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A memetic algorithm with novel semi-constructive evolution operators for permutation flowshop scheduling problem

机译:一种新型半建设性演化运营商的遗漏算法,用于排列流程调度问题

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This paper proposes a memetic algorithm (MA) with novel semi-constructive crossover and mutation operators (MASC) to minimize makespan in permutation flowshop scheduling problem (PFSP). MASC combines the strengths of genetic algorithm (GA), simulated annealing (SA), and Nawaz-Enscore-Ham (NEH) algorithm. The aim is to enhance GA in identifying promising areas in the search space, whose local optima will be subsequently located by SA. This is achieved by means of novel crossover and mutation operators that construct chromosomes by using two different types of genes: static and dynamic genes. MASC is tested on the well-known Taillard's benchmark instances. The proposed operators are compared with traditional operators. The results show that the proposed operators produce considerable improvements. These improvements reach up to 20.79% in the average relative error of best solution and 11.86% in the average relative error of average solution. MASC is compared with fourteen well-known and state-of-the-art algorithms. These algorithms include MA, whale optimization, ant colony optimization, particle swarm optimization, artificial bee colony, monkey search, and iterated greedy. The results show that MASC outperforms all the compared algorithms except three iterated greedy algorithms. Moreover, the improvement in the average relative error of best solution achieved on the best-so-far MA is 37.92%. Therefore, MASC can be considered as one of the best-so-far methods for PFSP. (C) 2020 Elsevier B.V. All rights reserved.
机译:本文提出了一种具有新型半建设性交叉和突变算子(MASC)的麦克算法(MA),以最大限度地减少置换流程调度问题(PFSP)中的MEPESPAN。 MASC结合了遗传算法(GA),模拟退火(SA)和Nawaz-Enscore-Ham(NEH)算法的优势。目的是增强遗传识别搜索空间中的承诺区域,其本地最佳随后将由SA位于SA。这是通过使用两种不同类型的基因构建染色体的新型交叉和突变算子来实现:静态和动态基因。在众所周知的Taillard的基准实例上测试了MASC。拟议的运营商与传统运营商进行比较。结果表明,该拟议的运营商产生了相当大的改进。这些改进在最佳解决方案的平均相对误差中达到高达20.79%,平均水溶液的平均相对误差为11.86%。将MASC与十四知名和最先进的算法进行比较。这些算法包括MA,鲸鱼优化,蚁群优化,粒子群优化,人造蜂殖民地,猴子搜索和迭代贪婪。结果表明,除了三个迭代的贪婪算法之外,MASC优越所有比较算法。此外,在最佳迄今为止最佳的最佳解决方案的平均相对误差的改善为37.92%。因此,MASC可以被认为是PFSP的最佳方法之一。 (c)2020 Elsevier B.V.保留所有权利。

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