A Random Key based Estimation of Distribution Algorithm for the Permutation Flowshop Scheduling Problem

M. Ayodele, J. Mccall, Olivier Regnier-Coudert, Liam Bowie
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引用次数: 10

Abstract

Random Key (RK) is an alternative representation for permutation problems that enables application of techniques generally used for continuous optimisation. Although the benefit of RKs to permutation optimisation has been shown, its use within Estimation of Distribution Algorithms (EDAs) has been a challenge. Recent research proposing a RK-based EDA (RK-EDA) has shown that RKs can produce competitive results with state of the art algorithms. Following promising results on the Permutation Flowshop Scheduling Problem, this paper presents an analysis of RK-EDA for optimising the total flow time. Experiments show that RK-EDA outperforms other permutation-based EDAs on instances of large dimensions. The difference in performance between RK-EDA and the state of the art algorithms also decreases when the problem difficulty increases.
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基于随机密钥估计的置换流水车间调度算法
随机密钥(RK)是排列问题的另一种表示,它使应用通常用于连续优化的技术成为可能。虽然rk对排列优化的好处已经被证明,但它在分布估计算法(EDAs)中的使用一直是一个挑战。最近提出基于rk的EDA (RK-EDA)的研究表明,rk可以与最先进的算法产生具有竞争力的结果。在置换流水车间调度问题上取得了令人满意的结果之后,本文提出了RK-EDA优化总流时间的分析方法。实验表明,RK-EDA在大维度的实例上优于其他基于排列的eda。当问题难度增加时,RK-EDA与最先进算法之间的性能差异也会减小。
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