Swarm Intelligent Algorithm For Re-entrant Hybrid Flow shop Scheduling Problems

Zhonghua Han, Xutian Tian, Xiaoting Dong, Fanyi Xie
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引用次数: 4

Abstract

In order to solve re-entrant hybrid flowshop (RHFS) scheduling problems and establish simulations and processing models, this paper uses wolf pack algorithm (WPA) as global optimisation. For local assignment, it takes minimum remaining time rule. Scouting behaviours of wolf are changed in former optimisation by means of Levy flight, extending searching ranges and increasing rapidity of convergence. When it comes to local extremum of WPA, dynamic regenerating individuals with high similarity adds diversity. Hamming distance is used to judge individual similarity for increased quality of individuals, enhanced search performance of the algorithm in solution space and promoted evolutionary vitality. A painting workshop in a bus manufacture enterprise owns typical features of re-entrant hybrid flowshop. Regarding it as the algorithm applied target, this paper focuses on resolving this problem with dynamic wolf pack algorithm based on levy flight (LDWPA). Results show that LDWPA can solve re-entrant hybrid flowshop scheduling problems effectively.
可重入混合流水车间调度问题的群智能算法
为了解决可重入混合流车间(RHFS)调度问题,建立仿真和处理模型,采用狼群算法(WPA)进行全局优化。对于局部分配,采用最小剩余时间原则。通过Levy飞行,扩大搜索范围,提高收敛速度,改变了狼的侦察行为。对于WPA的局部极值,具有高相似性的动态再生个体增加了多样性。采用汉明距离来判断个体的相似度,提高了个体的质量,增强了算法在解空间中的搜索性能,提高了进化活力。某客车生产企业涂装车间具有典型的可再入式混合流车间特征。本文将其作为算法应用的目标,重点研究了基于levy flight的动态狼群算法(LDWPA)来解决这一问题。结果表明,LDWPA可以有效地解决可重入混合流水车间调度问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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