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An extended continuous estimation of distribution algorithm for solving the permutation flow-shop scheduling problem

机译:求解流动店调度问题的分配算法的扩展连续估计

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This article proposes an extended continuous estimation of distribution algorithm (ECEDA) to solve the permutation flow-shop scheduling problem (PFSP). In ECEDA, to make a continuous estimation of distribution algorithm (EDA) suitable for the PFSP, the largest order value rule is applied to convert continuous vectors to discrete job permutations. A probabilistic model based on a mixed Gaussian and Cauchy distribution is built to maintain the exploration ability of the EDA. Two effective local search methods, i.e. revolver-based variable neighbourhood search and Henon chaotic-based local search, are designed and incorporated into the EDA to enhance the local exploitation. The parameters of the proposed ECEDA are calibrated by means of a design of experiments approach. Simulation results and comparisons based on some benchmark instances show the efficiency of the proposed algorithm for solving the PFSP.
机译:本文提出了扩展的连续估计分布算法(ECEDA)来解决排列流程店调度问题(PFSP)。 在EcEDA中,为了连续估计适用于PFSP的分发算法(EDA),应用最大订单价值规则以将连续向量转换为离散的作业置换。 建立了一种基于混合高斯和Cauchy分布的概率模型,以维持EDA的勘探能力。 两个有效的本地搜索方法,即基于左轮手枪的可变邻域搜索和基于Henon Chaotic-Chanotic-Poundical搜索,被设计并结合到EDA中,以增强本地开发。 通过实验方法的设计校准所提出的EcEDA的参数。 基于一些基准实例的仿真结果与比较显示了求解PFSP的提出算法的效率。

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