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An Estimation of Distribution Algorithm-Based Memetic Algorithm for the Distributed Assembly Permutation Flow-Shop Scheduling Problem

机译:分布式装配置换流水车间调度问题的基于分布算法的模因算法估计

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摘要

In this paper, an estimation of distribution algorithm (EDA)-based memetic algorithm (MA) is proposed for solving the distributed assembly permutation flow-shop scheduling problem (DAPFSP) with the objective to minimize the maximum completion time. A novel bi-vector-based method is proposed to represent a solution for the DAPFSP. In the searching phase of the EDA-based MA (EDAMA), the EDA-based exploration and the local-search-based exploitation are incorporated within the MA framework. For the EDA-based exploration phase, a probability model is built to describe the probability distribution of superior solutions. Besides, a novel selective-enhancing sampling mechanism is proposed for generating new solutions by sampling the probability model. For the local-search-based exploitation phase, the critical path of the DAPFSP is analyzed to avoid invalid searching operators. Based on the analysis, a critical-path-based local search strategy is proposed to further improve the potential solutions obtained in the EDA-based searching phase. Moreover, the effect of parameter setting is investigated based on the Taguchi method of design-of-experiment. Suitable parameter values are suggested for instances with different scales. Finally, numerical simulations based on 1710 benchmark instances are carried out. The experimental results and comparisons with existing algorithms show the effectiveness of the EDAMA in solving the DAPFSP. In addition, the best-known solutions of 181 instances are updated by the EDAMA.
机译:本文提出了一种基于分布估计算法(EDA)的模因算法(MA),用于解决分布式装配体置换流水车间调度问题(DAPFSP),目的是最大程度地减少最大完成时间。提出了一种新颖的基于双矢量的方法来表示DAPFSP的解决方案。在基于EDA的MA(EDAMA)的搜索阶段,将基于EDA的探索和基于本地搜索的开发纳入了MA框架。对于基于EDA的探索阶段,建立概率模型来描述高级解决方案的概率分布。此外,提出了一种新颖的选择性增强采样机制,通过对概率模型进行采样来生成新的解。对于基于本地搜索的开发阶段,分析了DAPFSP的关键路径,以避免无效的搜索运算符。在分析的基础上,提出了一种基于关键路径的局部搜索策略,以进一步提高在基于EDA的搜索阶段中获得的潜在解决方案。此外,基于实验设计的田口方法研究了参数设置的效果。对于不同比例的实例,建议使用合适的参数值。最后,基于1710个基准实例进行了数值模拟。实验结果和与现有算法的比较表明,EDAMA在解决DAPFSP方面是有效的。此外,EDAMA还更新了181个实例的最著名解决方案。

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