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An iterated local search heuristic for multi-capacity bin packing and machine reassignment problems

机译:针对多容量装箱和机器重新分配问题的迭代本地搜索启发式方法

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摘要

This paper proposes an efficient Multi-Start Iterated Local Search for Packing Problems (MS-ILS-PPs) metaheuristic for Multi-Capacity Bin Packing Problems (MCBPP) and Machine Reassignment Problems (MRP). The MCBPP is a generalization of the classical bin-packing problem in which the machine (bin) capacity and task (item) sizes are given by multiple (resource) dimensions. The MRP is a challenging and novel optimization problem, aimed at maximizing the usage of available machines by reallocating tasks/processes among those machines in a cost-efficient manner, while fulfilling several capacity, con-flict, and dependency-related constraints. The proposed MS-1LS-PP approach relies on simple neighbor-hoods as well as problem-tailored shaking procedures. We perform computational experiments on MRP benchmark instances containing between 100 and 50,000 processes. Near-optimum multi-resource allocation and scheduling solutions are obtained while meeting specified processing-time requirements (on the order of minutes). In particular, for 9/28 instances with more than 1000 processes, the gap between the solution value and a lower bound measure is smaller than 0.1%. Our optimization method is also applied to solve classical benchmark instances for the MCBPP, yielding the best known solutions and optimum ones in most cases. In addition, several upper bounds for non-solved problems were improved.
机译:本文提出了一种有效的针对包装问题(MS-ILS-PPs)的多起点迭代局部搜索(MS-ILS-PPs),用于多容量装箱问题(MCBPP)和机器重新分配问题(MRP)。 MCBPP是经典装箱问题的概括,其中机器(箱)的容量和任务(项目)的大小由多个(资源)维度给出。 MRP是一个富有挑战性的新颖优化问题,旨在通过以具有成本效益的方式在那些机器之间重新分配任务/过程来最大化可用机器的使用率,同时满足一些容量,冲突和与依赖相关的约束。提出的MS-1LS-PP方法依赖于简单的邻居以及问题量身定制的摇动程序。我们对包含100到50,000个进程的MRP基准实例执行计算实验。在满足指定的处理时间要求(以分钟为单位)的同时,可以获得接近最佳的多资源分配和调度解决方案。特别是,对于9/28个实例的处理数量超过1000,解决方案值和下限度量之间的差距小于0.1%。我们的优化方法也用于求解MCBPP的经典基准实例,从而在大多数情况下产生最著名的解决方案和最佳解决方案。此外,还改进了一些未解决问题的上限。

著录项

  • 来源
    《Expert Systems with Application》 |2013年第13期|5266-5275|共10页
  • 作者单位

    LUNAM Universite Ecole des Mines de Nantes, IRCCyN, 4 rue Alfred Kastler, 44300 Nantes, France,CIRRELT, Departement de Mathimatiques et de Genie Industriel, Ecole Polytechnique de Montreal, Montreal, Canada H3C 3A7;

    CIRRELT, Departement d'informatique et de recherche operationnelle, Universite de Montreal, Montreal, Canada H3C 3J7,institut Charles Delaunay, Universite de Technologie de Troyes, 10010 Troyes, France;

    institut Charles Delaunay, Universite de Technologie de Troyes, 10010 Troyes, France;

    Universidade Federal Fluminense, Instituto de Computacao, Rua Passo da Pdtria 156, Bloco E-3°andar, Sao Domingos, Niteroi, RJ 24210-240, Brazil;

    Universidade Federal Fluminense, Instituto de Computacao, Rua Passo da Pdtria 156, Bloco E-3°andar, Sao Domingos, Niteroi, RJ 24210-240, Brazil;

    Universidade Federal da Paraiba, Departamento de Engenharia de Producao, Centra de Tecnologia, Campus I - Bloco G, Cidade Universitaria, Joao Pessoa, PB 58051-970, Brazil;

    LUNAM Universite Ecole des Mines de Nantes, IRCCyN, 4 rue Alfred Kastler, 44300 Nantes, France;

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

    Metaheuristics; Iterated local searchp; Multi-capacity bin packing; Machine reassignment;

    机译:元启发法;迭代本地搜索;多容量垃圾箱包装;机器重新分配;

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