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A machine-learning based memetic algorithm for the multi-objective permutation flowshop scheduling problem
Affiliation:1. Departmento de Ingeniería Industrial, Pontificia Universidad Javeriana, Bogotá, Colombia;2. IN3 – Computer Science, Multimedia and Telecommunications Department, Open University of Catalonia, Barcelona, Spain;3. Doctorado en Logística y Gestión de Cadenas de Suministros, Universidad de La Sabana, Chía, Colombia;1. School of Information and Control Engineering, China University of Mining and Technology, Xuzhou 221116, China;2. School of Information Science and Technology, Qingdao University of Science and Technology, Qingdao 266061, China;3. School of Computer Science, Liaocheng University, Liaocheng 252059, China;4. School of Mathematics and Statistics, Xian Jiaotong University, Xian 710049, China
Abstract:In recent years, the historical data during the search process of evolutionary algorithms has received increasing attention from many researchers, and some hybrid evolutionary algorithms with machine-learning have been proposed. However, the majority of the literature is centered on continuous problems with a single optimization objective. There are still a lot of problems to be handled for multi-objective combinatorial optimization problems. Therefore, this paper proposes a machine-learning based multi-objective memetic algorithm (ML-MOMA) for the discrete permutation flowshop scheduling problem. There are two main features in the proposed ML-MOMA. First, each solution is assigned with an individual archive to store the non-dominated solutions found by it and based on these individual archives a new population update method is presented. Second, an adaptive multi-objective local search is developed, in which the analysis of historical data accumulated during the search process is used to adaptively determine which non-dominated solutions should be selected for local search and how the local search should be applied. Computational results based on benchmark problems show that the cooperation of the above two features can help to achieve a balance between evolutionary global search and local search. In addition, many of the best known Pareto fronts for these benchmark problems in the literature can be improved by the proposed ML-MOMA.
Keywords:Multi-objective permutation flowshop scheduling  Memetic algorithm  Data analysis
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