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Evolving Dispatching Rules for Multi-objective Dynamic Flexible Job Shop Scheduling via Genetic Programming Hyper-heuristics

机译:遗传规划超启发式方法的多目标动态柔性作业车间调度调度规则的演化

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Dynamic flexible job shop scheduling (DFJSS) is one of the well-known combinational optimisation problems, which aims to handle machine assignment (routing) and operation sequencing (sequencing) simultaneously in dynamic environment. Genetic programming, as a hyper-heuristic method, has been successfully applied to evolve the routing and sequencing rules for DFJSS, and achieved promising results. In the actual production process, it is necessary to get a balance between several objectives instead of simply focusing only one objective. No existing study considered solving multi-objective DFJSS using genetic programming. In order to capture multi-objective nature of job shop scheduling and provide different trade-offs between conflicting objectives, in this paper, two well-known multi-objective optimisation frameworks, i.e. non-dominated sorting genetic algorithm II (NSGA-II) and strength Pareto evolutionary algorithm 2 (SPEA2), are incorporated into the genetic programming hyper-heuristic method to solve the multi-objective DFJSS problem. Experimental results show that the strategy of NSGA-II incorporated into genetic programming hyper-heuristic performs better than SPEA2-based GPHH, as well as the weighted sum approaches, in the perspective of both training performance and generalisation.
机译:动态灵活的作业车间调度(DFJSS)是众所周知的组合优化问题之一,其目的是在动态环境中同时处理机器分配(路由)和操作排序(排序)。遗传编程作为一种超启发式方法,已成功应用于进化DFJSS的路由和排序规则,并取得了可喜的成果。在实际生产过程中,有必要在多个目标之间取得平衡,而不是仅仅关注一个目标。没有现有的研究考虑使用遗传编程来解决多目标DFJSS。为了捕获作业车间调度的多目标性质并在冲突目标之间提供不同的折衷,本文提出了两个著名的多目标优化框架,即非主导排序遗传算法II(NSGA-II)和遗传算法超启发式方法中引入了强度帕累托进化算法2(SPEA2),以解决多目标DFJSS问题。实验结果表明,从训练性能和泛化角度来看,将NSGA-II纳入遗传编程超启发式策略的性能优于基于SPEA2的GPHH以及加权和方法。

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