Weitere Kapitel dieses Buchs durch Wischen aufrufen
This research focuses on production scheduling in VCIM systems, i.e. developing a comprehensive production scheduling model for VCIM systems and developing a robust optimisation solution method for the complex scheduling problem in the developed model. In this chapter, a comprehensive critical literature review is presented, which includes the development of Computer-Integrated Manufacturing, development of Virtual Enterprise, development of Virtual Computer-Integrated Manufacturing, production scheduling issues in VCIM systems, development of optimisation methods, development of Genetic Algorithms, and current research gaps.
Bitte loggen Sie sich ein, um Zugang zu diesem Inhalt zu erhalten
Sie möchten Zugang zu diesem Inhalt erhalten? Dann informieren Sie sich jetzt über unsere Produkte:
Abd, K., Abhary, K., & Marian, R. (2016). Multi-objective optimisation of dynamic scheduling in robotic flexible assembly cells via fuzzy-based Taguchi approach. Computers & Industrial Engineering, 99, 250–259. CrossRef
Aguilar-Rivera, R., Valenzuela-Rendón, M., & Rodríguez-Ortiz, J. J. (2015). Genetic algorithms and Darwinian approaches in financial applications: A survey. Expert Systems with Applications, 42(21), 7684–7697. CrossRef
Aiello, G., Scalia, L. G., & Enea, M. (2013). A non dominated ranking multi-objective genetic algorithm and electre method for unequal area facility layout problems. Expert Systems with Applications, 40(12), 4812–4819. CrossRef
Akpınar, S., Bayhan, G. M., & Baykasoglu, A. (2013). Hybridizing ant colony optimization via genetic algorithm for mixed-model assembly line balancing problem with sequence dependent setup times between tasks. Applied Soft Computing, 13(1), 574–589. CrossRef
Akram, K., Kamal, K., & Zeb, A. (2016). Fast simulated annealing hybridized with quenching for solving job shop scheduling problem. Applied Soft Computing, 49, 510–523. CrossRef
Asawasakulsorn, A. (2009). Transportation collaboration: Partner selection criteria and IOS design issues for supporting trust. International Journal of Business and Information, 4(2), 199–220.
Bal, M., Manesh, H. F., & Hashemipour, M. (2008, April 1). Virtual-reality-based information requirements analysis tool for CIM system implementation: A case study in die-casting industry. International Journal of Computer Integrated Manufacturing, 21(3), 231–244.
Balakrishnan, J., Cheng, C. H., Conway, D. G., & Lau, C. M. (2003). A hybrid genetic algorithm for the dynamic plant layout problem. International Journal of Production Economics, 86(2), 107–120. CrossRef
Batur, G. D., Karasan, O. E., & Akturk, M. S. (2012). Multiple part-type scheduling in flexible robotic cells. International Journal of Production Economics, 135(2), 726–740. CrossRef
Boender, C. G. E., & Romeijn, H. E. (1995). Stochastic methods. In R. Horst & P. M. Pardalos (Eds.), Handbook of global optimization. Boston: Kluwer Academic Publishers.
Boudissa, E., & Bounekhla, M. (2012). Genetic algorithm with dynamic selection based on quadratic ranking applied to induction machine parameters estimation. Electric Power Components and Systems, 40(10), 1089–1104. CrossRef
Bozdağ, C. E., Kahraman, C., & Ruan, D. (2003). Fuzzy group decision making for selection among computer integrated manufacturing systems. Computers in Industry, 51(1), 13–29. CrossRef
Camarinha-Matos, L. M., & Afsarmanesh, H. (1999). The virtual enterprise concept. In L. M. Camarinha-Matos & H. Afsarmanesh (Eds.), Infrastructures for virtual enterprises—Networking industrial enterprises (pp. 3–14). The Netherlands: Kluwer Academic Publishers. CrossRef
Cardin, O., Mebarki, N., & Pinot, G. (2013). A study of the robustness of the group scheduling method using an emulation of a complex FMS. International Journal of Production Economics, 146(1), 199–207. CrossRef
Castro, H., Putnik, G. D., Shah, V., & Cruz-Cunha, M. M. (2013). A simulation tool and its role in supporting the management of the transformation processes of traditional enterprises into virtual enterprises. Tékhne, In Press, Corrected Proof.
Chan, F. T. S., & Zhang, T. (2011). The impact of collaborative transportation management on supply chain performance: A simulation approach. Expert Systems with Applications, 38(3), 2319–2329. CrossRef
Chang, P. C., Hsieh, J. C., & Wang, C. Y. (2007). Adaptive multi-objective genetic algorithms for scheduling of drilling operation in printed circuit board industry. Applied Soft Computing, 7(3), 800–806. CrossRef
Chen, C., Xia, J., Liu, J., & Feng, G. (2006). Nonlinear inversion of potential-field data using a hybrid-encoding genetic algorithm. Computers & Geosciences, 32(2), 230–239. CrossRef
Cheng, B. W., & Chang, C. L. (2007). A study on flowshop scheduling problem combining Taguchi experimental design and genetic algorithm. Expert Systems with Applications, 32(2), 415–421. CrossRef
Crispim, J., Rego, N., & Jorge, P. D. S. (2015). Stochastic partner selection for virtual enterprises: A chance-constrained approach. International Journal of Production Research, 53(12), 3661–3677. CrossRef
Dai, B., & Chen, H. (2009). Mathematical model and solution approach for collaborative logistics in less than truckload (LTL) transportation. In International Conference on Computers & Industrial Engineering (pp. 767–772).
Dao, S.D. & Marian, R. (2011c). Modeling and optimisation of precedence-constrained production sequencing and scheduling using multi-objective genetic algorithm. In Proceedings of the International Conference of Computational Intelligence and Intelligent Systems, pp. 1027–1032, 6-8 July, London, U.K.
Dao, S. D., Abhary, K., & Marian, R. (2012). Optimisation of resource scheduling in VCIM systems using genetic algorithm. International Journal of Advanced Research in Artificial Intelligence, 1(8), 49–56.
Dao, S. D., Abhary, K., & Marian, R. (2014). Optimisation of partner selection and collaborative transportation scheduling in Virtual Enterprises using GA. Expert Systems with Applications, 41(15), 6701–6717. CrossRef
Dao, S. D., Abhary, K., & Marian, R. (2015). An adaptive restarting genetic algorithm for global optimization. In Proceedings of the World Congress on Engineering and Computer Science (pp. 455–459).
Dao, S.D., Abhary, K., Marian, R. (2016a). A stochastic production scheduling model for VCIM systems. Intelligent Industrial Systems, 2(1), 85-101.
Dao, S. D., Abhary, K., & Marian, R. (2016b). An improved structure of genetic algorithms for global optimisation. Progress in Artificial Intelligence, 5(3), 155–163.
Dao, S. D., Abhary, K., & Marian, R. (2017). A bibliometric analysis of Genetic Algorithms throughout the history. Computers & Industrial Engineering, 110, 395–403. CrossRef
Dao, S. D., & Marian, R. (2011a). Optimisation of precedence-constrained production sequencing and scheduling using genetic algorithms. In International MultiConference of Engineers and Computer Scientists.
Dao, S. D., & Marian, R. (2011b). Modeling and optimisation of precedence-constrained production sequencing and scheduling for multiple production lines using genetic algorithm. Computer Technology and Application., 2(6), 487–499.
Dao, S. D., & Marian, R. (2013). Genetic algorithms for integrated optimisation of precedence-constrained production sequencing and scheduling. In S.-I. Ao & L. Gelman (Eds.), Electrical engineering and intelligent systems (pp. 65–80). New York: Springer.
Esen, İ., & Koç, M. A. (2015). Optimization of a passive vibration absorber for a barrel using the genetic algorithm. Expert Systems with Applications, 42(2), 894–905. CrossRef
Faghihi, V., Reinschmidt, K. F., & Kang, J. H. (2014). Construction scheduling using genetic algorithm based on building information model. Expert Systems with Applications, 41(16), 7565–7578. CrossRef
Fahimnia, B., Luong, L., & Marian, R. (2008). Optimization/simulation modeling of the integrated production-distribution plan: An innovative survey. WSEAS TRANSACTIONS on Business and Economics, 3(5), 52–65.
Fang, Y., Chu, F., Mammar, S., & Shi, Q. (2015). A new cut-and-solve and cutting plane combined approach for the capacitated lane reservation problem. Computers & Industrial Engineering, 80, 212–221. CrossRef
Floudas, C. A. (2000). Deterministic global optimization: Theory, methods and applications. Boston, MA: Springer. CrossRef
Gao, K. Z., Suganthan, P. N., Pan, Q. K., Chua, T. J., Chong, C. S., & Cai, T. X. (2016). An improved artificial bee colony algorithm for flexible job-shop scheduling problem with fuzzy processing time. Expert Systems with Applications, 65, 52–67. CrossRef
Gen, M., & Cheng, R. (1997). Genetic algorithms and engineering design. New York: Wiley.
Goldberg, D. E. (1989). Genetic algorithms in search, optimization, and machine learning. Boston: Addison-Wesley Publishing Company, Inc.
Hanagandi, V., & Nikolaou, M. (1998). A hybrid approach to global optimization using a clustering algorithm in a genetic search framework. Computers & Chemical Engineering, 22(12), 1913–1925. CrossRef
Harrington, J. (1973). Computer integrated manufacturing. New York: Industrial Press.
He, N., Zhang, D. Z., & Li, Q. (2014). Agent-based hierarchical production planning and scheduling in make-to-order manufacturing system. International Journal of Production Economics, 149, 117–130. CrossRef
He, Y., & Hui, C. W. (2010). A binary coding genetic algorithm for multi-purpose process scheduling: A case study. Chemical Engineering Science, 65(16), 4816–4828. CrossRef
Holland, J. H. (1975). Adaptation in natural and artificial systems. Ann Arbor: University of Michigan Press.
Huang, B., Gao, C., & Chen, L. (2011). Partner selection in a virtual enterprise under uncertain information about candidates. Expert Systems with Applications, 38(9), 11305–11310. CrossRef
Huang, B., Gou, H., Liu, W., Li, Y., & Xie, M. (2002). A framework for virtual enterprise control with the holonic manufacturing paradigm. Computers in Industry, 49(3), 299–310. CrossRef
Huang, M., & Fan, C. (2007). Research on the partner selection of virtual enterprise based on self-adaptive genetic algorithm. In Third International Conference on Intelligent Information Hiding and Multimedia Signal Processing (pp. 330–333).
Kundakcı, N., & Kulak, O. (2016). Hybrid genetic algorithms for minimizing makespan in dynamic job shop scheduling problem. Computers & Industrial Engineering, 96, 31–51. CrossRef
Lee, K., Kim, B. S., & Joo, C. M. (2012). Genetic algorithms for door-assigning and sequencing of trucks at distribution centers for the improvement of operational performance. Expert Systems with Applications, 39(17), 12975–12983. CrossRef
Li, J., & Chan, F. T. S. (2012). The impact of collaborative transportation management on demand disruption of manufacturing supply chains. International Journal of Production Research, 50(19), 5635–5650. CrossRef
Li, J., Huang, Y., & Niu, X. (2016). A branch population genetic algorithm for dual-resource constrained job shop scheduling problem. Computers & Industrial Engineering, 102, 113–131. CrossRef
Lin, G. C. I. (1997). The latest research trends in CIM. In The Fourth International Conference on Computer Integrated Manufacturing (pp. 26–33).
Lin, S. Y., & Tsai, H. F. (2016). Micro genetic algorithm with spatial crossover and correction schemes for constrained three-dimensional reader network planning. Expert Systems with Applications, 44, 344–353. CrossRef
Lin, W. C., Yin, Y., Cheng, S. R., Cheng, T. C. E., Wu, C. H., & Wu, C. C. (2016). Particle swarm optimization and opposite-based particle swarm optimization for two-agent multi-facility customer order scheduling with ready times. Applied Soft Computing. https://doi.org/10.1016/j.asoc.2016.09.038.
Luo, J., Wu, Y., & Mendes, A. B. (2016). Modelling of integrated vehicle scheduling and container storage problems in unloading process at an automated container terminal. Computers & Industrial Engineering, 94, 32–44. CrossRef
Mahmoodabadi, M. J., Safaie, A. A., Bagheri, A., & Nariman-zadeh, N. (2013). A novel combination of Particle Swarm Optimization and Genetic Algorithm for Pareto optimal design of a five-degree of freedom vehicle vibration model. Applied Soft Computing, 13(5), 2577–2591. CrossRef
Maity, S., Roy, A., & Maiti, M. (2015). A modified genetic algorithm for solving uncertain constrained solid travelling salesman problems. Computers & Industrial Engineering, 83, 273–296. CrossRef
Majumder, A., & Laha, D. (2016). A new cuckoo search algorithm for 2-machine robotic cell scheduling problem with sequence-dependent setup times. Swarm and Evolutionary Computation, 28, 131–143. CrossRef
Marian, R.M., Luong, L. & Dao, S.D. (2012). Hybrid genetic algorithm optimisation of distribution networks—A comparative study, in SI Ao, O Castillo & X Huang (eds), Intelligent Control and Innovative Computing, Springer US, Boston, MA, pp. 109-122.
Miller, F. P., Vandome, A. F., & McBrewster, J. (2010). Computer-integrated manufacturing. Mauritius: VDM Publishing House.
Moles, C. G., Mendes, P., & Banga, J. R. (2003). Parameter estimation in biochemical pathways: A comparison of global optimization methods. Genome Research, 13(11), 2467–2474. CrossRef
Mun, J., Shin, M., Lee, K., & Jung, M. (2009). Manufacturing enterprise collaboration based on a goal-oriented fuzzy trust evaluation model in a virtual enterprise. Computers & Industrial Engineering, 56(3), 888–901. CrossRef
Nagalingam, S. V. (1999). An innovative decision support system for CIM justification and optimisation. Ph.D. thesis, School of Engineering, University of South Australia.
Nagalingam, S. V., & Lin, G. C. I. (1999). Latest developments in CIM. Robotics and Computer-Integrated Manufacturing, 15(6), 423–430. CrossRef
Nagalingam, S. V., & Lin, G. C. I. (2000). A distributed group decision support systems for virtual computer integrated manufacturing. In The 6th International Conference on Automation Technology (pp. 377–382).
Nagalingam, S. V., Lin, G. C. I., & Wang, D. (2007). Resource scheduling for a virtual CIM system. In L. Wang & W. Shen (Eds.), Process planning and scheduling for distributed manufacturing (pp. 269–294). London: Springer. CrossRef
Nagalingam, S. V., Lin, G. C. I., Zhou, J., & Wang, D. (2003). Virtual computer integrated manufacturing and its future applications. In Proceedings of the 17th International Conference on Production Research.
Niu, S. H., Ong, S. K., & Nee, A. Y. C. (2012). An enhanced ant colony optimiser for multi-attribute partner selection in virtual enterprises. International Journal of Production Research, 50(8), 2286–2303. CrossRef
Ozener, O. O. (2008). Collaboration in transportation. Ph.D. thesis, Georgia Institute of Technology, Atlanta.
Qu, H., Xing, K., & Alexander, T. (2013). An improved genetic algorithm with co-evolutionary strategy for global path planning of multiple mobile robots. Neurocomputing, 120, 509–517. CrossRef
Salehi, M., & Moghaddam, T. R. (2009). Application of genetic algorithm to computer-aided process planning in preliminary and detailed planning. Engineering Applications of Artificial Intelligence, 22(8), 1179–1187. CrossRef
Shahlaei, M., Sobhani, A. M., Saghaie, L., & Fassihi, A. (2012). Application of an expert system based on Genetic Algorithm–Adaptive Neuro-Fuzzy Inference System (GA–ANFIS) in QSAR of cathepsin K inhibitors. Expert Systems with Applications, 39(6), 6182–6191. CrossRef
Shokouhifar, M., & Jalali, A. (2015a). A new evolutionary based application specific routing protocol for clustered wireless sensor networks. International Journal of Electronics and Communications (AEÜ), 69, 432–441. CrossRef
Shokouhifar, M., & Jalali, A. (2015b). An evolutionary-based methodology for symbolic simplification of analog circuits using genetic algorithm and simulated annealing. Expert Systems with Applications, 42(3), 1189–1201. CrossRef
Simona, D., & Raluca, P. (2011). Intelligent modeling method based on genetic algorithm for partner selection in virtual organizations. Business and Economic Horizons, 5(2), 23–34. CrossRef
Su, W., Huang, S. X., Fan, Y. S., & Mak, K. L. (2015). Integrated partner selection and production–distribution planning for manufacturing chains. Computers & Industrial Engineering, 84, 32–42. CrossRef
Suresh, S., Huang, H., & Kim, H. J. (2014). Hybrid real-coded genetic algorithm for data partitioning in multi-round load distribution and scheduling in heterogeneous systems. Applied Soft Computing, 24, 500–510. CrossRef
Tang, P. H., & Tseng, M. H. (2013). Adaptive directed mutation for real-coded genetic algorithms. Applied Soft Computing, 13(1), 600–614. CrossRef
Tao, F., Zhang, L., Zhang, Z. H., & Nee, A. Y. C. (2010). A quantum multi-agent evolutionary algorithm for selection of partners in a virtual enterprise. CIRP Annals - Manufacturing Technology, 59(1), 485–488. CrossRef
Wan, Y., Wang, M., Ye, Z., & Lai, X. (2016). A feature selection method based on modified binary coded ant colony optimization algorithm. Applied Soft Computing, 49, 248–258. CrossRef
Wang, D. (2007). The development of an agent-based architecture for virtual CIM. Ph.D. thesis, University of South Australia, Adelaide.
Wang, D., Nagalingam, S. V., & Lin, G. C. I. (2003a). Development of a virtual CIM system using agent-based approach. In Proceedings of the 7th International Conference on Mechatronics Technology (pp. 445–450).
Wang, D., Nagalingam, S. V., & Lin, G. C. I. (2003b). Development of an optimised virtual CIM system. In The 17th International Conference on Production Research (pp. 1–5).
Wang, D., Nagalingam, S. V., & Lin, G. C. I. (2004). Development of a parallel processing multi-agent architecture for a virtual CIM system. International Journal of Production Research, 42(17), 3765–3785. CrossRef
Wang, D., Nagalingam, S. V., & Lin, G. C. I. (2007). Development of an agent-based virtual CIM architecture for small to medium manufacturers. Robotics and Computer-Integrated Manufacturing, 23(1), 1–16. CrossRef
Wang, L., & Zheng, D. Z. (2002). A modified genetic algorithm for job shop scheduling. The International Journal of Advanced Manufacturing Technology, 20(1), 72–76. CrossRef
Wang, N. F., Zhang, X. M., & Yang, Y. W. (2013a). A hybrid genetic algorithm for constrained multi-objective optimization under uncertainty and target matching problems. Applied Soft Computing, 13(8), 3636–3645. CrossRef
Wang, Y., Yin, H., & Wang, J. (2009). Genetic algorithm with new encoding scheme for job shop scheduling. The International Journal of Advanced Manufacturing Technology, 44(9–10), 977–984. CrossRef
Wu, N., & Su, P. (2005). Selection of partners in virtual enterprise paradigm. Robotics and Computer-Integrated Manufacturing, 21(2), 119–131. CrossRef
Xia, H., Li, X., & Gao, L. (2016). A hybrid genetic algorithm with variable neighborhood search for dynamic integrated process planning and scheduling. Computers & Industrial Engineering, 102, 99–112. CrossRef
Yang, C. O., Guan, T. Y., & Lin, J. S. (2000). Developing a computer shop floor control model for a CIM system—using object modeling technique. Computers in Industry, 41(3), 213–238. CrossRef
Ye, F. (2010). An extended TOPSIS method with interval-valued intuitionistic fuzzy numbers for virtual enterprise partner selection. Expert Systems with Applications, 37(10), 7050–7055. CrossRef
Ye, F., & Li, Y. N. (2009). Group multi-attribute decision model to partner selection in the formation of virtual enterprise under incomplete information. Expert Systems with Applications, 36(5), 9350–9357. CrossRef
Yolmeh, A., & Salehi, N. (2015). An outer approximation method for an integration of supply chain network designing and assembly line balancing under uncertainty. Computers & Industrial Engineering, 83, 297–306. CrossRef
Yu, C., Xu, X., & Lu, Y. (2015). Computer-integrated manufacturing, cyber-physical systems and cloud manufacturing—Concepts and relationships. Manufacturing Letters, 6, 5–9. CrossRef
Yun, Y., Chung, H., & Moon, C. (2013). Hybrid genetic algorithm approach for precedence-constrained sequencing problem. Computers & Industrial Engineering, 65(1), 137–147. CrossRef
Yurdakul, M. (2004). Selection of computer-integrated manufacturing technologies using a combined analytic hierarchy process and goal programming model. Robotics and Computer-Integrated Manufacturing, 20(4), 329–340. CrossRef
Yusuf, İ. T. (2012). An experimental design approach using TOPSIS method for the selection of computer-integrated manufacturing technologies. Robotics and Computer-Integrated Manufacturing, 28(2), 245–256. CrossRef
Zhang, Y., Tao, F., Laili, Y., Hou, B., Lv, L., & Zhang, L. (2012). Green partner selection in virtual enterprise based on Pareto genetic algorithms. The International Journal of Advanced Manufacturing Technology, 1–17.
Zhang, Y., Tao, F., Laili, Y., Hou, B., Lv, L., & Zhang, L. (2013). Green partner selection in virtual enterprise based on Pareto genetic algorithms. The International Journal of Advanced Manufacturing Technology, 67(9), 2109–2125. CrossRef
Zhao, Q., Zhang, X., & Xiao, R. (2008). Particle swarm optimization algorithm for partner selection in virtual enterprise. Progress in Natural Science, 18(11), 1445–1452. CrossRef
Zhong, Y., Jian, L., & Zijun, W. (2009). An integrated optimisation algorithm of GA and ACA-based approaches for modeling virtual enterprise partner selection. The DATA BASE for Advances in Information Systems, 40(2), 37–56. CrossRef
Zhou, N., Xing, K., & Nagalingam, S. V. (2010a). An agent-based cross-enterprise resource planning for small and medium enterprises. IAENG International Journal of Computer Science, 37(3), 1–7.
Zhou, N., Xing, K., Nagalingam, S. V., & Lin, G. C. I. (2010b). Development of an agent based VCIM resource scheduling process for small and medium enterprises. In Proceedings of the International MultiConference of Engineers and Computer Scientists (pp. 39–44).
Zhou, W., Zheng, J., Yan, J., & Wang, J. (2011). A novel hybrid algorithm for assembly sequence planning combining bacterial chemotaxis with genetic algorithm. The International Journal of Advanced Manufacturing Technology, 52(5–8), 715–724. CrossRef
- Literature Review
Son Duy Dao
- Chapter 2
Neuer Inhalt/© Stellmach, Neuer Inhalt/© Maturus, Pluta Logo/© Pluta