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A soft-computing Pareto-based meta-heuristic algorithm for a multi-objective multi-server facility location problem

机译:一种基于Pareto的软计算元启发式算法,用于多目标多服务器设施定位问题

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摘要

In this paper, a novel multi-objective location model within multi-server queuing framework is proposed, in which facilities behave as M/M/m queues. In the developed model of the problem, the constraints of selecting the nearest-facility along with the service level restriction are considered to bring the model closer to reality. Three objective functions are also considered including minimizing (I) sum of the aggregate travel and waiting times, (II) maximum idle time of all facilities, and (III) the budget required to cover the costs of establishing the selected facilities plus server staffing costs. Since the developed model of the problem is of an NP-hard type and inexact solutions are more probable to be obtained, soft computing techniques, specifically evolutionary computations, are generally used to cope with the lack of precision. From different terms of evolutionary computations, this paper proposes a Pareto-based meta-heuristic algorithm called multi-objective harmony search (MOHS) to solve the problem. To validate the results obtained, two popular algorithms including non-dominated sorting genetic algorithm (NSGA-II) and non-dominated ranking genetic algorithm (NRGA) are utilized as well. In order to demonstrate the proposed methodology and to compare the performances in terms of Pareto-based solution measures, the Taguchi approach is first utilized to tune the parameters of the proposed algorithms, where a new response metric named multi-objective coefficient of variation (MOCV) is introduced. Then, the results of implementing the algorithms on some test problems show that the proposed MOHS outperforms the other two algorithms in terms of computational time.
机译:本文提出了一种新的多服务器排队框架内的多目标位置模型,其中设施表现为M / M / m队列。在开发的问题模型中,考虑了选择最近设施的约束以及服务水平限制,以使模型更接近实际。还考虑了三个目标功能,包括最小化(I)总计旅行和等待时间的总和,(II)所有设施的最大闲置时间,以及(III)覆盖建立所选设施的成本以及服务器人员成本所需的预算。由于已开发的问题模型是NP硬类型的,并且很可能会获得不精确的解决方案,因此通常使用软计算技术(尤其是演化计算)来应对精度不足的问题。从进化计算的不同角度出发,提出了一种基于帕累托的元启发式算法,称为多目标和声搜索(MOHS),以解决该问题。为了验证获得的结果,还使用了两种流行的算法,包括非支配排序遗传算法(NSGA-II)和非支配排序遗传算法(NRGA)。为了演示所提出的方法并比较基于Pareto的解决方案的性能,首先使用Taguchi方法来调整所提出算法的参数,其中使用了一种新的响应度量,称为多目标变异系数(MOCV) )的介绍。然后,在一些测试问题上实现算法的结果表明,在计算时间方面,提出的MOHS优于其他两种算法。

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