A Parallel Genetic Algorithms for lob Shop Scheduling Problems

Job Shop 일정계획을 위한 병렬 유전 알고리즘

  • 박병주 (동아대학교 에이전트 기반 전자상거래팀(BK21)) ;
  • 김현수 (동아대학교 경영정보과학부)
  • Published : 2000.10.01

Abstract

The Job Shop Scheduling Problem(JSSP) is one of the most general and difficult of all traditional scheduling problems. The goal of this research is to develop an efficient scheduling method based on single genetic algorithm(SGA) and parallel genetic algorithm (PGA) to address JSSP. In this scheduling method, new genetic operator, generating method of initial population are developed and island model PGA are proposed. The scheduling method based on PGA are tested on standard benchmark JSSP. The results were compared with SGA and another GA-based scheduling method. The PGA search the better solution or improves average of solution in benchmark JSSP. Compared to traditional GA, the proposed approach yields significant improvement at a solution.

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