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Multi-center variable-scale search algorithm for combinatorial optimization problems with the multimodal property
Affiliation:1. Department of Electronics and Computer Science, Koszalin University of Technology, Sniadeckich 2, Koszalin, Poland;2. Institute of Computer Engineering, Control and Robotics, Wrocław University of Technology, Wroclaw, Poland;3. Department of Business Informatics, Warsaw University of Technology, Narbutta 85, 02-524 Warsaw, Poland
Abstract:Combinatorial optimization problems (COPs) are discrete problems arising from aerospace, bioinformatics, manufacturing, and other fields. One of the classic COPs is the scheduling problem. Moreover, these problems are usually multimodal optimization problems with a quantity of global and local optima. As a result, many search algorithms can easily become trapped into local optima. In this article, we propose a multi-center variable-scale search algorithm for solving both single-objective and multi-objective COPs. The algorithm consists of two distinct points. First, the multi-center strategy chooses several individuals with better performance as the only parents of the next generation, which means that there are a number of separate searching areas around the searching center. Second, the next generation of the population is produced by a variable-scale strategy with an exponential equation based on the searching center. The equation is designed to control the neighborhood scale, and adaptively realize the large-scale and small-scale searches at different search stages to balance the maintenance of diversity and convergence speed. In addition, an approach of adjusting centers is proposed concerning the number and distribution of centers for solving multi-objective COPs. Finally, the proposed algorithm is applied to three COPs, including the well-known flexible job shop scheduling problem, the unrelated parallel machine scheduling problem, and the test task scheduling problem. Both the single-objective optimization algorithm and the multi-objective optimization algorithm demonstrate competitive performance compared with existing methods.
Keywords:Multi-center strategy  Variable-scale search strategy  Recursive strategy  Multimodal property  Combinatorial optimization problems
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