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TWO EFFICIENT HYBRID METAHEURISTIC METHODS FOR SOLVING THE LOAD BALANCE PROBLEM

机译:解决载荷平衡问题的两种有效的混合变元方法

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摘要

In this paper we consider a discrete Load Balance location problem (LOBA). We propose two efficient hybrid metaheuristic methods for solving the LOBA problem: a combination of reduced and standard variable neighborhood search methods (RVNS-VNS), and hybridization of genetic algorithm and VNS approach (GA-VNS). The proposed hybrid methods are first benchmarked and compared on existing test problems for the LOBA problem with up to 100 customers and potential suppliers. In order to test effectiveness of the proposed methods, we modify some large-scale instances from the literature with up to 402 customers and potential suppliers. Exhaustive computational experiments show that proposed hybrid methods quickly reach all known optimal solutions, and provide solutions on large-scale problem instances in short CPU times. Regarding solution quality and running times, we conclude that the proposed GA-VNS approach outperforms other considered methods for solving the LOBA problem.
机译:在本文中,我们考虑了离散负载平衡位置问题(LOBA)。我们提出了两种有效的混合启发式方法来解决LOBA问题:归约和标准变量邻域搜索方法(RVNS-VNS)的组合,以及遗传算法和VNS方法的混合方法(GA-VNS)。首先对提出的混合方法进行基准测试,并与多达100个客户和潜在供应商的LOBA问题的现有测试问题进行比较。为了测试所提出方法的有效性,我们从文献中修改了一些具有402个客户和潜在供应商的大型实例。详尽的计算实验表明,提出的混合方法可以快速达到所有已知的最佳解决方案,并在较短的CPU时间内为大规模问题实例提供解决方案。关于解决方案质量和运行时间,我们得出结论,所提出的GA-VNS方法优于解决LOBA问题的其他方法。

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