169
Views
22
CrossRef citations to date
0
Altmetric
Original Articles

A new multiobjective genetic algorithm with heterogeneous population for solving flowshop scheduling problems

&
Pages 465-477 | Published online: 16 Jul 2007

Keep up to date with the latest research on this topic with citation updates for this article.

Read on this site (4)

O. Kheirandish, R. Tavakkoli-Moghaddam & M. Karimi-Nasab. (2015) An artificial bee colony algorithm for a two-stage hybrid flowshop scheduling problem with multilevel product structures and requirement operations. International Journal of Computer Integrated Manufacturing 28:5, pages 437-450.
Read now
Ming K. Lim, Kim Tan & Stephen C.H. Leung. (2013) Using a multi-agent system to optimise resource utilisation in multi-site manufacturing facilities. International Journal of Production Research 51:9, pages 2620-2638.
Read now
M. Frosolini, M. Braglia & F. A. Zammori. (2011) A modified harmony search algorithm for the multi-objective flowshop scheduling problem with due dates. International Journal of Production Research 49:20, pages 5957-5985.
Read now
Li-Juan Li, Jian-Min Gao, Kun Chen & Hong-Quan Jiang. (2011) The identification of irrationally allocated resources in business process based on network centrality analysis. International Journal of Computer Integrated Manufacturing 24:8, pages 748-755.
Read now

Articles from other publishers (18)

Weishi Shao, Dechang Pi & Zhongshi Shao. (2019) A Pareto-Based Estimation of Distribution Algorithm for Solving Multiobjective Distributed No-Wait Flow-Shop Scheduling Problem With Sequence-Dependent Setup Time. IEEE Transactions on Automation Science and Engineering 16:3, pages 1344-1360.
Crossref
Fuyu Yuan, Xin Xu & Minghao Yin. (2019) A novel fuzzy model for multi-objective permutation flow shop scheduling problem with fuzzy processing time. Advances in Mechanical Engineering 11:4, pages 168781401984369.
Crossref
Gibtha Fitri Laxmi, Yeni Herdiyeni & Yandra Arkeman. (2017) Identification of medicinal plant by fuzzy local binary pattem and multi objective genetic algorithm. Identification of medicinal plant by fuzzy local binary pattem and multi objective genetic algorithm.
Xiangtao Li & Shijing Ma. (2017) Multiobjective Discrete Artificial Bee Colony Algorithm for Multiobjective Permutation Flow Shop Scheduling Problem With Sequence Dependent Setup Times. IEEE Transactions on Engineering Management 64:2, pages 149-165.
Crossref
Yi Xu & Shiwen Mao. (2017) User Association in Massive MIMO HetNets. IEEE Systems Journal 11:1, pages 7-19.
Crossref
Jianyou Xu, Chin-Chia Wu, Yunqiang Yin & Win-Chin Lin. (2017) An iterated local search for the multi-objective permutation flowshop scheduling problem with sequence-dependent setup times. Applied Soft Computing 52, pages 39-47.
Crossref
Yu-Teng Chang & Tsung-Che Chiang. (2016) Multiobjective permutation flow shop scheduling using MOEA/D with local search. Multiobjective permutation flow shop scheduling using MOEA/D with local search.
Xiangtao Li & Shijing Ma. (2016) Multi-Objective Memetic Search Algorithm for Multi-Objective Permutation Flow Shop Scheduling Problem. IEEE Access 4, pages 2154-2165.
Crossref
Xiangtao Li & Mingjie Li. (2015) Multiobjective Local Search Algorithm-Based Decomposition for Multiobjective Permutation Flow Shop Scheduling Problem. IEEE Transactions on Engineering Management 62:4, pages 544-557.
Crossref
Kun Zheng, Dunbing Tang, Adriana Giret, Wenbin Gu & Xing Wu. (2015) Dynamic shop floor re-scheduling approach inspired by a neuroendocrine regulation mechanism. Proceedings of the Institution of Mechanical Engineers, Part B: Journal of Engineering Manufacture 229:1_suppl, pages 121-134.
Crossref
Mehmet Mutlu Yenisey & Betul Yagmahan. (2014) Multi-objective permutation flow shop scheduling problem: Literature review, classification and current trends. Omega 45, pages 119-135.
Crossref
Sheng Su, Haijie Yu, Zhenghua Wu & Wenhong Tian. (2013) A distributed coevolutionary algorithm for multiobjective hybrid flowshop scheduling problems. The International Journal of Advanced Manufacturing Technology 70:1-4, pages 477-494.
Crossref
Michele Ciavotta, Gerardo Minella & Rubén Ruiz. (2013) Multi-objective sequence dependent setup times permutation flowshop: A new algorithm and a comprehensive study. European Journal of Operational Research 227:2, pages 301-313.
Crossref
Nikos Giannopoulos, Vasilis C. Moulianitis & Andreas C. Nearchou. (2012) Multi-objective optimization with fuzzy measures and its application to flow-shop scheduling. Engineering Applications of Artificial Intelligence 25:7, pages 1381-1394.
Crossref
M.K. Lim & Z. Zhang. (2012) A multi-agent system using iterative bidding mechanism to enhance manufacturing agility. Expert Systems with Applications 39:9, pages 8259-8273.
Crossref
Gerardo Minella, Rubén Ruiz & Michele Ciavotta. (2011) Restarted Iterated Pareto Greedy algorithm for multi-objective flowshop scheduling problems. Computers & Operations Research 38:11, pages 1521-1533.
Crossref
Carman K. M. Lee, Danping Lin, William Ho & Zhang Wu. (2011) Design of a genetic algorithm for bi-objective flow shop scheduling problems with re-entrant jobs. The International Journal of Advanced Manufacturing Technology 56:9-12, pages 1105-1113.
Crossref
Zhe Wei, Yi-xiong Feng, Jian-rong Tan, Jin-long Wang & Zhong-kai Li. (2008) Multi-objective performance optimal design of large-scale injection molding machine. The International Journal of Advanced Manufacturing Technology 41:3-4, pages 242-249.
Crossref

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.