Skip to main content
Top
Published in: Neural Computing and Applications 11/2023

11-01-2022 | S.I.: TAM-LHR

Multi-objective flower pollination algorithm: a new technique for EEG signal denoising

Authors: Zaid Abdi Alkareem Alyasseri, Ahamad Tajudin Khader, Mohammed Azmi Al-Betar, Xin-She Yang, Mazin Abed Mohammed, Karrar Hameed Abdulkareem, Seifedine Kadry, Imran Razzak

Published in: Neural Computing and Applications | Issue 11/2023

Log in

Activate our intelligent search to find suitable subject content or patents.

search-config
loading …

Abstract

The electroencephalogram (EEG) signal denoising problem has been considered a challenging task because of several artifact noises, such as eye blinking, eye movement, muscle activity, and power line interference, which can corrupt the original EEG signal during the recording time. Therefore, to remove these noises, the EEG signals must be processed to obtain efficient EEG features. Accordingly, several techniques have been proposed to reduce EEG noises, such as EEG signal denoising using wavelet transform (WT). The success of WT depends on the best configuration of its control parameters, which are often experimentally set. In this study, a multi-objective flower pollination algorithm (MOFPA) with WT (MOFPA-WT) is proposed to solve the EEG signal denoising problem. The novelty of this study is to find optimal EEG signal denoising parameters using MOFPA based on two measurement criteria for the denoised signals, namely minimum mean squared error (MSE) and maximum signal-to-noise ratio (SNR). The MOFPA-WT is tested using a standard EEG signal processing dataset, namely the EEG motor movement/imagery dataset. The performance of MOFPA-WT is evaluated using five criteria, namely SNR, SNR improvement, MSE, root mean squared error (RMSE), and percentage root mean square difference (PRD). Experiments are conducted using FPA with MSE, SNR, and MSE and SNR to show the effect of the multi-objective aspects on the performance of the proposed MOFPA-WT. Results show that FPA with MSE and SNR exhibits more subjective results than FPA with MSE and FPA with SNR. The convergence rate and Pareto front are also studied for the proposed MOFPA-WT.

Dont have a licence yet? Then find out more about our products and how to get one now:

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!

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!

Literature
1.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA (2017) Optimal electroencephalogram signals denoising using hybrid \(\beta \)-hill climbing algorithm and wavelet transform. In: Proceedings of the international conference on imaging, signal processing and communication, pp 106–112 Alyasseri ZAA, Khader AT, Al-Betar MA (2017) Optimal electroencephalogram signals denoising using hybrid \(\beta \)-hill climbing algorithm and wavelet transform. In: Proceedings of the international conference on imaging, signal processing and communication, pp 106–112
2.
go back to reference Yang XS (2012) Flower pollination algorithm for global optimization. In: International conference on unconventional computing and natural computation, Springer, pp 240–249 Yang XS (2012) Flower pollination algorithm for global optimization. In: International conference on unconventional computing and natural computation, Springer, pp 240–249
3.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Awadallah MA, Yang XS (2018) Variants of the flower pollination algorithm: a review. In: Nature-inspired algorithms and applied optimization, Springer, pp 91–118 Alyasseri ZAA, Khader AT, Al-Betar MA, Awadallah MA, Yang XS (2018) Variants of the flower pollination algorithm: a review. In: Nature-inspired algorithms and applied optimization, Springer, pp 91–118
4.
go back to reference Al-Betar MA, Awadallah MA, Doush IA, Hammouri AI, Mafarja M, Alyasseri ZAA (2019) Island flower pollination algorithm for global optimization. J Supercomput 75(8):5280–5323CrossRef Al-Betar MA, Awadallah MA, Doush IA, Hammouri AI, Mafarja M, Alyasseri ZAA (2019) Island flower pollination algorithm for global optimization. J Supercomput 75(8):5280–5323CrossRef
5.
go back to reference Yang X-S, Karamanoglu M, He X (2013) Multi-objective flower algorithm for optimization. Proc Comput Sci 18:861–868CrossRef Yang X-S, Karamanoglu M, He X (2013) Multi-objective flower algorithm for optimization. Proc Comput Sci 18:861–868CrossRef
6.
go back to reference Yang X-S, Karamanoglu M, He X (2014) Flower pollination algorithm: a novel approach for multiobjective optimization. Eng Opt 46(9):1222–1237MathSciNetCrossRef Yang X-S, Karamanoglu M, He X (2014) Flower pollination algorithm: a novel approach for multiobjective optimization. Eng Opt 46(9):1222–1237MathSciNetCrossRef
7.
go back to reference Tamilselvan V, Jayabarathi T (2016) Multi objective flower pollination algorithm for solving capacitor placement in radial distribution system using data structure load flow analysis. Arch Electrical Eng 65(2):203–220CrossRef Tamilselvan V, Jayabarathi T (2016) Multi objective flower pollination algorithm for solving capacitor placement in radial distribution system using data structure load flow analysis. Arch Electrical Eng 65(2):203–220CrossRef
8.
go back to reference Azis MF, Ryanta A, Putra DFU, Fenno O (2015) Dynamic economic dispatch considering emission using multi-objective flower pollination algorithm. In: ASEAN/Asian Academic Society international conference proceeding series Azis MF, Ryanta A, Putra DFU, Fenno O (2015) Dynamic economic dispatch considering emission using multi-objective flower pollination algorithm. In: ASEAN/Asian Academic Society international conference proceeding series
9.
go back to reference Shilaja C, Ravi K (2017) Multi-objective optimal power flow problem using enhanced flower pollination algorithm. Gazi Univ J Sci 30(1):79–91 Shilaja C, Ravi K (2017) Multi-objective optimal power flow problem using enhanced flower pollination algorithm. Gazi Univ J Sci 30(1):79–91
10.
go back to reference Rajaram R, Kumar KS (2015) Multiobjective power loss reduction using flower pollination algorithm. Int J Control Theory Appl 8(5):2239–2245 Rajaram R, Kumar KS (2015) Multiobjective power loss reduction using flower pollination algorithm. Int J Control Theory Appl 8(5):2239–2245
11.
go back to reference Rajalashmi K, Prabha S (2017) A hybrid algorithm for multiobjective optimal power flow problem using particle swarm algorithm and enhanced flower pollination algorithm. Asian J Res Soc Sci Humanities 7(1):923–940 Rajalashmi K, Prabha S (2017) A hybrid algorithm for multiobjective optimal power flow problem using particle swarm algorithm and enhanced flower pollination algorithm. Asian J Res Soc Sci Humanities 7(1):923–940
12.
go back to reference Goldberger AL, Amaral LA, Glass L, Hausdorff JM, Ivanov PC, Mark RG, Mietus JE, Moody GB, Peng C-K, Stanley HE (2000) Physiobank, physiotoolkit, and physionet. Circulation 101(23):e215–e220CrossRef Goldberger AL, Amaral LA, Glass L, Hausdorff JM, Ivanov PC, Mark RG, Mietus JE, Moody GB, Peng C-K, Stanley HE (2000) Physiobank, physiotoolkit, and physionet. Circulation 101(23):e215–e220CrossRef
13.
go back to reference Kumari P, Vaish A (2015) Brainwave based user identification system: a pilot study in robotics environment. Robot Auto Syst 65:15–23CrossRef Kumari P, Vaish A (2015) Brainwave based user identification system: a pilot study in robotics environment. Robot Auto Syst 65:15–23CrossRef
14.
go back to reference Sharma PK, Vaish A (2016) Individual identification based on neuro-signal using motor movement and imaginary cognitive process. Optik Int J Light Electron Opt 127(4):2143–2148CrossRef Sharma PK, Vaish A (2016) Individual identification based on neuro-signal using motor movement and imaginary cognitive process. Optik Int J Light Electron Opt 127(4):2143–2148CrossRef
15.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Alomari OA (2020) Person identification using eeg channel selection with hybrid flower pollination algorithm. Pattern Recogn, 107393 Alyasseri ZAA, Khader AT, Al-Betar MA, Alomari OA (2020) Person identification using eeg channel selection with hybrid flower pollination algorithm. Pattern Recogn, 107393
16.
go back to reference Ramadan RA, Vasilakos AV (2017) Brain computer interface: control signals review. Neurocomputing 223:26–44CrossRef Ramadan RA, Vasilakos AV (2017) Brain computer interface: control signals review. Neurocomputing 223:26–44CrossRef
17.
go back to reference Alyasseri ZAA, Khadeer AT, Al-Betar MA, Abasi A, Makhadmeh S, Ali NS (2019) The effects of EEG feature extraction using multi-wavelet decomposition for mental tasks classification. In: Proceedings of the international conference on information and communication technology, pp 139–146 Alyasseri ZAA, Khadeer AT, Al-Betar MA, Abasi A, Makhadmeh S, Ali NS (2019) The effects of EEG feature extraction using multi-wavelet decomposition for mental tasks classification. In: Proceedings of the international conference on information and communication technology, pp 139–146
18.
go back to reference Rao RP (2013) Brain-computer interfacing: an introduction. Cambridge University Press, Cambridge Rao RP (2013) Brain-computer interfacing: an introduction. Cambridge University Press, Cambridge
19.
go back to reference Berger H (1929) Über das elektrenkephalogramm des menschen. Eur Arch Psychiatry Clin Neurosci 87(1):527–570 Berger H (1929) Über das elektrenkephalogramm des menschen. Eur Arch Psychiatry Clin Neurosci 87(1):527–570
20.
go back to reference Abdulkader SN, Atia A, Mostafa M-SM (2015) Brain computer interfacing: applications and challenges. Egypt Inf J 16(2):213–230 Abdulkader SN, Atia A, Mostafa M-SM (2015) Brain computer interfacing: applications and challenges. Egypt Inf J 16(2):213–230
21.
go back to reference Prabhakar SK, Rajaguru H, Lee S-W (2020) A framework for schizophrenia eeg signal classification with nature inspired optimization algorithms. IEEE Access 8:39875–39897CrossRef Prabhakar SK, Rajaguru H, Lee S-W (2020) A framework for schizophrenia eeg signal classification with nature inspired optimization algorithms. IEEE Access 8:39875–39897CrossRef
22.
go back to reference Souri A, Ghafour MY, Ahmed AM, Safara F, Yamini A, Hoseyninezhad M (2020) A new machine learning-based healthcare monitoring model for student‘s condition diagnosis in internet of things environment. Soft Comput 24:17111–17121CrossRef Souri A, Ghafour MY, Ahmed AM, Safara F, Yamini A, Hoseyninezhad M (2020) A new machine learning-based healthcare monitoring model for student‘s condition diagnosis in internet of things environment. Soft Comput 24:17111–17121CrossRef
23.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Papa JP, Alomari OA, Makhadmeh SN (2018) Classification of eeg mental tasks using multi-objective flower pollination algorithm for person identification. Int J Integr Eng 10(7) Alyasseri ZAA, Khader AT, Al-Betar MA, Papa JP, Alomari OA, Makhadmeh SN (2018) Classification of eeg mental tasks using multi-objective flower pollination algorithm for person identification. Int J Integr Eng 10(7)
24.
go back to reference Kumari P, Vaish A (2014) Brainwave based authentication system: research issues and challenges. Int J Comput Eng Appl 4(1):2 Kumari P, Vaish A (2014) Brainwave based authentication system: research issues and challenges. Int J Comput Eng Appl 4(1):2
25.
go back to reference Adeli H, Ghosh-Dastidar S, Dadmehr N (2007) A wavelet-chaos methodology for analysis of EEGs and EEG subbands to detect seizure and epilepsy. IEEE Trans Biomed Eng 54(2):205–211CrossRef Adeli H, Ghosh-Dastidar S, Dadmehr N (2007) A wavelet-chaos methodology for analysis of EEGs and EEG subbands to detect seizure and epilepsy. IEEE Trans Biomed Eng 54(2):205–211CrossRef
26.
go back to reference El-Dahshan E-SA (2011) Genetic algorithm and wavelet hybrid scheme for ECG signal denoising. Telecommun Syst 46(3):209–215CrossRef El-Dahshan E-SA (2011) Genetic algorithm and wavelet hybrid scheme for ECG signal denoising. Telecommun Syst 46(3):209–215CrossRef
27.
go back to reference Kalaivani M, Kalaivani V, Devi VA (2014) Analysis of EEG signal for the detection of brain abnormalities. Int J Comput Appl \(\mathring{R}\) Year Kalaivani M, Kalaivani V, Devi VA (2014) Analysis of EEG signal for the detection of brain abnormalities. Int J Comput Appl \(\mathring{R}\) Year
28.
go back to reference Al-Qazzaz NK, Hamid Bin Mohd Ali S, Ahmad SA, Islam MS, Escudero J (2015) Selection of mother wavelet functions for multi-channel EEG signal analysis during a working memory task. Sensors 15(11):29015–29035 Al-Qazzaz NK, Hamid Bin Mohd Ali S, Ahmad SA, Islam MS, Escudero J (2015) Selection of mother wavelet functions for multi-channel EEG signal analysis during a working memory task. Sensors 15(11):29015–29035
29.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Abualigah LM (2017) Ecg signal denoising using \(\beta \)-hill climbing algorithm and wavelet transform. In: ICIT 2017 the 8th international conference on information technology, pp 1–7 Alyasseri ZAA, Khader AT, Al-Betar MA, Abualigah LM (2017) Ecg signal denoising using \(\beta \)-hill climbing algorithm and wavelet transform. In: ICIT 2017 the 8th international conference on information technology, pp 1–7
30.
go back to reference Rahmani AM, Babaei Z, Souri A (2021) Event-driven iot architecture for data analysis of reliable healthcare application using complex event processing. Cluster Comput 24(2):1347–1360CrossRef Rahmani AM, Babaei Z, Souri A (2021) Event-driven iot architecture for data analysis of reliable healthcare application using complex event processing. Cluster Comput 24(2):1347–1360CrossRef
31.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA (2017) Electroencephalogram signals denoising using various mother wavelet functions: a comparative analysis. In: Proceedings of the international conference on imaging, signal processing and communication, pp 100–105 Alyasseri ZAA, Khader AT, Al-Betar MA (2017) Electroencephalogram signals denoising using various mother wavelet functions: a comparative analysis. In: Proceedings of the international conference on imaging, signal processing and communication, pp 100–105
32.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Awadallah MA (2018) Hybridizing \(\beta \)-hill climbing with wavelet transform for denoising ECG signals. Inf Sci 429:229–246MathSciNetCrossRef Alyasseri ZAA, Khader AT, Al-Betar MA, Awadallah MA (2018) Hybridizing \(\beta \)-hill climbing with wavelet transform for denoising ECG signals. Inf Sci 429:229–246MathSciNetCrossRef
33.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Papa JP, Alomari OA, Makhadme SN (2018) An efficient optimization technique of eeg decomposition for user authentication system. In: 2018 2nd International conference on biosignal analysis, processing and systems (ICBAPS), IEEE, pp 1–6 Alyasseri ZAA, Khader AT, Al-Betar MA, Papa JP, Alomari OA, Makhadme SN (2018) An efficient optimization technique of eeg decomposition for user authentication system. In: 2018 2nd International conference on biosignal analysis, processing and systems (ICBAPS), IEEE, pp 1–6
34.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Abasi AK, Makhadmeh SN (2021) Eeg signal denoising using hybridizing method between wavelet transform with genetic algorithm. In: Proceedings of the 11th national technical seminar on unmanned system technology 2019, Springer, pp 449–469 Alyasseri ZAA, Khader AT, Al-Betar MA, Abasi AK, Makhadmeh SN (2021) Eeg signal denoising using hybridizing method between wavelet transform with genetic algorithm. In: Proceedings of the 11th national technical seminar on unmanned system technology 2019, Springer, pp 449–469
35.
go back to reference Nguyen P, Kim J-M (2016) Adaptive ECG denoising using genetic algorithm-based thresholding and ensemble empirical mode decomposition. Inf Sci 373:499–511CrossRef Nguyen P, Kim J-M (2016) Adaptive ECG denoising using genetic algorithm-based thresholding and ensemble empirical mode decomposition. Inf Sci 373:499–511CrossRef
37.
go back to reference Al-Betar MA (2016) b-hill climbing: an exploratory local search. Neural Comput Appl, pp 1–16 Al-Betar MA (2016) b-hill climbing: an exploratory local search. Neural Comput Appl, pp 1–16
38.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Papa JP, Alomari OA (2018) Eeg feature extraction for person identification using wavelet decomposition and multi-objective flower pollination algorithm, Ieee. Access 6:76007–76024CrossRef Alyasseri ZAA, Khader AT, Al-Betar MA, Papa JP, Alomari OA (2018) Eeg feature extraction for person identification using wavelet decomposition and multi-objective flower pollination algorithm, Ieee. Access 6:76007–76024CrossRef
39.
go back to reference Kumar H, Pai SP, Vijay G, Rao R (2014) Wavelet transform for bearing condition monitoring and fault diagnosis: a review. Int J COMADEM 17(1):9–23 Kumar H, Pai SP, Vijay G, Rao R (2014) Wavelet transform for bearing condition monitoring and fault diagnosis: a review. Int J COMADEM 17(1):9–23
40.
go back to reference Sawant C, Patii HT (2014) Wavelet based ECG signal de-noising. Netw Soft Comput (ICNSC). In: 2014 First international conference on, IEEE, pp 20–24 Sawant C, Patii HT (2014) Wavelet based ECG signal de-noising. Netw Soft Comput (ICNSC). In: 2014 First international conference on, IEEE, pp 20–24
41.
go back to reference Mamun M, Al-Kadi M, Marufuzzaman M (2013) Effectiveness of wavelet denoising on electroencephalogram signals. J Appl Res Technol 11(1):156–160CrossRef Mamun M, Al-Kadi M, Marufuzzaman M (2013) Effectiveness of wavelet denoising on electroencephalogram signals. J Appl Res Technol 11(1):156–160CrossRef
42.
go back to reference Al-Kadi MI, Reaz MBI, Ali MAM, Liu CY (2014) Reduction of the dimensionality of the EEG channels during scoliosis correction surgeries using a wavelet decomposition technique. Sensors 14(7):13046–13069CrossRef Al-Kadi MI, Reaz MBI, Ali MAM, Liu CY (2014) Reduction of the dimensionality of the EEG channels during scoliosis correction surgeries using a wavelet decomposition technique. Sensors 14(7):13046–13069CrossRef
43.
go back to reference Borse S, EEG de-noising using wavelet transform and fast ica. IJISET-Int J Innov Sci Eng Technol Borse S, EEG de-noising using wavelet transform and fast ica. IJISET-Int J Innov Sci Eng Technol
45.
go back to reference Singh BN, Tiwari AK (2006) Optimal selection of wavelet basis function applied to ecg signal denoising. Digital Signal Process 16(3):275–287CrossRef Singh BN, Tiwari AK (2006) Optimal selection of wavelet basis function applied to ecg signal denoising. Digital Signal Process 16(3):275–287CrossRef
48.
go back to reference Alyasseri ZAA, Venkat I, Al-Betar MA, Khader AT (2012) Edge preserving image enhancement via harmony search algorithm. in: Data mining and optimization (DMO), 2012 4th conference on, IEEE, pp 47–52 Alyasseri ZAA, Venkat I, Al-Betar MA, Khader AT (2012) Edge preserving image enhancement via harmony search algorithm. in: Data mining and optimization (DMO), 2012 4th conference on, IEEE, pp 47–52
49.
go back to reference Al-Betar MA, Alyasseri ZAA, Khader AT, Bolaji AL, Awadallah MA (2016) Gray image enhancement using harmony search. Int J Comput Intell Syst 9(5):932–944CrossRef Al-Betar MA, Alyasseri ZAA, Khader AT, Bolaji AL, Awadallah MA (2016) Gray image enhancement using harmony search. Int J Comput Intell Syst 9(5):932–944CrossRef
50.
go back to reference Al-Betar MA, Alyasseri ZAA, Awadallah MA, Doush IA (2020) Coronavirus herd immunity optimizer (chio). Neural Comput Appl, pp 1–32 Al-Betar MA, Alyasseri ZAA, Awadallah MA, Doush IA (2020) Coronavirus herd immunity optimizer (chio). Neural Comput Appl, pp 1–32
51.
go back to reference Bolaji AL, Al-Betar MA, Awadallah MA, Khader AT, Abualigah LM (2016) A comprehensive review: Krill herd algorithm (kh) and its applications. Appl Soft Comput 49:437–446CrossRef Bolaji AL, Al-Betar MA, Awadallah MA, Khader AT, Abualigah LM (2016) A comprehensive review: Krill herd algorithm (kh) and its applications. Appl Soft Comput 49:437–446CrossRef
52.
go back to reference Makhadmeh SN, Khader AT, Al-Betar MA, Naim S, Abasi AK, Alyasseri ZAA (2021) A novel hybrid grey wolf optimizer with min-conflict algorithm for power scheduling problem in a smart home. Swarm Evol Comput 60:100793CrossRef Makhadmeh SN, Khader AT, Al-Betar MA, Naim S, Abasi AK, Alyasseri ZAA (2021) A novel hybrid grey wolf optimizer with min-conflict algorithm for power scheduling problem in a smart home. Swarm Evol Comput 60:100793CrossRef
53.
go back to reference Shehab M, Khader AT, Al-Betar MA (2017) A survey on applications and variants of the cuckoo search algorithm. Appl Soft Comput 61:1041–1059CrossRef Shehab M, Khader AT, Al-Betar MA (2017) A survey on applications and variants of the cuckoo search algorithm. Appl Soft Comput 61:1041–1059CrossRef
54.
go back to reference Alomari OA, Makhadmeh SN, Al-Betar MA, Alyasseri ZAA, Doush IA, Abasi AK, Awadallah MA, Zitar RA (2021) Gene selection for microarray data classification based on grey wolf optimizer enhanced with triz-inspired operators. Knowl Based Syst, p 107034 Alomari OA, Makhadmeh SN, Al-Betar MA, Alyasseri ZAA, Doush IA, Abasi AK, Awadallah MA, Zitar RA (2021) Gene selection for microarray data classification based on grey wolf optimizer enhanced with triz-inspired operators. Knowl Based Syst, p 107034
55.
go back to reference Abualigah LM, Khader AT, Al-Betar MA, Alyasseri ZAA, Alomari OA, Hanandeh ES (2017) Feature selection with \(\beta \)-hill climbing search for text clustering application. In: Information and communication technology (PICICT), 2017 Palestinian international conference on, IEEE, pp 22–27 Abualigah LM, Khader AT, Al-Betar MA, Alyasseri ZAA, Alomari OA, Hanandeh ES (2017) Feature selection with \(\beta \)-hill climbing search for text clustering application. In: Information and communication technology (PICICT), 2017 Palestinian international conference on, IEEE, pp 22–27
56.
go back to reference Abasi AK, Khader AT, Al-Betar MA, Alyasseri ZAA, Makhadmeh SN, Al-laham M, Naim S (2021) A hybrid salp swarm algorithm with \(\beta \)-hill climbing algorithm for text documents clustering. Algorithms and applications, evolutionary data clustering, p 129 Abasi AK, Khader AT, Al-Betar MA, Alyasseri ZAA, Makhadmeh SN, Al-laham M, Naim S (2021) A hybrid salp swarm algorithm with \(\beta \)-hill climbing algorithm for text documents clustering. Algorithms and applications, evolutionary data clustering, p 129
57.
go back to reference Rodrigues D, Silva GF, Papa JP, Marana AN, Yang X-S (2016) EEG-based person identification through binary flower pollination algorithm. Exp Syst Appl 62:81–90CrossRef Rodrigues D, Silva GF, Papa JP, Marana AN, Yang X-S (2016) EEG-based person identification through binary flower pollination algorithm. Exp Syst Appl 62:81–90CrossRef
58.
go back to reference Alyasseri ZAA, Khader AT, Al-Betar MA, Abasi AK, Makhadmeh SN (2019) EEG signals denoising using optimal wavelet transform hybridized with efficient metaheuristic methods. IEEE Access 8:10584–10605CrossRef Alyasseri ZAA, Khader AT, Al-Betar MA, Abasi AK, Makhadmeh SN (2019) EEG signals denoising using optimal wavelet transform hybridized with efficient metaheuristic methods. IEEE Access 8:10584–10605CrossRef
59.
go back to reference Jenkal W, Latif R, Toumanari A, Dliou A, El B‘charri O, Maoulainine FM (2016) An efficient algorithm of ECG signal denoising using the adaptive dual threshold filter and the discrete wavelet transform. Biocyber Biomed Eng 36(3):499–508 Jenkal W, Latif R, Toumanari A, Dliou A, El B‘charri O, Maoulainine FM (2016) An efficient algorithm of ECG signal denoising using the adaptive dual threshold filter and the discrete wavelet transform. Biocyber Biomed Eng 36(3):499–508
60.
go back to reference Wang J, Ye Y, Pan X, Gao X (2015) Parallel-type fractional zero-phase filtering for ECG signal denoising. Biomed Signal Process Control 18:36–41CrossRef Wang J, Ye Y, Pan X, Gao X (2015) Parallel-type fractional zero-phase filtering for ECG signal denoising. Biomed Signal Process Control 18:36–41CrossRef
61.
go back to reference Schalk G, McFarland DJ, Hinterberger T, Birbaumer N, Wolpaw JR (2004) Bci 2000: a general-purpose brain-computer interface (bci) system. IEEE Trans Biomed Eng 51(6):1034–1043CrossRef Schalk G, McFarland DJ, Hinterberger T, Birbaumer N, Wolpaw JR (2004) Bci 2000: a general-purpose brain-computer interface (bci) system. IEEE Trans Biomed Eng 51(6):1034–1043CrossRef
62.
go back to reference Deb K (2001) Multi-objective optimization using evolutionary algorithms, vol 16. John Wiley & Sons Deb K (2001) Multi-objective optimization using evolutionary algorithms, vol 16. John Wiley & Sons
63.
go back to reference Wilcoxon F (1945) Individual comparisons by ranking methods. Biometrics Bull 1(6):80–83CrossRef Wilcoxon F (1945) Individual comparisons by ranking methods. Biometrics Bull 1(6):80–83CrossRef
64.
go back to reference Deb K, Pratap A, Agarwal S, Meyarivan T (2002) A fast and elitist multiobjective genetic algorithm: Nsga-ii. IEEE Trans Evol Comput 6(2):182–197CrossRef Deb K, Pratap A, Agarwal S, Meyarivan T (2002) A fast and elitist multiobjective genetic algorithm: Nsga-ii. IEEE Trans Evol Comput 6(2):182–197CrossRef
65.
go back to reference Coello CC, Lechuga MS (2002) Mopso: a proposal for multiple objective particle swarm optimization. In: Proceedings of the 2002 congress on evolutionary computation. CEC’02 (Cat. No. 02TH8600), vol 2, IEEE, pp 1051–1056 Coello CC, Lechuga MS (2002) Mopso: a proposal for multiple objective particle swarm optimization. In: Proceedings of the 2002 congress on evolutionary computation. CEC’02 (Cat. No. 02TH8600), vol 2, IEEE, pp 1051–1056
66.
go back to reference Bhatnagar A, Gupta K, Pandharkar U, Manthalkar R, Jadhav N (2019) Comparative analysis of ICA, PCA-based EASI and wavelet-based unsupervised denoising for EEG signals. In: Computing, communication and signal processing, Springer, pp 749–759 Bhatnagar A, Gupta K, Pandharkar U, Manthalkar R, Jadhav N (2019) Comparative analysis of ICA, PCA-based EASI and wavelet-based unsupervised denoising for EEG signals. In: Computing, communication and signal processing, Springer, pp 749–759
67.
go back to reference Al-Salman W, Li Y, Wen P (2019) Detecting sleep spindles in EEGs using wavelet fourier analysis and statistical features. Biomed Signal Process Control 48:80–92CrossRef Al-Salman W, Li Y, Wen P (2019) Detecting sleep spindles in EEGs using wavelet fourier analysis and statistical features. Biomed Signal Process Control 48:80–92CrossRef
68.
go back to reference Luck SJ (2014) An introduction to the event-related potential technique, MIT press Luck SJ (2014) An introduction to the event-related potential technique, MIT press
Metadata
Title
Multi-objective flower pollination algorithm: a new technique for EEG signal denoising
Authors
Zaid Abdi Alkareem Alyasseri
Ahamad Tajudin Khader
Mohammed Azmi Al-Betar
Xin-She Yang
Mazin Abed Mohammed
Karrar Hameed Abdulkareem
Seifedine Kadry
Imran Razzak
Publication date
11-01-2022
Publisher
Springer London
Published in
Neural Computing and Applications / Issue 11/2023
Print ISSN: 0941-0643
Electronic ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-021-06757-2

Other articles of this Issue 11/2023

Neural Computing and Applications 11/2023 Go to the issue

S.I.: Towards Advancements in Machine Learning for Exploiting Large-Scale and Heterogeneous Repositories (WorldCIST’21)

Counterfactual explanation of Bayesian model uncertainty

Premium Partner