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首页> 外文期刊>International Journal of Simulation Modelling >OPTIMIZATION OF DYNAMIC AND MULTI-OBJECTIVE FLEXIBLE JOB-SHOP SCHEDULING BASED ON PARALLEL HYBRID ALGORITHM
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OPTIMIZATION OF DYNAMIC AND MULTI-OBJECTIVE FLEXIBLE JOB-SHOP SCHEDULING BASED ON PARALLEL HYBRID ALGORITHM

机译:基于并行混合算法的动态和多目标灵活作业店调度优化

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摘要

This paper aims to develop a dynamic, real-time scheduling strategy under interference that can minimize the negative impact of interference on production scheduling without sacrificing the production efficiency. Taking the minimal cost and makespan as the objectives of the optimization function, the author put forward a parallel hybrid optimization algorithm for production rescheduling under interference, aiming to strike a balance between processing cost and scheduling disturbance. The benchmark test results show that the proposed algorithm achieved better accuracy than the NSGA-II and the AMOSA, and its accuracy has nothing to do with the distribution shape of the objective function or the continuity of the interference. In other words, the proposed algorithm enjoys strong computing stability. In the simulation tests, the proposed algorithm reached the global convergence state before reaching the maximum runtime, and consumed less time than the contrastive algorithms under the same problem scale. The research findings shed new light on the optimal scheduling of multi-objective FJSP under disturbance.
机译:本文旨在在干扰下开发动态,实时调度策略,可以最大限度地减少干扰对生产调度的负面影响,而不会牺牲生产效率。以最小的成本和Mapspan为目标优化功能的目标,提出了一种平行的混合优化算法在干扰下进行生产重新安排,旨在在处理成本和调度干扰之间取得平衡。基准测试结果表明,该算法比NSGA-II和Amosa实现了更好的准确性,其精度与目标函数的分布形状或干扰的连续性无关。换句话说,所提出的算法具有很强的计算稳定性。在模拟测试中,所提出的算法在达到最大运行时达到全局会聚状态,并且在相同的问题规模下消耗比对比度算法的时间较少。研究发现揭示了扰动下多目标FJSP的最佳调度。

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