–534
Zurück zum Zitat Kalogirou SA (2000) Applications of artificial neural-networks for energy systems. Appl Energy 67(1–2):17–35 Kalogirou SA (2000) Applications of artificial neural-networks for energy systems. Appl Energy 67(1–2):17–35
Zurück zum Zitat Kankal M, Uzlu E (2017) Neural network approach with teaching–learning-based optimization for modeling and forecasting long-term electric energy demand in Turkey. Neural Comput Appl 28(1):737–747 Kankal M, Uzlu E (2017) Neural network approach with teaching–learning-based optimization for modeling and forecasting long-term electric energy demand in Turkey. Neural Comput Appl 28(1):737–747
Zurück zum Zitat Karaboga D, Basturk B (2008) On the performance of artificial bee colony (ABC) algorithm. Appl Soft Comput 8(1):687–697 Karaboga D, Basturk B (2008) On the performance of artificial bee colony (ABC) algorithm. Appl Soft Comput 8(1):687–697
Zurück zum Zitat Karaboga D (2005) An idea based on honey bee swarm for numerical optimization. Technical Report-tr06, Erciyes University, Engineering Faculty: Kayseri, Turkey Karaboga D (2005) An idea based on honey bee swarm for numerical optimization. Technical Report-tr06, Erciyes University, Engineering Faculty: Kayseri, Turkey
Zurück zum Zitat Kashan AH (2009) League championship algorithm: a new algorithm for numerical function optimization. In: International Conference of Soft Computing and Pattern Recognition, 2009. SOCPAR'09. IEEE Kashan AH (2009) League championship algorithm: a new algorithm for numerical function optimization. In: International Conference of Soft Computing and Pattern Recognition, 2009. SOCPAR'09. IEEE
Zurück zum Zitat Kassim N et al (2014) Harmony search-based optimization of artificial neural network for predicting AC power from a photovoltaic system. In: 2014 IEEE 8th International Power Engineering and Optimization Conference (PEOCO). IEEE Kassim N et al (2014) Harmony search-based optimization of artificial neural network for predicting AC power from a photovoltaic system. In: 2014 IEEE 8th International Power Engineering and Optimization Conference (PEOCO). IEEE
Zurück zum Zitat Kattan A, Abdullah R (2013) Training feed-forward artificial neural networks for pattern-classification using the harmony search algorithm. In: The Second International Conference on Digital Enterprise and Information Systems (DEIS2013). 2013. The Society of Digital Information and Wireless Communication Kattan A, Abdullah R (2013) Training feed-forward artificial neural networks for pattern-classification using the harmony search algorithm. In: The Second International Conference on Digital Enterprise and Information Systems (DEIS2013). 2013. The Society of Digital Information and Wireless Communication
Zurück zum Zitat Kaveh A, Bakhshpoori T (2013) Optimum design of steel frames using Cuckoo Search algorithm with Lévy flights. Struct Design Tall Spec Build 22(13):1023–1036 Kaveh A, Bakhshpoori T (2013) Optimum design of steel frames using Cuckoo Search algorithm with Lévy flights. Struct Design Tall Spec Build 22(13):1023–1036
Zurück zum Zitat Kaveh A, Bakhshpoori T (2016) Water Evaporation Optimization: a novel physically inspired optimization algorithm. Comput Struct 167:69–85 Kaveh A, Bakhshpoori T (2016) Water Evaporation Optimization: a novel physically inspired optimization algorithm. Comput Struct 167:69–85
Zurück zum Zitat Kaveh A, Dadras A (2017) A novel meta-heuristic optimization algorithm: thermal exchange optimization. Adv Eng Softw 110:69–84 Kaveh A, Dadras A (2017) A novel meta-heuristic optimization algorithm: thermal exchange optimization. Adv Eng Softw 110:69–84
Zurück zum Zitat Kaveh M, Khishe M, Mosavi MR (2019) Design and implementation of a neighborhood search biogeography-based optimization trainer for classifying sonar dataset using multi-layer perceptron neural network. Analog Integr Circuits Signal Process 100(2):405–428 Kaveh M, Khishe M, Mosavi MR (2019) Design and implementation of a neighborhood search biogeography-based optimization trainer for classifying sonar dataset using multi-layer perceptron neural network. Analog Integr Circuits Signal Process 100(2):405–428
Zurück zum Zitat Kaveh A, Mahdavi VRJC (2014) Colliding bodies optimization: a novel meta-heuristic method. Comput Struct 139:18–27 Kaveh A, Mahdavi VRJC (2014) Colliding bodies optimization: a novel meta-heuristic method. Comput Struct 139:18–27
Zurück zum Zitat Kayarvizhy N, Kanmani S, Uthariaraj RV (2014) ANN models optimized using swarm intelligence algorithms. WSEAS Trans Comput 13:501–519 Kayarvizhy N, Kanmani S, Uthariaraj RV (2014) ANN models optimized using swarm intelligence algorithms. WSEAS Trans Comput 13:501–519
Zurück zum Zitat Kennedy J, Eberhart R (1995) Particle swarm optimization. In IEEE International Conference on Neural Networks, 1995. Proceedings Kennedy J, Eberhart R (1995) Particle swarm optimization. In IEEE International Conference on Neural Networks, 1995. Proceedings
Zurück zum Zitat Khajeh M, Golzary AR (2014) Synthesis of zinc oxide nanoparticles–chitosan for extraction of methyl orange from water samples: cuckoo optimization algorithm–artificial neural network. Spectrochim Acta Part A Mol Biomol Spectrosc 131:189–194 Khajeh M, Golzary AR (2014) Synthesis of zinc oxide nanoparticles–chitosan for extraction of methyl orange from water samples: cuckoo optimization algorithm–artificial neural network. Spectrochim Acta Part A Mol Biomol Spectrosc 131:189–194
Zurück zum Zitat Khajeh M, Hezaryan S (2013) Combination of ACO-artificial neural network method for modeling of manganese and cobalt extraction onto nanometer SiO2 from water samples. J Ind Eng Chem 19(6):2100–2107 Khajeh M, Hezaryan S (2013) Combination of ACO-artificial neural network method for modeling of manganese and cobalt extraction onto nanometer SiO2 from water samples. J Ind Eng Chem 19(6):2100–2107
Zurück zum Zitat Khajeh M, Jahanbin E (2014) Application of cuckoo optimization algorithm–artificial neural network method of zinc oxide nanoparticles–chitosan for extraction of uranium from water samples. Chemom Intell Lab Syst 135:70–75 Khajeh M, Jahanbin E (2014) Application of cuckoo optimization algorithm–artificial neural network method of zinc oxide nanoparticles–chitosan for extraction of uranium from water samples. Chemom Intell Lab Syst 135:70–75
Zurück zum Zitat Khajehzadeh M et al (2011) A survey on meta-heuristic global optimization algorithms. Res J Appl Sci Eng Technol 3(6):569–578 Khajehzadeh M et al (2011) A survey on meta-heuristic global optimization algorithms. Res J Appl Sci Eng Technol 3(6):569–578
Zurück zum Zitat Khalilpourazari S, Khalilpourazary S (2018) Optimization of production time in the multi-pass milling process via a Robust Grey Wolf Optimizer. Neural Comput Appl 29(12):1321–1336 Khalilpourazari S, Khalilpourazary S (2018) Optimization of production time in the multi-pass milling process via a Robust Grey Wolf Optimizer. Neural Comput Appl 29(12):1321–1336
Zurück zum Zitat Khishe M, Mosavi M, Kaveh M (2017) Improved migration models of biogeography-based optimization for sonar dataset classification by using neural network. Appl Acoust 118:15–29 Khishe M, Mosavi M, Kaveh M (2017) Improved migration models of biogeography-based optimization for sonar dataset classification by using neural network. Appl Acoust 118:15–29
Zurück zum Zitat Khishe M, Mosavi M, Moridi A (2018) Chaotic fractal walk trainer for sonar data set classification using multi-layer perceptron neural network and its hardware implementation. Appl Acoust 137:121–139 Khishe M, Mosavi M, Moridi A (2018) Chaotic fractal walk trainer for sonar data set classification using multi-layer perceptron neural network and its hardware implementation. Appl Acoust 137:121–139
Zurück zum Zitat Kiranyaz S et al (2009) Evolutionary artificial neural networks by multi-dimensional particle swarm optimization. Neural Netw 22(10):1448–1462 Kiranyaz S et al (2009) Evolutionary artificial neural networks by multi-dimensional particle swarm optimization. Neural Netw 22(10):1448–1462
Zurück zum Zitat Kirkpatrick S, Gelatt CD, Vecchi MPJ (1983) Optimization by simulated annealing. Science 220(4598):671–680MathSciNetMATH Kirkpatrick S, Gelatt CD, Vecchi MPJ (1983) Optimization by simulated annealing. Science 220(4598):671–680MathSciNetMATH
Zurück zum Zitat Kirkpatrick S, Vecchi MP (1983) Optimization by simmulated annealing. Science 220(4598):671–680MathSciNetMATH Kirkpatrick S, Vecchi MP (1983) Optimization by simmulated annealing. Science 220(4598):671–680MathSciNetMATH
Zurück zum Zitat Kowalski PA, Łukasik S (2016) Training neural networks with krill herd algorithm. Neural Process Lett 44(1):5–17 Kowalski PA, Łukasik S (2016) Training neural networks with krill herd algorithm. Neural Process Lett 44(1):5–17
Zurück zum Zitat Koziel S, Yang XS (2011) Computational optimization, methods and algorithms. Springer, Berlin HeidelbergMATH Koziel S, Yang XS (2011) Computational optimization, methods and algorithms. Springer, Berlin HeidelbergMATH
Zurück zum Zitat Krishnanand KN, Ghose D (2005) Detection of multiple source locations using a glowworm metaphor with applications to collective robotics. In: Proceedings 2005 IEEE Swarm Intelligence Symposium, 2005. SIS 2005. 2005. Pasadena, CA, USA: IEEE Krishnanand KN, Ghose D (2005) Detection of multiple source locations using a glowworm metaphor with applications to collective robotics. In: Proceedings 2005 IEEE Swarm Intelligence Symposium, 2005. SIS 2005. 2005. Pasadena, CA, USA: IEEE
Zurück zum Zitat Kulkarni O, Kulkarni S (2018) Process parameter optimization in WEDM by grey wolf optimizer. Mater Today Proc 5(2 part 1):4402–4412 Kulkarni O, Kulkarni S (2018) Process parameter optimization in WEDM by grey wolf optimizer. Mater Today Proc 5(2 part 1):4402–4412
Zurück zum Zitat Kulluk S, Ozbakir L, Baykasoglu A (2012) Training neural networks with harmony search algorithms for classification problems. Eng Appl Artif Intell 25(1):11–19 Kulluk S, Ozbakir L, Baykasoglu A (2012) Training neural networks with harmony search algorithms for classification problems. Eng Appl Artif Intell 25(1):11–19
Zurück zum Zitat Kumar M, Kulkarni AJ, Satapathy SC (2018) Socio evolution and learning optimization algorithm: a socio-inspired optimization methodology. Futur Gener Comput Syst 81:252–272 Kumar M, Kulkarni AJ, Satapathy SC (2018) Socio evolution and learning optimization algorithm: a socio-inspired optimization methodology. Futur Gener Comput Syst 81:252–272
Zurück zum Zitat Kumar A, Pant S, Ram M (2019) Gray wolf optimizer approach to the reliability-cost optimization of residual heat removal system of a nuclear power plant safety system. Quality Reliab Eng Int 35(7):2228–2239 Kumar A, Pant S, Ram M (2019) Gray wolf optimizer approach to the reliability-cost optimization of residual heat removal system of a nuclear power plant safety system. Quality Reliab Eng Int 35(7):2228–2239
Zurück zum Zitat Kumar K, Thakur GSM (2012) Advanced applications of neural networks and artificial intelligence: a review. Int J Inform Technol Comput Sci (IJITCS) 4(6):57–68 Kumar K, Thakur GSM (2012) Advanced applications of neural networks and artificial intelligence: a review. Int J Inform Technol Comput Sci (IJITCS) 4(6):57–68
Zurück zum Zitat Kumar A, Chakarverty S (2011) Design optimization for reliable embedded system using Cuckoo search. In: 2011 3rd International Conference on Electronics Computer Technology (ICECT). IEEE Kumar A, Chakarverty S (2011) Design optimization for reliable embedded system using Cuckoo search. In: 2011 3rd International Conference on Electronics Computer Technology (ICECT). IEEE
Zurück zum Zitat Kumar et al (2010) Decision level biometric fusion using Ant Colony Optimization. In: 2010 17th IEEE international conference on image processing (ICIP) Kumar et al (2010) Decision level biometric fusion using Ant Colony Optimization. In: 2010 17th IEEE international conference on image processing (ICIP)
Zurück zum Zitat Lahiri A, Chakravorti S (2005) A novel approach based on simulated annealing coupled to artificial neural network for 3-D electric-field optimization. IEEE Trans Power Delivery 20(3):2144–2152 Lahiri A, Chakravorti S (2005) A novel approach based on simulated annealing coupled to artificial neural network for 3-D electric-field optimization. IEEE Trans Power Delivery 20(3):2144–2152
Zurück zum Zitat Lai DSW, Caliskan Demirag O, Leung JMY (2016) A tabu search heuristic for the heterogeneous vehicle routing problem on a multigraph. Transp Res Part E: Logis Transp Rev 86:32–52 Lai DSW, Caliskan Demirag O, Leung JMY (2016) A tabu search heuristic for the heterogeneous vehicle routing problem on a multigraph. Transp Res Part E: Logis Transp Rev 86:32–52
Zurück zum Zitat Lalithamma GA, Puttaswamy PS (2013) Literature review of applications of neural network in control systems. Int J Sci Res Publ 3(9):1–6 Lalithamma GA, Puttaswamy PS (2013) Literature review of applications of neural network in control systems. Int J Sci Res Publ 3(9):1–6
Zurück zum Zitat LeCun Y, Bengio Y, Hinton GJ (2015) Deep learning. Nature 521(7553):436–444 LeCun Y, Bengio Y, Hinton GJ (2015) Deep learning. Nature 521(7553):436–444
Zurück zum Zitat Lee KS, Geem ZW (2004) A new structural optimization method based on the harmony search algorithm. Comput Struct 82(9):781–798 Lee KS, Geem ZW (2004) A new structural optimization method based on the harmony search algorithm. Comput Struct 82(9):781–798
Zurück zum Zitat Lenin K, Ravindhranath Reddy B, Suryakalavathi M (2016) Hybrid Tabu search-simulated annealing method to solve optimal reactive power problem. Int J Electr Power Energy Syst 2016(82):87–91 Lenin K, Ravindhranath Reddy B, Suryakalavathi M (2016) Hybrid Tabu search-simulated annealing method to solve optimal reactive power problem. Int J Electr Power Energy Syst 2016(82):87–91
Zurück zum Zitat Li S et al (2007) A GA-based NN approach for makespan estimation. Appl Math Comput 185(2):1003–1014MATH Li S et al (2007) A GA-based NN approach for makespan estimation. Appl Math Comput 185(2):1003–1014MATH
Zurück zum Zitat Li Z et al (2015) PS–ABC: a hybrid algorithm based on particle swarm and artificial bee colony for high-dimensional optimization problems. Exp Syst Appl 42(22):8881–8895 Li Z et al (2015) PS–ABC: a hybrid algorithm based on particle swarm and artificial bee colony for high-dimensional optimization problems. Exp Syst Appl 42(22):8881–8895
Zurück zum Zitat Li XL, Shao ZJ, Qian JX (2002) An optimizing method based on autonomous animats: fish-swarm algorithm. Syst Eng Theory Pract 22(11):32–38 Li XL, Shao ZJ, Qian JX (2002) An optimizing method based on autonomous animats: fish-swarm algorithm. Syst Eng Theory Pract 22(11):32–38
Zurück zum Zitat Li et al (2013) Evaluation of an environment-aware sequence-based localization algorithm for building fire emergency scenarios. In: Proc of the 30th International Conference on Application of IT in the AEC Industry (CIB W78 2013) Li et al (2013) Evaluation of an environment-aware sequence-based localization algorithm for building fire emergency scenarios. In: Proc of the 30th International Conference on Application of IT in the AEC Industry (CIB W78 2013)
Zurück zum Zitat Lin S-W, Vincent FY (2015) A simulated annealing heuristic for the multiconstraint team orienteering problem with multiple time windows. Appl Soft Comput 37:632–642 Lin S-W, Vincent FY (2015) A simulated annealing heuristic for the multiconstraint team orienteering problem with multiple time windows. Appl Soft Comput 37:632–642
Zurück zum Zitat Liptak BG (2005) Instrument engineers’ handbook, fourth edition, volume two: process control and optimization. CRC Press, Boca Raton Liptak BG (2005) Instrument engineers’ handbook, fourth edition, volume two: process control and optimization. CRC Press, Boca Raton
Zurück zum Zitat Louis YHT et al (2019) Development of whale optimization neural network for daily water level forecasting. Int J Adv Trends Comput Sci Eng 8(3):354–362 Louis YHT et al (2019) Development of whale optimization neural network for daily water level forecasting. Int J Adv Trends Comput Sci Eng 8(3):354–362
Zurück zum Zitat Lu C et al (2016) An effective multi-objective discrete grey wolf optimizer for a real-world scheduling problem in welding production. Adv Eng Softw 99:161–176 Lu C et al (2016) An effective multi-objective discrete grey wolf optimizer for a real-world scheduling problem in welding production. Adv Eng Softw 99:161–176
Zurück zum Zitat Luo Q et al (2021) Using spotted hyena optimizer for training feedforward neural networks. Cogn Syst Res 65:1–16 Luo Q et al (2021) Using spotted hyena optimizer for training feedforward neural networks. Cogn Syst Res 65:1–16
Zurück zum Zitat Lutfy OF (2020) A wavelet functional link neural network controller trained by a modified sine cosine algorithm using the feedback error learning strategy. J Eng Sci Technol 15(1):709–727MathSciNet Lutfy OF (2020) A wavelet functional link neural network controller trained by a modified sine cosine algorithm using the feedback error learning strategy. J Eng Sci Technol 15(1):709–727MathSciNet
Zurück zum Zitat Lv L et al (2018) Solving vehicle routing problem through a tabu bee colony-based genetic algorithm. In: International Conference on Swarm Intelligence. Springer Lv L et al (2018) Solving vehicle routing problem through a tabu bee colony-based genetic algorithm. In: International Conference on Swarm Intelligence. Springer
Zurück zum Zitat Madić M, Marković D, Radovanović M (2013) Comparison of meta-heuristic algorithms for solving machining optimization problems. Facta Univ Ser Mech Eng 11(1):29–44 Madić M, Marković D, Radovanović M (2013) Comparison of meta-heuristic algorithms for solving machining optimization problems. Facta Univ Ser Mech Eng 11(1):29–44
Zurück zum Zitat Mahmood M, Al-Khateeb B (2019) The blue monkey: a new nature inspired metaheuristic optimization algorithm. Period Eng Nat Sci (PEN) 7(3):1054–1066 Mahmood M, Al-Khateeb B (2019) The blue monkey: a new nature inspired metaheuristic optimization algorithm. Period Eng Nat Sci (PEN) 7(3):1054–1066
Zurück zum Zitat Malinak P, Jaksa R (2007) Simultaneous gradient and evolutionary neural network weights adaptation methods. In: IEEE Congress on Evolutionary Computation, 2007. CEC 2007 Malinak P, Jaksa R (2007) Simultaneous gradient and evolutionary neural network weights adaptation methods. In: IEEE Congress on Evolutionary Computation, 2007. CEC 2007
Zurück zum Zitat Mandloi M, Bhatia V (2016) A low-complexity hybrid algorithm based on particle swarm and ant colony optimization for large-MIMO detection. Expert Syst Appl 50:66–74 Mandloi M, Bhatia V (2016) A low-complexity hybrid algorithm based on particle swarm and ant colony optimization for large-MIMO detection. Expert Syst Appl 50:66–74
Zurück zum Zitat Manoochehri M, Kolahan F (2014) Integration of artificial neural network and simulated annealing algorithm to optimize deep drawing process. Int J Adv Manuf Technol 73(1–4):241–249 Manoochehri M, Kolahan F (2014) Integration of artificial neural network and simulated annealing algorithm to optimize deep drawing process. Int J Adv Manuf Technol 73(1–4):241–249
Zurück zum Zitat McCulloch WS, Pitts W (1943) A logical calculus of the ideas immanent in nervous activity. Bull Math Biophys 5(4):115–133MathSciNetMATH McCulloch WS, Pitts W (1943) A logical calculus of the ideas immanent in nervous activity. Bull Math Biophys 5(4):115–133MathSciNetMATH
Zurück zum Zitat Meetei KT (2014) A survey: swarm intelligence vs genetic algorithm. Int J Sci Res (IJSR) 3(5):231–5 Meetei KT (2014) A survey: swarm intelligence vs genetic algorithm. Int J Sci Res (IJSR) 3(5):231–5
Zurück zum Zitat Meng A-B et al (2014) Crisscross optimization algorithm and its application. Knowl-Based Syst 67:218–229 Meng A-B et al (2014) Crisscross optimization algorithm and its application. Knowl-Based Syst 67:218–229
Zurück zum Zitat Minsky ML, Papert S (1988) Perceptrons: an introduction to computational geometry. MIT Press, CambridgeMATH Minsky ML, Papert S (1988) Perceptrons: an introduction to computational geometry. MIT Press, CambridgeMATH
Zurück zum Zitat Mirjalili S (2015) How effective is the Grey Wolf optimizer in training multi-layer perceptrons. Appl Intell 43(1):150–161 Mirjalili S (2015) How effective is the Grey Wolf optimizer in training multi-layer perceptrons. Appl Intell 43(1):150–161
Zurück zum Zitat Mirjalili S (2016a) Dragonfly algorithm: a new meta-heuristic optimization technique for solving single-objective, discrete, and multi-objective problems. Neural Comput Appl 27(4):1053–1073 Mirjalili S (2016a) Dragonfly algorithm: a new meta-heuristic optimization technique for solving single-objective, discrete, and multi-objective problems. Neural Comput Appl 27(4):1053–1073
Zurück zum Zitat Mirjalili S (2016b) SCA: a sine cosine algorithm for solving optimization problems. Knowl-Based Syst 96:120–133 Mirjalili S (2016b) SCA: a sine cosine algorithm for solving optimization problems. Knowl-Based Syst 96:120–133
Zurück zum Zitat Mirjalili S et al (2016) Multi-verse optimizer: a nature-inspired algorithm for global optimization. Neural Comput Appl 27(2):495–513 Mirjalili S et al (2016) Multi-verse optimizer: a nature-inspired algorithm for global optimization. Neural Comput Appl 27(2):495–513
Zurück zum Zitat Mirjalili S et al (2017) Salp Swarm algorithm: a bio-inspired optimizer for engineering design problems. Adv Eng Softw 114:163–191 Mirjalili S et al (2017) Salp Swarm algorithm: a bio-inspired optimizer for engineering design problems. Adv Eng Softw 114:163–191
Zurück zum Zitat Mirjalili S, Lewis A (2016) The whale optimization algorithm. Adv Eng Softw 95:51–67 Mirjalili S, Lewis A (2016) The whale optimization algorithm. Adv Eng Softw 95:51–67
Zurück zum Zitat Mirjalili S, Mirjalili SM, Lewis A (2014a) Let a biogeography-based optimizer train your multi-layer perceptron. Inf Sci 269:188–209MathSciNet Mirjalili S, Mirjalili SM, Lewis A (2014a) Let a biogeography-based optimizer train your multi-layer perceptron. Inf Sci 269:188–209MathSciNet
Zurück zum Zitat Mirjalili S, Mirjalili SM, Lewis A (2014b) Grey wolf optimizer. Adv Eng Softw 69:46–61 Mirjalili S, Mirjalili SM, Lewis A (2014b) Grey wolf optimizer. Adv Eng Softw 69:46–61
Zurück zum Zitat Mirjalili SA, Sardroudi HM, Hashim SZM (2012) Training feedforward neural networks using hybrid particle swarm optimization and gravitational search algorithm. Appl Math Comput 218(22):11125–11137MathSciNetMATH Mirjalili SA, Sardroudi HM, Hashim SZM (2012) Training feedforward neural networks using hybrid particle swarm optimization and gravitational search algorithm. Appl Math Comput 218(22):11125–11137MathSciNetMATH
Zurück zum Zitat Moghdani R, Salimifard K (2018) Volleyball premier league algorithm. Appl Soft Comput 64:161–185 Moghdani R, Salimifard K (2018) Volleyball premier league algorithm. Appl Soft Comput 64:161–185
Zurück zum Zitat Mohammadhassani J et al (2015) Prediction and reduction of diesel engine emissions using a combined ANN–ACO method. Appl Soft Comput 34:139–150 Mohammadhassani J et al (2015) Prediction and reduction of diesel engine emissions using a combined ANN–ACO method. Appl Soft Comput 34:139–150
Zurück zum Zitat Moharam A, El-Hosseini MA, Ali HA (2016) Design of optimal PID controller using hybrid differential evolution and particle swarm optimization with an aging leader and challengers. Appl Soft Comput 38:727–737 Moharam A, El-Hosseini MA, Ali HA (2016) Design of optimal PID controller using hybrid differential evolution and particle swarm optimization with an aging leader and challengers. Appl Soft Comput 38:727–737
Zurück zum Zitat Moravej Z, Akhlaghi A (2013) A novel approach based on cuckoo search for DG allocation in distribution network. Int J Electr Power Energy Syst 44(1):672–679 Moravej Z, Akhlaghi A (2013) A novel approach based on cuckoo search for DG allocation in distribution network. Int J Electr Power Energy Syst 44(1):672–679
Zurück zum Zitat Mosavi M et al (2016) Classification of sonar target using hybrid particle swarm and gravitational search. Mar Technol 3(1):1–13 Mosavi M et al (2016) Classification of sonar target using hybrid particle swarm and gravitational search. Mar Technol 3(1):1–13
Zurück zum Zitat Mosavi M et al (2017) Training radial basis function neural network using stochastic fractal search algorithm to classify sonar dataset. Iran J Electr Electron Eng 13(1):100–111 Mosavi M et al (2017) Training radial basis function neural network using stochastic fractal search algorithm to classify sonar dataset. Iran J Electr Electron Eng 13(1):100–111
Zurück zum Zitat Mosavi MR, Khishe M, Akbarisani M (2017) Neural network trained by biogeography-based optimizer with chaos for sonar data set classification. Wireless Pers Commun 95(4):4623–4642 Mosavi MR, Khishe M, Akbarisani M (2017) Neural network trained by biogeography-based optimizer with chaos for sonar data set classification. Wireless Pers Commun 95(4):4623–4642
Zurück zum Zitat Mosavi M, Khishe M, Ghamgosar A (2016) Classification of sonar data set using neural network trained by Gray Wolf Optimization. Neural Network World 26(4):393 Mosavi M, Khishe M, Ghamgosar A (2016) Classification of sonar data set using neural network trained by Gray Wolf Optimization. Neural Network World 26(4):393
Zurück zum Zitat Mosbah H, El-Hawary M (2017) Optimization of neural network parameters by stochastic fractal search for dynamic state estimation under communication failure. Electr Power Syst Res 147:288–301 Mosbah H, El-Hawary M (2017) Optimization of neural network parameters by stochastic fractal search for dynamic state estimation under communication failure. Electr Power Syst Res 147:288–301
Zurück zum Zitat Moscato PJC (1989) On evolution, search, optimization, genetic algorithms and martial arts: towards memetic algorithms. C3P Report 826:1989 Moscato PJC (1989) On evolution, search, optimization, genetic algorithms and martial arts: towards memetic algorithms. C3P Report 826:1989
Zurück zum Zitat Mostafaeipour A, Goli A, Qolipour M (2018) Prediction of air travel demand using a hybrid artificial neural network (ANN) with Bat and Firefly algorithms: a case study. J Supercomput 74(10):5461–5484 Mostafaeipour A, Goli A, Qolipour M (2018) Prediction of air travel demand using a hybrid artificial neural network (ANN) with Bat and Firefly algorithms: a case study. J Supercomput 74(10):5461–5484
Zurück zum Zitat Mousavirad SJ, Ebrahimpour-Komleh H (2017) Human mental search: a new population-based metaheuristic optimization algorithm. Appl Intell 47(3):850–887 Mousavirad SJ, Ebrahimpour-Komleh H (2017) Human mental search: a new population-based metaheuristic optimization algorithm. Appl Intell 47(3):850–887
Zurück zum Zitat Muangkote N, Sunat K, Chiewchanwattana S (2014) An improved grey wolf optimizer for training q-Gaussian Radial Basis Functional-link nets. In: 2014 international computer science and engineering conference (ICSEC). IEEE Muangkote N, Sunat K, Chiewchanwattana S (2014) An improved grey wolf optimizer for training q-Gaussian Radial Basis Functional-link nets. In: 2014 international computer science and engineering conference (ICSEC). IEEE
Zurück zum Zitat Mucherino A, Seref O (2007) Monkey search: a novel metaheuristic search for global optimization. In: AIP conference proceedings, American Institute of Physics Mucherino A, Seref O (2007) Monkey search: a novel metaheuristic search for global optimization. In: AIP conference proceedings, American Institute of Physics
Zurück zum Zitat Murat YS, Ceylan H (2006) Use of artificial neural networks for transport energy demand modeling. Energy Policy 34(17):3165–3172 Murat YS, Ceylan H (2006) Use of artificial neural networks for transport energy demand modeling. Energy Policy 34(17):3165–3172
Zurück zum Zitat Muro C et al (2011) Wolf-pack (Canis lupus) hunting strategies emerge from simple rules in computational simulations. Behav Proc 88(3):192–197 Muro C et al (2011) Wolf-pack (Canis lupus) hunting strategies emerge from simple rules in computational simulations. Behav Proc 88(3):192–197
Zurück zum Zitat Murugan R et al (2018) Hybridizing bat algorithm with artificial bee colony for combined heat and power economic dispatch. Appl Soft Comput 72:189–217 Murugan R et al (2018) Hybridizing bat algorithm with artificial bee colony for combined heat and power economic dispatch. Appl Soft Comput 72:189–217
Zurück zum Zitat Nakrani S, Tovey C (2004) On honey bees and dynamic server allocation in internet hosting centers. Adapt Behav 12(3–4):223–240 Nakrani S, Tovey C (2004) On honey bees and dynamic server allocation in internet hosting centers. Adapt Behav 12(3–4):223–240
Zurück zum Zitat Nassif AB et al (2019) Speech recognition using deep neural networks: A systematic review. IEEE Access 7:19143–19165 Nassif AB et al (2019) Speech recognition using deep neural networks: A systematic review. IEEE Access 7:19143–19165
Zurück zum Zitat Nawi NM, Khan A, Rehman M (2013) A new Levenberg Marquardt based back propagation algorithm trained with cuckoo search. Proc Technol 11:18–23 Nawi NM, Khan A, Rehman M (2013) A new Levenberg Marquardt based back propagation algorithm trained with cuckoo search. Proc Technol 11:18–23
Zurück zum Zitat Nawi NM, Rehman M (2014) CSBPRNN: a new hybridization technique using cuckoo search to train back propagation recurrent neural network. In: Proceedings of the First International Conference on Advanced Data and Information Engineering (DaEng-2013). Springer Nawi NM, Rehman M (2014) CSBPRNN: a new hybridization technique using cuckoo search to train back propagation recurrent neural network. In: Proceedings of the First International Conference on Advanced Data and Information Engineering (DaEng-2013). Springer
Zurück zum Zitat Nur AS, Radzi NHM, Ibrahim AO (2014) Artificial neural network weight optimization: a review. TELKOMNIKA Indonesian J Electr Eng 12(9):6897–6902 Nur AS, Radzi NHM, Ibrahim AO (2014) Artificial neural network weight optimization: a review. TELKOMNIKA Indonesian J Electr Eng 12(9):6897–6902
Zurück zum Zitat Nur AS, Radzi NHM, Shamsuddin SM (2015) Near optimal convergence of back-propagation method using harmony search algorithm. TELKOMNIKA Indonesian J Electr Eng 14(1):163–172 Nur AS, Radzi NHM, Shamsuddin SM (2015) Near optimal convergence of back-propagation method using harmony search algorithm. TELKOMNIKA Indonesian J Electr Eng 14(1):163–172
Zurück zum Zitat Ojha VK, Abraham A, Snášel V (2017) Metaheuristic design of feedforward neural networks: a review of two decades of research. Eng Appl Artif Intell 60:97–116 Ojha VK, Abraham A, Snášel V (2017) Metaheuristic design of feedforward neural networks: a review of two decades of research. Eng Appl Artif Intell 60:97–116
Zurück zum Zitat Ojugo A et al (2013) A hybrid artificial neural network gravitational search algorithm for rainfall runoffs modeling and simulation in hydrology. Progress Intell Comput Appl 2:22–33 Ojugo A et al (2013) A hybrid artificial neural network gravitational search algorithm for rainfall runoffs modeling and simulation in hydrology. Progress Intell Comput Appl 2:22–33
Zurück zum Zitat Osman IH, Laporte G (1996) Metaheuristics: A bibliography. Ann Oper Res 63(5):511–623MATH Osman IH, Laporte G (1996) Metaheuristics: A bibliography. Ann Oper Res 63(5):511–623MATH
Zurück zum Zitat Ouyang H-B et al (2016) Hybrid harmony search particle swarm optimization with global dimension selection. Inf Sci 346–347:318–337 Ouyang H-B et al (2016) Hybrid harmony search particle swarm optimization with global dimension selection. Inf Sci 346–347:318–337
Zurück zum Zitat Özkaraca O (2018) A comparative evaluation of Gravitational Search Algorithm (GSA) against Artificial Bee Colony (ABC) for thermodynamic performance of a geothermal power plant. Energy 165:1061–1077 Özkaraca O (2018) A comparative evaluation of Gravitational Search Algorithm (GSA) against Artificial Bee Colony (ABC) for thermodynamic performance of a geothermal power plant. Energy 165:1061–1077
Zurück zum Zitat Panchal A (2009) Harmony search in therapeutic medical physics. Music-inspired Harmony search algorithm. Springer, pp 189–203 Panchal A (2009) Harmony search in therapeutic medical physics. Music-inspired Harmony search algorithm. Springer, pp 189–203
Zurück zum Zitat Panda M, Priyadarshini R, Pradhan S (2016) Autonomous mobile robot path planning using hybridization of particle swarm optimization and Tabu search. In: 2016 IEEE International Conference on Computational Intelligence and Computing Research (ICCIC). IEEE Panda M, Priyadarshini R, Pradhan S (2016) Autonomous mobile robot path planning using hybridization of particle swarm optimization and Tabu search. In: 2016 IEEE International Conference on Computational Intelligence and Computing Research (ICCIC). IEEE
Zurück zum Zitat Parsopoulos KE (2010) Particle swarm optimization and intelligence: advances and applications. IGI Global, Pennsylvania Parsopoulos KE (2010) Particle swarm optimization and intelligence: advances and applications. IGI Global, Pennsylvania
Zurück zum Zitat Passino KM (2002) Biomimicry of bacterial foraging for distributed optimization and control. IEEE Control Syst Mag 22(3):52–67 Passino KM (2002) Biomimicry of bacterial foraging for distributed optimization and control. IEEE Control Syst Mag 22(3):52–67
Zurück zum Zitat Pawar PJ, Vidhate US, Khalkar MY (2018) Improving the quality characteristics of abrasive water jet machining of marble material using multi-objective artificial bee colony algorithm. J Comput Design Eng 5(3):319–328 Pawar PJ, Vidhate US, Khalkar MY (2018) Improving the quality characteristics of abrasive water jet machining of marble material using multi-objective artificial bee colony algorithm. J Comput Design Eng 5(3):319–328
Zurück zum Zitat Payne RB, Sorenson MD, Klitz K (2005) The Cuckoos. Oxford University Press, UK Payne RB, Sorenson MD, Klitz K (2005) The Cuckoos. Oxford University Press, UK
Zurück zum Zitat Pisinger D, Ropke S (2007) A general heuristic for vehicle routing problems. Comput Oper Res 34(8):2403–2435MathSciNetMATH Pisinger D, Ropke S (2007) A general heuristic for vehicle routing problems. Comput Oper Res 34(8):2403–2435MathSciNetMATH
Zurück zum Zitat Poli R, Kennedy J, Blackwell T (2007) Particle swarm optimization. Swarm Intell 1(1):33–57 Poli R, Kennedy J, Blackwell T (2007) Particle swarm optimization. Swarm Intell 1(1):33–57
Zurück zum Zitat Punnathanam V, Kotecha P (2016) Yin-Yang-pair optimization: a novel lightweight optimization algorithm. Eng Appl Artif Intell 54:62–79 Punnathanam V, Kotecha P (2016) Yin-Yang-pair optimization: a novel lightweight optimization algorithm. Eng Appl Artif Intell 54:62–79
Zurück zum Zitat Rabanal P, Rodríguez I, Rubio F (2007) Using river formation dynamics to design heuristic algorithms. In: International conference on unconventional computation. Springer, Berlin Rabanal P, Rodríguez I, Rubio F (2007) Using river formation dynamics to design heuristic algorithms. In: International conference on unconventional computation. Springer, Berlin
Zurück zum Zitat Rao RV, Savsani VJ, Vakharia DP (2011) Teaching–learning-based optimization: a novel method for constrained mechanical design optimization problems. Comput Aided Des 43(3):303–315 Rao RV, Savsani VJ, Vakharia DP (2011) Teaching–learning-based optimization: a novel method for constrained mechanical design optimization problems. Comput Aided Des 43(3):303–315
Zurück zum Zitat Rashedi E, Nezamabadi-pour H, Saryazdi S (2009) GSA: a gravitational search algorithm. Inf Sci 179(13):2232–2248MATH Rashedi E, Nezamabadi-pour H, Saryazdi S (2009) GSA: a gravitational search algorithm. Inf Sci 179(13):2232–2248MATH
Zurück zum Zitat Ravakhah S et al (2017) Sonar false alarm rate suppression using classification methods based on interior search algorithm. Int J Comput Sci Netw Secur 17(7):58–65 Ravakhah S et al (2017) Sonar false alarm rate suppression using classification methods based on interior search algorithm. Int J Comput Sci Netw Secur 17(7):58–65
Zurück zum Zitat Rawat W, Wang Z (2017) Deep convolutional neural networks for image classification: a comprehensive review. Neural Comput 29(9):2352–2449MathSciNetMATH Rawat W, Wang Z (2017) Deep convolutional neural networks for image classification: a comprehensive review. Neural Comput 29(9):2352–2449MathSciNetMATH
Zurück zum Zitat Razmjooy N, Ramezani M, Namadchian A (2016) A New LQR optimal control for a single-link flexible joint robot manipulator based on grey wolf optimizer. Majlesi J Electr Eng 10(3):53 Razmjooy N, Ramezani M, Namadchian A (2016) A New LQR optimal control for a single-link flexible joint robot manipulator based on grey wolf optimizer. Majlesi J Electr Eng 10(3):53
Zurück zum Zitat Rere LR, Fanany MI, Arymurthy AM (2015) Simulated annealing algorithm for deep learning. Proc Comput Sci 72:137–144 Rere LR, Fanany MI, Arymurthy AM (2015) Simulated annealing algorithm for deep learning. Proc Comput Sci 72:137–144
Zurück zum Zitat Rere LMR, Fanany MI, Arymurthy AM (2016) Metaheuristic algorithms for convolution neural network. Comput Intell Neurosci 2016:1537325 Rere LMR, Fanany MI, Arymurthy AM (2016) Metaheuristic algorithms for convolution neural network. Comput Intell Neurosci 2016:1537325
Zurück zum Zitat Reynolds CW (1987) Flocks, herds and schools: a distributed behavioral model. SIGGRAPH Comput Graph 21(4):25–34 Reynolds CW (1987) Flocks, herds and schools: a distributed behavioral model. SIGGRAPH Comput Graph 21(4):25–34
Zurück zum Zitat Rodan A, Faris H (2016) Optimizing feedforward neural networks using biogeography based optimization for e-mail spam identification. Int J Commun Netw Syst Sci 9(1):19–28 Rodan A, Faris H (2016) Optimizing feedforward neural networks using biogeography based optimization for e-mail spam identification. Int J Commun Netw Syst Sci 9(1):19–28
Zurück zum Zitat Rubinstein RY (1997) Optimization of computer simulation models with rare events. Eur J Oper Res 99(1):89–112MATH Rubinstein RY (1997) Optimization of computer simulation models with rare events. Eur J Oper Res 99(1):89–112MATH
Zurück zum Zitat Saba S, Ahsan F, Mohsin S (2017) BAT-ANN based earthquake prediction for Pakistan region. Soft Comput 21(19):5805–5813 Saba S, Ahsan F, Mohsin S (2017) BAT-ANN based earthquake prediction for Pakistan region. Soft Comput 21(19):5805–5813
Zurück zum Zitat Sadati N, Amraee T, Ranjbar AM (2009) A global particle swarm-based-simulated annealing optimization technique for under-voltage load shedding problem. Appl Soft Comput 9(2):652–657 Sadati N, Amraee T, Ranjbar AM (2009) A global particle swarm-based-simulated annealing optimization technique for under-voltage load shedding problem. Appl Soft Comput 9(2):652–657
Zurück zum Zitat Said GA, Mahmoud AM, El-Horbaty ES (2014) A comparative study of meta-heuristic algorithms for solving quadratic assignment problem. arXiv preprint arXiv:1407.4863 Said GA, Mahmoud AM, El-Horbaty ES (2014) A comparative study of meta-heuristic algorithms for solving quadratic assignment problem. arXiv preprint arXiv:1407.4863
Zurück zum Zitat Sait SM, Oughali FC, Al-Asli M (2016) Design partitioning and layer assignment for 3D integrated circuits using tabu search and simulated annealing. J Appl Res Technol 14(1):67–76 Sait SM, Oughali FC, Al-Asli M (2016) Design partitioning and layer assignment for 3D integrated circuits using tabu search and simulated annealing. J Appl Res Technol 14(1):67–76
Zurück zum Zitat Salimi H (2015) Stochastic fractal search: a powerful metaheuristic algorithm. Knowl-Based Syst 75:1–18 Salimi H (2015) Stochastic fractal search: a powerful metaheuristic algorithm. Knowl-Based Syst 75:1–18
Zurück zum Zitat Salmani MH, Eshghi K (2017) A smart structural algorithm SSA based on infeasible region to solve mixed integer problems. Int J Appl Metaheuristic Comput (IJAMC) 8(1):24–44 Salmani MH, Eshghi K (2017) A smart structural algorithm SSA based on infeasible region to solve mixed integer problems. Int J Appl Metaheuristic Comput (IJAMC) 8(1):24–44
Zurück zum Zitat Sangwan KS, Saxena S, Kant G (2015) Optimization of machining parameters to minimize surface roughness using integrated ANN-GA approach. Procedia CIRP 29:305–310 Sangwan KS, Saxena S, Kant G (2015) Optimization of machining parameters to minimize surface roughness using integrated ANN-GA approach. Procedia CIRP 29:305–310
Zurück zum Zitat Santhosh M, Venkaiah C, Kumar DV (2020) A hybrid forecasting model based on artificial neural network and teaching learning based optimization algorithm for day-ahead wind speed prediction. Intelligent Computing Techniques for Smart Energy Systems. Springer, pp 455–463 Santhosh M, Venkaiah C, Kumar DV (2020) A hybrid forecasting model based on artificial neural network and teaching learning based optimization algorithm for day-ahead wind speed prediction. Intelligent Computing Techniques for Smart Energy Systems. Springer, pp 455–463
Zurück zum Zitat Saremi S, Mirjalili S, Lewis A (2017) Grasshopper optimisation algorithm: theory and application. Adv Eng Softw 105:30–47 Saremi S, Mirjalili S, Lewis A (2017) Grasshopper optimisation algorithm: theory and application. Adv Eng Softw 105:30–47
Zurück zum Zitat Sayadi M, Ramezanian R, Ghaffari-Nasab N (2010) A discrete firefly meta-heuristic with local search for makespan minimization in permutation flow shop scheduling problems. Int J Ind Eng Comput 1(1):1–10 Sayadi M, Ramezanian R, Ghaffari-Nasab N (2010) A discrete firefly meta-heuristic with local search for makespan minimization in permutation flow shop scheduling problems. Int J Ind Eng Comput 1(1):1–10
Zurück zum Zitat Schutz B (2003) Gravity from the ground up: an introductory guide to gravity and general relativity. Cambridge University Press, Cambridge Schutz B (2003) Gravity from the ground up: an introductory guide to gravity and general relativity. Cambridge University Press, Cambridge
Zurück zum Zitat Sentinella MR (2007) Comparison and integrated use of differential evolution and genetic algorithms for space trajectory optimisation. In: IEEE Congress on Evolutionary Computation, 2007. CEC 2007. IEEE Sentinella MR (2007) Comparison and integrated use of differential evolution and genetic algorithms for space trajectory optimisation. In: IEEE Congress on Evolutionary Computation, 2007. CEC 2007. IEEE
Zurück zum Zitat Serani A, Diez M (2017) Dolphin pod optimization. In: International workshop on machine learning, optimization, and big data. Springer, Cham Serani A, Diez M (2017) Dolphin pod optimization. In: International workshop on machine learning, optimization, and big data. Springer, Cham
Zurück zum Zitat Sexton RS et al (1998) Global optimization for artificial neural networks: a tabu search application. Eur J Oper Res 106(2–3):570–584MATH Sexton RS et al (1998) Global optimization for artificial neural networks: a tabu search application. Eur J Oper Res 106(2–3):570–584MATH
Zurück zum Zitat Shadravan S, Naji HR, Bardsiri VK (2019) The sailfish optimizer: a novel nature-inspired metaheuristic algorithm for solving constrained engineering optimization problems. Eng Appl Artif Intell 80:20–34 Shadravan S, Naji HR, Bardsiri VK (2019) The sailfish optimizer: a novel nature-inspired metaheuristic algorithm for solving constrained engineering optimization problems. Eng Appl Artif Intell 80:20–34
Zurück zum Zitat Shah-Hosseini H (2011) Principal components analysis by the galaxy-based search algorithm: a novel metaheuristic for continuous optimisation. Int J Comput Sci Eng 6(1/2):132–140 Shah-Hosseini H (2011) Principal components analysis by the galaxy-based search algorithm: a novel metaheuristic for continuous optimisation. Int J Comput Sci Eng 6(1/2):132–140
Zurück zum Zitat Sharma N, Sharma H, Sharma A (2018) Beer froth artificial bee colony algorithm for job-shop scheduling problem. Appl Soft Comput 68:507–524 Sharma N, Sharma H, Sharma A (2018) Beer froth artificial bee colony algorithm for job-shop scheduling problem. Appl Soft Comput 68:507–524
Zurück zum Zitat Shen Q, Shi W-M, Kong W (2008) Hybrid particle swarm optimization and tabu search approach for selecting genes for tumor classification using gene expression data. Comput Biol Chem 32(1):53–60MATH Shen Q, Shi W-M, Kong W (2008) Hybrid particle swarm optimization and tabu search approach for selecting genes for tumor classification using gene expression data. Comput Biol Chem 32(1):53–60MATH
Zurück zum Zitat Simon D (2008) Biogeography-based optimization. IEEE Trans Evol Comput 12(6):702–713 Simon D (2008) Biogeography-based optimization. IEEE Trans Evol Comput 12(6):702–713
Zurück zum Zitat Simon D (2013) Evolutionary optimization algorithms. Wiley, New York Simon D (2013) Evolutionary optimization algorithms. Wiley, New York
Zurück zum Zitat Smith SF (1980) A learning system based on genetic adaptive algorithms. University of Pittsburgh, Pittsburgh Smith SF (1980) A learning system based on genetic adaptive algorithms. University of Pittsburgh, Pittsburgh
Zurück zum Zitat Socha K, Blum C (2007) An ant colony optimization algorithm for continuous optimization: application to feed-forward neural network training. Neural Comput Appl 16(3):235–247 Socha K, Blum C (2007) An ant colony optimization algorithm for continuous optimization: application to feed-forward neural network training. Neural Comput Appl 16(3):235–247
Zurück zum Zitat Soleimani H, Kannan G (2015) A hybrid particle swarm optimization and genetic algorithm for closed-loop supply chain network design in large-scale networks. Appl Math Model 39(14):3990–4012MathSciNetMATH Soleimani H, Kannan G (2015) A hybrid particle swarm optimization and genetic algorithm for closed-loop supply chain network design in large-scale networks. Appl Math Model 39(14):3990–4012MathSciNetMATH
Zurück zum Zitat Soltani HMAZ, Haghighat AT, Chegini T (2011) A couple of algorithms for k-coverage problem in visual sensor networks. In: International Conference on Communication Engineering and Networks Soltani HMAZ, Haghighat AT, Chegini T (2011) A couple of algorithms for k-coverage problem in visual sensor networks. In: International Conference on Communication Engineering and Networks
Zurück zum Zitat Spears WM (2000) Evolutionary algorithms: the role of mutation and recombination. Springer, Berlin HeidelbergMATH Spears WM (2000) Evolutionary algorithms: the role of mutation and recombination. Springer, Berlin HeidelbergMATH
Zurück zum Zitat Sreeraj P, Kannan T, Maji S (2013) Simulated annealing algorithm for optimization of welding variables for percentage of dilution and application of ANN for prediction of weld bead geometry in GMAW process. Int J Eng Res Appl (IJERA). 3(1):1360–1373 Sreeraj P, Kannan T, Maji S (2013) Simulated annealing algorithm for optimization of welding variables for percentage of dilution and application of ANN for prediction of weld bead geometry in GMAW process. Int J Eng Res Appl (IJERA). 3(1):1360–1373
Zurück zum Zitat Storn R, Price K (1997) Differential evolution–a simple and efficient heuristic for global optimization over continuous spaces. J Global Optim 11(4):341–359MathSciNetMATH Storn R, Price K (1997) Differential evolution–a simple and efficient heuristic for global optimization over continuous spaces. J Global Optim 11(4):341–359MathSciNetMATH
Zurück zum Zitat Sudha L et al (2016) Optimization of process parameters in feed manufacturing using artificial neural network. Comput Electron Agric 120:1–6 Sudha L et al (2016) Optimization of process parameters in feed manufacturing using artificial neural network. Comput Electron Agric 120:1–6
Zurück zum Zitat Sulaiman SI et al (2014) Cuckoo search for determining Artificial Neural Network training parameters in modeling operating photovoltaic module temperature. In: Proceedings of 2014 International Conference on Modelling, Identification & Control Sulaiman SI et al (2014) Cuckoo search for determining Artificial Neural Network training parameters in modeling operating photovoltaic module temperature. In: Proceedings of 2014 International Conference on Modelling, Identification & Control
Zurück zum Zitat Sulaiman SI et al (2015) Optimization of an Artificial Neural Network using Firefly Algorithm for modeling AC power from a photovoltaic system. In: SAI Intelligent Systems Conference (IntelliSys), 2015. IEEE Sulaiman SI et al (2015) Optimization of an Artificial Neural Network using Firefly Algorithm for modeling AC power from a photovoltaic system. In: SAI Intelligent Systems Conference (IntelliSys), 2015. IEEE
Zurück zum Zitat Taillard ÉD, Voss S (2002) POPMUSIC—Partial optimization metaheuristic under special intensification conditions. Essays and surveys in metaheuristics. Springer, pp 613–629 Taillard ÉD, Voss S (2002) POPMUSIC—Partial optimization metaheuristic under special intensification conditions. Essays and surveys in metaheuristics. Springer, pp 613–629
Zurück zum Zitat Talbi E-G (2009) Metaheuristics: from design to implementation, vol 74. Wiley, NewYorkMATH Talbi E-G (2009) Metaheuristics: from design to implementation, vol 74. Wiley, NewYorkMATH
Zurück zum Zitat Tamura K, Yasuda K (2011) Primary study of spiral dynamics inspired optimization. IEEJ Trans Electr Electron Eng 6(S1):S98–S100 Tamura K, Yasuda K (2011) Primary study of spiral dynamics inspired optimization. IEEJ Trans Electr Electron Eng 6(S1):S98–S100
Zurück zum Zitat Tan Y, Zhu Y (2010) Fireworks algorithm for optimization. In: International conference in swarm intelligence. Springer Tan Y, Zhu Y (2010) Fireworks algorithm for optimization. In: International conference in swarm intelligence. Springer
Zurück zum Zitat Tayarani-N MH, Akbarzadeh-T MR (2008) Magnetic optimization algorithms a new synthesis. In: 2008 IEEE Congress on Evolutionary Computation (IEEE World Congress on Computational Intelligence). IEEE Tayarani-N MH, Akbarzadeh-T MR (2008) Magnetic optimization algorithms a new synthesis. In: 2008 IEEE Congress on Evolutionary Computation (IEEE World Congress on Computational Intelligence). IEEE
Zurück zum Zitat Tilahun SJP (2013) Prey predator algorithm: a new metaheuristic optimization approach. Universiti Sains Malaysia, Penang, Malaysia Tilahun SJP (2013) Prey predator algorithm: a new metaheuristic optimization approach. Universiti Sains Malaysia, Penang, Malaysia
Zurück zum Zitat Ülker ED, Haydar A (2012) Comparison of the performances of differential evolution, particle swarm optimization and harmony search algorithms on benchmark functions. Acad Res Int 3(2):85–92 Ülker ED, Haydar A (2012) Comparison of the performances of differential evolution, particle swarm optimization and harmony search algorithms on benchmark functions. Acad Res Int 3(2):85–92
Zurück zum Zitat Utamima A et al (2015) Distribution route optimization of gallon water using genetic algorithm and tabu search. Proc Comput Sci 72:503–510 Utamima A et al (2015) Distribution route optimization of gallon water using genetic algorithm and tabu search. Proc Comput Sci 72:503–510
Zurück zum Zitat Uzlu E et al (2014) Estimates of hydroelectric generation using neural networks with the artificial bee colony algorithm for Turkey. Energy 69:638–647 Uzlu E et al (2014) Estimates of hydroelectric generation using neural networks with the artificial bee colony algorithm for Turkey. Energy 69:638–647
Zurück zum Zitat Verma SK, Yadav S, Nagar SK (2017) Optimization of fractional order PID controller using grey wolf optimizer. J Control Autom Electr Syst 28(3):314–322 Verma SK, Yadav S, Nagar SK (2017) Optimization of fractional order PID controller using grey wolf optimizer. J Control Autom Electr Syst 28(3):314–322
Zurück zum Zitat Vincent FY, Lin S-Y (2015) A simulated annealing heuristic for the open location-routing problem. Comput Oper Res 62:184–196MathSciNetMATH Vincent FY, Lin S-Y (2015) A simulated annealing heuristic for the open location-routing problem. Comput Oper Res 62:184–196MathSciNetMATH
Zurück zum Zitat Voulodimos A et al (2018) Recent developments in deep learning for engineering applications. Comput Intell Neurosci 2018:8141259 Voulodimos A et al (2018) Recent developments in deep learning for engineering applications. Comput Intell Neurosci 2018:8141259
Zurück zum Zitat Walton S et al (2013) A review of the development and applications of the Cuckoo search algorithm. Swarm intelligence and bio-inspired computation theory and applications. Elsevier, New York, pp 257–271 Walton S et al (2013) A review of the development and applications of the Cuckoo search algorithm. Swarm intelligence and bio-inspired computation theory and applications. Elsevier, New York, pp 257–271
Zurück zum Zitat Wang JC, Chen TY (2015) A simulated annealing-based permutation method and experimental analysis for multiple criteria decision analysis with interval type-2 fuzzy sets. Appl Soft Comput 36:57–69 Wang JC, Chen TY (2015) A simulated annealing-based permutation method and experimental analysis for multiple criteria decision analysis with interval type-2 fuzzy sets. Appl Soft Comput 36:57–69
Zurück zum Zitat Wang J-S, Li S-X (2019) An improved grey wolf optimizer based on differential evolution and elimination mechanism. Sci Rep 9(1):7181 Wang J-S, Li S-X (2019) An improved grey wolf optimizer based on differential evolution and elimination mechanism. Sci Rep 9(1):7181
Zurück zum Zitat Wang X, Tang L (2016) An adaptive multi-population differential evolution algorithm for continuous multi-objective optimization. Inf Sci 348:124–141 Wang X, Tang L (2016) An adaptive multi-population differential evolution algorithm for continuous multi-objective optimization. Inf Sci 348:124–141
Zurück zum Zitat Wang G, Deb S, Coelho LDS (2015) Elephant herding optimization. In: 2015 3rd International Symposium on Computational and Business Intelligence (ISCBI) Wang G, Deb S, Coelho LDS (2015) Elephant herding optimization. In: 2015 3rd International Symposium on Computational and Business Intelligence (ISCBI)
Zurück zum Zitat Wasukar AR (2014) Artificial neural network—an important asset for future computing. Int J Res Emerg Sci Technol 1(1):28–34 Wasukar AR (2014) Artificial neural network—an important asset for future computing. Int J Res Emerg Sci Technol 1(1):28–34
Zurück zum Zitat Whitley D (2001) An overview of evolutionary algorithms: practical issues and common pitfalls. Inf Softw Technol 43(14):817–831 Whitley D (2001) An overview of evolutionary algorithms: practical issues and common pitfalls. Inf Softw Technol 43(14):817–831
Zurück zum Zitat Wilbert S, Philip P (2012) Artificial neural networks—a review of applications of neural networks in the modeling of HIV epidemic. Int J Comput Appl 44(16):1–19 Wilbert S, Philip P (2012) Artificial neural networks—a review of applications of neural networks in the modeling of HIV epidemic. Int J Comput Appl 44(16):1–19
Zurück zum Zitat Wu H et al (2016) Training feedforward neural networks using symbiotic organisms search algorithm. Comput Intell Neurosci 2016:9063065 Wu H et al (2016) Training feedforward neural networks using symbiotic organisms search algorithm. Comput Intell Neurosci 2016:9063065
Zurück zum Zitat Wu J, Wei C (2015) Training artificial neural network using hybrid optimization algorithm for rainfall-runoff forecasting. In: Huang D-S, Bevilacqua V, Premaratne P (eds) Intelligent computing theories and methodologies: 11th international conference, ICIC 2015, Fuzhou, China, August 20–23, 2015, Proceedings, Part I. Springer International Publishing, Cham, pp 576–586 Wu J, Wei C (2015) Training artificial neural network using hybrid optimization algorithm for rainfall-runoff forecasting. In: Huang D-S, Bevilacqua V, Premaratne P (eds) Intelligent computing theories and methodologies: 11th international conference, ICIC 2015, Fuzhou, China, August 20–23, 2015, Proceedings, Part I. Springer International Publishing, Cham, pp 576–586
Zurück zum Zitat Xhafa F et al (2015) Solving mesh router nodes placement problem in wireless mesh networks by tabu search algorithm. J Comput Syst Sci 81(8):1417–1428MathSciNetMATH Xhafa F et al (2015) Solving mesh router nodes placement problem in wireless mesh networks by tabu search algorithm. J Comput Syst Sci 81(8):1417–1428MathSciNetMATH
Zurück zum Zitat Xie J (1997) A brief review on evolutionary computation. Control Decis 1:000 Xie J (1997) A brief review on evolutionary computation. Control Decis 1:000
Zurück zum Zitat Xin B et al (2010) An adaptive hybrid optimizer based on particle swarm and differential evolution for global optimization. Science China Inf Sci 53(5):980–989MathSciNetMATH Xin B et al (2010) An adaptive hybrid optimizer based on particle swarm and differential evolution for global optimization. Science China Inf Sci 53(5):980–989MathSciNetMATH
Zurück zum Zitat Xu C et al (2019) Improving performance of retaining walls under dynamic conditions developing an optimized ann based on ant colony optimization technique. IEEE Access 7:94692–94700 Xu C et al (2019) Improving performance of retaining walls under dynamic conditions developing an optimized ann based on ant colony optimization technique. IEEE Access 7:94692–94700
Zurück zum Zitat Xu BC, Zhang Y-Y (2014) An improved gravitational search algorithm for dynamic neural network identification. Int J Autom Comput 11(4):434–440 Xu BC, Zhang Y-Y (2014) An improved gravitational search algorithm for dynamic neural network identification. Int J Autom Comput 11(4):434–440
Zurück zum Zitat Xu X, Li Y (2007) Comparison between particle swarm optimization, differential evolution and multi-parents crossover. In: 2007 International Conference on Computational Intelligence and Security. IEEE Xu X, Li Y (2007) Comparison between particle swarm optimization, differential evolution and multi-parents crossover. In: 2007 International Conference on Computational Intelligence and Security. IEEE
Zurück zum Zitat Yaghini M, Khoshraftar MM, Fallahi M (2013) A hybrid algorithm for artificial neural network training. Eng Appl Artif Intell 26(1):293–301 Yaghini M, Khoshraftar MM, Fallahi M (2013) A hybrid algorithm for artificial neural network training. Eng Appl Artif Intell 26(1):293–301
Zurück zum Zitat Yang XS (2008) Nature-inspired metaheuristic algorithms. Luniver Press, Beckington, p 128 Yang XS (2008) Nature-inspired metaheuristic algorithms. Luniver Press, Beckington, p 128
Zurück zum Zitat Yang XS (2010) Firefly algorithm, stochastic test functions and design optimisation. Int J Bio-Inspired Comput 2(2):78–84 Yang XS (2010) Firefly algorithm, stochastic test functions and design optimisation. Int J Bio-Inspired Comput 2(2):78–84
Zurück zum Zitat Yang XS, Deb S (2010) Engineering optimisation by cuckoo search. Int J Math Modell Numer Optim 1(4):330–343MATH Yang XS, Deb S (2010) Engineering optimisation by cuckoo search. Int J Math Modell Numer Optim 1(4):330–343MATH
Zurück zum Zitat Yang X-S (2010) A new metaheuristic bat-inspired algorithm. In: González JR et al (eds) Nature inspired cooperative strategies for optimization (NICSO 2010). Springer, Berlin, pp 65–74 Yang X-S (2010) A new metaheuristic bat-inspired algorithm. In: González JR et al (eds) Nature inspired cooperative strategies for optimization (NICSO 2010). Springer, Berlin, pp 65–74
Zurück zum Zitat Yang XS, Deb S (2009) Cuckoo search via Lévy flights. In: World Congress on nature and biologically inspired computing. NaBIC 2009. IEEE Yang XS, Deb S (2009) Cuckoo search via Lévy flights. In: World Congress on nature and biologically inspired computing. NaBIC 2009. IEEE
Zurück zum Zitat Yang X-S (2012) Flower pollination algorithm for global optimization. In: International conference on unconventional computing and natural computation. Springer Yang X-S (2012) Flower pollination algorithm for global optimization. In: International conference on unconventional computing and natural computation. Springer
Zurück zum Zitat Yao X (1993) A review of evolutionary artificial neural networks. Int J Intell Syst 8(4):539–567 Yao X (1993) A review of evolutionary artificial neural networks. Int J Intell Syst 8(4):539–567
Zurück zum Zitat Yi W et al (2016) An improved adaptive differential evolution algorithm for continuous optimization. Expert Syst Appl 44:1–12 Yi W et al (2016) An improved adaptive differential evolution algorithm for continuous optimization. Expert Syst Appl 44:1–12
Zurück zum Zitat Young T et al (2018) Recent trends in deep learning based natural language processing. IEEE Comput Intell Mag 13(3):55–75 Young T et al (2018) Recent trends in deep learning based natural language processing. IEEE Comput Intell Mag 13(3):55–75
Zurück zum Zitat Yu JJQ, Li VOK (2015) A social spider algorithm for global optimization. Appl Soft Comput 30:614–627 Yu JJQ, Li VOK (2015) A social spider algorithm for global optimization. Appl Soft Comput 30:614–627
Zurück zum Zitat Yuce B et al (2013) Honey bees inspired optimization method: the bees algorithm. Insects 4(4):646–662 Yuce B et al (2013) Honey bees inspired optimization method: the bees algorithm. Insects 4(4):646–662
Zurück zum Zitat Yuce B, Rezgui Y, Mourshed M (2016) ANN–GA smart appliance scheduling for optimised energy management in the domestic sector. Energy Build 111:311–325 Yuce B, Rezgui Y, Mourshed M (2016) ANN–GA smart appliance scheduling for optimised energy management in the domestic sector. Energy Build 111:311–325
Zurück zum Zitat Zeidi JR et al (2013) A hybrid multi-objective approach based on the genetic algorithm and neural network to design an incremental cellular manufacturing system. Comput Ind Eng 66(4):1004–1014 Zeidi JR et al (2013) A hybrid multi-objective approach based on the genetic algorithm and neural network to design an incremental cellular manufacturing system. Comput Ind Eng 66(4):1004–1014
Zurück zum Zitat Zhang J et al (2018) Queuing search algorithm: a novel metaheuristic algorithm for solving engineering optimization problems. Appl Math Model 63:464–490MathSciNetMATH Zhang J et al (2018) Queuing search algorithm: a novel metaheuristic algorithm for solving engineering optimization problems. Appl Math Model 63:464–490MathSciNetMATH
Zurück zum Zitat Zhang W et al (2020) An inspired machine-learning algorithm with a hybrid whale optimization for power transformer PHM. Energies 13(12):3143 Zhang W et al (2020) An inspired machine-learning algorithm with a hybrid whale optimization for power transformer PHM. Energies 13(12):3143
Zurück zum Zitat Zhang Y, Jin Z (2020) Group teaching optimization algorithm: a novel metaheuristic method for solving global optimization problems. Expert Syst Appl 148:113246 Zhang Y, Jin Z (2020) Group teaching optimization algorithm: a novel metaheuristic method for solving global optimization problems. Expert Syst Appl 148:113246
Zurück zum Zitat Zheng Y-J (2015) Water wave optimization: a new nature-inspired metaheuristic. Comput Oper Res 55:1–11MathSciNetMATH Zheng Y-J (2015) Water wave optimization: a new nature-inspired metaheuristic. Comput Oper Res 55:1–11MathSciNetMATH
Zurück zum Zitat Zhou Z-H (2004) Rule extraction: using neural networks or for neural networks? J Comput Sci Technol 19(2):249–253 Zhou Z-H (2004) Rule extraction: using neural networks or for neural networks? J Comput Sci Technol 19(2):249–253
Zurück zum Zitat Zhou Y et al (2020) Teaching learning-based whale optimization algorithm for multi-layer perceptron neural network training. Math Biosci Eng 17(5):5987–6025MATH Zhou Y et al (2020) Teaching learning-based whale optimization algorithm for multi-layer perceptron neural network training. Math Biosci Eng 17(5):5987–6025MATH
Zurück zum Zitat Zorarpacı E, Özel SA (2016) A hybrid approach of differential evolution and artificial bee colony for feature selection. Expert Syst Appl 62:91–103 Zorarpacı E, Özel SA (2016) A hybrid approach of differential evolution and artificial bee colony for feature selection. Expert Syst Appl 62:91–103
Metadaten
Titel
Advances of metaheuristic algorithms in training neural networks for industrial applications
verfasst von
Hue Yee Chong
Hwa Jen Yap
Shing Chiang Tan
Keem Siah Yap
Shen Yuong Wong
Publikationsdatum
28.05.2021
Verlag
Springer Berlin Heidelberg
Erschienen in
Soft Computing / Ausgabe 16/2021
Print ISSN: 1432-7643
Elektronische ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-021-05886-z

Weitere Artikel der Ausgabe 16/2021

Soft Computing 16/2021 Zur Ausgabe

Premium Partner