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Multi-neighborhood local search optimization for machine reassignment problem

机译:机器重新分配问题的多邻域本地搜索优化

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As the topic of the Google ROADEF/EURO Challenge 2012, machine reassignment problem (denoted as MRP) is an important optimization problem in load balance of cloud computing. Given a set of machines and a set of processes running on machines, the MRP aims at finding a best process -machine reassignment to improve the usage of machines while satisfying various hard constraints. In this paper, we present a metaheuristic algorithm based on multi-neighborhood local search (denoted as MNLS) for solving the MRP. Our MNLS algorithm consists of three primary and one auxiliary neighborhood structures, an efficient neighborhood partition search mechanism with respect to the three primary neighborhoods and a dynamic perturbation operator. Computational results tested on 30 benchmark instances of the ROADEF/EURO Challenge 2012 and comparisons with the results in the challenge and the literature demonstrate the efficacy of the proposed MNLS algorithm in terms of both effectiveness and efficiency. Furthermore, several key components of our MNLS algorithm are analyzed to gain an insight into it. (C) 2015 Elsevier Ltd. All rights reserved.
机译:作为Google ROADEF / EURO挑战2012的主题,机器重新分配问题(表示为MRP)是云计算负载平衡中的重要优化问题。给定一组机器和一组在机器上运行的进程,MRP旨在找到最佳的过程-机器重新分配,以在满足各种严格限制的同时提高机器的使用率。在本文中,我们提出了一种基于多邻域局部搜索(称为MNLS)的元启发式算法来求解MRP。我们的MNLS算法由三个主要和一个辅助邻域结构,一个针对三个主要邻域的有效邻域分区搜索机制以及一个动态扰动算子组成。在ROADEF / EURO Challenge 2012的30个基准实例上测试了计算结果,并与该挑战中的结果进行了比较,并从文献中证明了所提出的MNLS算法的有效性和效率。此外,分析了我们的MNLS算法的几个关键组件,以深入了解它。 (C)2015 Elsevier Ltd.保留所有权利。

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