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Hybrid Genetic Bees Algorithm applied to single machine scheduling with earliness and tardiness penalties

机译:混合遗传蜜蜂算法应用于单机调度的提前与拖延惩罚

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摘要

This paper presents a hybrid Genetic-Bees Algorithm based optimised solution for the single machine scheduling problem. The enhancement of the Bees Algorithm (BA) is conducted using the Genetic Algorithm's (GA's) operators during the global search stage. The proposed enhancement aims to increase the global search capability of the BA gradually with new additions. Although the BA has very successful implementations on various type of optimisation problems, it has found that the algorithm suffers from weak global search ability which increases the computational complexities on NP-hard type optimisation problems e.g. combinatorial/permutational type optimisation problems. This weakness occurs due to using a simple global random search operation during the search process. To reinforce the global search process in the BA, the proposed enhancement is utilised to increase exploration capability by expanding the number of fittest solutions through the genetical variations of promising solutions. The hybridisation process is realised by including two strategies into the basic BA, named as "reinforced global search" and "jumping function" strategies. The reinforced global search strategy is the first stage of the hybridisation process and contains the mutation operator of the GA. The second strategy, jumping function strategy, consists of four GA operators as single point crossover, multipoint crossover, mutation and randomisation. To demonstrate the strength of the proposed solution, several experiments were carried out on 280 well-known single machine benchmark instances, and the results are presented by comparing to other well-known heuristic algorithms. According to the experiments, the proposed enhancements provides better capability to basic BA to jump from local minima, and GBA performed better compared to BA in terms of convergence and the quality of results. The convergence time reduced about 60% with about 30% better results for highly constrained jobs.
机译:本文针对单机调度问题提出了一种基于混合遗传-蜜蜂算法的优化解决方案。在全局搜索阶段,使用遗传算法(GA)运算符对Bees算法(BA)进行了增强。拟议的增强功能旨在通过增加新的功能逐步提高广管局的全球搜索能力。尽管BA在各种类型的优化问题上都有非常成功的实现,但已发现该算法的全局搜索能力较弱,这增加了NP难类型优化问题(例如NP)的计算复杂性。组合/排列类型优化问题。由于在搜索过程中使用了简单的全局随机搜索操作,因此出现了此缺点。为了加强BA中的全局搜索过程,通过通过有前途的解决方案的遗传变异扩展最适合的解决方案的数量,利用提议的增强功能来提高探索能力。通过将两种策略包括在基本BA中来实现杂交过程,这两种策略分别称为“增强全局搜索”和“跳跃功能”策略。增强的全局搜索策略是杂交过程的第一步,其中包含GA的变异算子。第二种策略是跳跃函数策略,由四个GA运算符组成,如单点交叉,多点交叉,变异和随机化。为了证明所提出解决方案的强度,我们在280个著名的单机基准测试实例上进行了几次实验,并与其他著名的启发式算法进行比较,给出了结果。根据实验,所提出的增强功能为基本BA从局部最小值跳出提供了更好的功能,并且在收敛和结果质量方面,GBA与BA相比表现更好。对于高度受限的工作,收敛时间减少了约60%,而结果却好了约30%。

著录项

  • 来源
    《Computers & Industrial Engineering》 |2017年第11期|842-858|共17页
  • 作者单位

    Innovation Centre, College of Engineering, Mathematics and Physical Sciences, Streatham Campus, University of Exeter, EX4 4QJ, Exeter, UK;

    School of Engineering, University of Basilicata, Via Ateneo Lucano 10,85100 Potenza, Italy;

    High Value Manufacturing Croup, School of Engineering, Cardiff University, CF24 3AA Cardiff, UK;

    School of Mechanical Engineering, University of Birmingham, B15 2TT, Birmingham, UK;

    Faculty of Engineering, Environment and Computing, Coventry University, Priory Street, CV1 5FB, Coventry, UK;

    Department of Industrial Engineering, University of Salerno, Fisciano, Italy;

    Dept. of Industrial and Information Engineering, Second University of Naples, Via Roma 29, 81031 Aversa, Italy;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Swarm-based optimisation; Bees Algorithm (BA); Genetic Bees Algorithm (GBA); Single Machine Scheduling Problem (SMSP);

    机译:基于群体的优化;蜜蜂算法(BA);遗传蜜蜂算法(GBA);单机调度问题(SMSP);

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