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Heuristics in Permutation GOMEA for Solving the Permutation Flowshop Scheduling Problem

机译:排列GOMEA中的启发式算法解决排列Flowshop调度问题

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The recently introduced permutation Gene-pool Optimal Mixing Evolutionary Algorithm (GOMEA) has shown to be an effective Model Based Evolutionary Algorithm (MBEA) for permutation problems. So far, permutation GOMEA has only been used in the context of Black-Box Optimization (BBO). This paper first shows that permutation GOMEA can be improved by incorporating a constructive heuristic to seed the initial population. Secondly, the paper shows that hybridizing with job swapping neighborhood search does not lead to consistent improvement. The seeded permutation GOMEA is compared to a state-of-the-art algorithm (VNS4) for solving the Permutation Flow-shop Scheduling Problem (PFSP). Both unstructured and structured instances are used in the benchmarks. The results show that permutation GOMEA often outperforms the VNS4 algorithm for the PFSP with the total fiowtime criterion.
机译:最近推出的置换基因池最优混合进化算法(GOMEA)已显示是解决置换问题的一种有效的基于模型的进化算法(MBEA)。到目前为止,置换GOMEA仅在黑盒优化(BBO)的背景下使用。本文首先表明,可以通过采用建设性的启发式方法对初始种群进行播种来改善排列GOMEA。其次,论文表明,与工作调换邻域搜索相结合并不能带来持续的改善。将种子排列GOMEA与用于解决排列流水车间调度问题(PFSP)的最新算法(VNS4)进行比较。基准测试中使用了非结构化实例和结构化实例。结果表明,在总流量时间准则下,置换GOMEA通常优于PFSP的VNS4算法。

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