4.6 Article

A cooperative coevolution algorithm for complex hybrid seru-system scheduling optimization

Journal

COMPLEX & INTELLIGENT SYSTEMS
Volume 7, Issue 5, Pages 2559-2576

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s40747-021-00432-8

Keywords

Hybrid seru-system; Cooperative coevolution; Estimation of distribution algorithm; Sub-space exploitation; Problem-specific local search

Funding

  1. National Science Fund for DistinguishedYoung Scholars of China [61525304]
  2. National Natural Science Foundation ofChina [61873328]

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This paper addresses a specific hybrid seru-system scheduling optimization problem and proposes an efficient cooperative coevolution algorithm to solve it. Specific sub-algorithms are designed for the three sub-problems of hybrid seru formation, seru scheduling, and flow line scheduling, with a cooperation coevolution mechanism for integrated algorithm by information sharing. Batch reassign rule and problem-specific local search methods are utilized to strengthen the algorithm's exploitation ability.
Under the current volatile business environment, the requirement of flexible production is becoming increasingly urgent. As an innovative production mode, seru-system with reconfigurability can overcome the lack of flexibility in traditional flow lines. Compared with pure seru-system, the hybrid seru-system composed of both serus and production lines is more practical for adapting to many production processes. This paper addresses a specific hybrid seru-system scheduling optimization problem (HSSOP), which includes three strongly coupled sub-problems, i.e., hybrid seru formation, seru scheduling and flow line scheduling. To minimize the makespan of the whole hybrid seru-system, we propose an efficient cooperative coevolution algorithm (CCA). To tackle three sub-problems, specific sub-algorithms are designed based on the characteristic of each sub-problem, i.e., a sub-space exploitation algorithm for hybrid seru formation, an estimation of distribution algorithm for seru scheduling, and a first-arrive-first-process heuristic for flow line scheduling. Since three sub-problems are coupled, a cooperation coevolution mechanism is proposed for the integrated algorithm by information sharing. Moreover, a batch reassign rule is designed to overcome the mismatch of partial solutions during cooperative coevolution. To enhance the exploitation ability, problem-specific local search methods are designed and embedded in the CCA. In addition to the investigation about the effect of parameter setting, extensive computational tests and comparisons are carried out which demonstrate the effectiveness and efficiency of the CCA in solving the HSSOP.

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