基于高斯分布的布谷鸟搜索算法优化无容量设施选址问题

Mohammad Agung Nugroho, Eto Wuryanto, Kartono Faqih
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引用次数: 0

摘要

本研究的目的是评估基于高斯分布的布谷鸟搜索算法(GCS)在解决无容量设施选址问题(UFLP)中的能力。UFLP是一个优化问题,假设每个设施的服务客户数量没有限制,并且只允许一个设施为每个客户提供服务,那么有许多地点可以建立一个设施,以便它可以为许多客户提供服务。UFLP的目标函数是最小化在一个区域内建设设施和向客户提供服务的综合成本。UFLP属于np困难问题的范畴,其计算复杂度随着数据量的增加而增加。布谷鸟搜索算法(Cuckoo Search algorithm)是一种模拟布谷鸟繁殖行为的算法,已被广泛用于解决优化问题。为了克服布谷鸟搜索算法在计算时间和搜索精度方面的缺点,引入了GCS。GCS采用高斯分布代替了基于Levy分布的Levy Flight。在本研究中,GCS算法使用JavaScript实现,使用的数据集来自ORLib。研究结果表明,GCS算法在所有数据集上都能获得最优结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing Uncapacitated Facility Location Problem with Cuckoo Search Algorithm based on Gauss Distribution
The objective of this study was to assess the capability of the Gauss distribution-based Cuckoo Search algorithm (GCS) in solving the Uncapacitated Facility Location Problem (UFLP). UFLP is an optimization problem that there are number of locations available to be built a facility so that it can serve number of customers, assuming each facility has no limits to serve customers and only a single facility is allowed to provide services to each customer. The objective function of UFLP is to minimize the combined costs of constructing facilities in an area and providing services to customers. UFLP falls under the category of NP-Hard Problems, where the computation complexity increases with the size of the data. The Cuckoo Search algorithm, which mimics the breeding behavior of Cuckoo birds, has been extensively used to tackle optimization problems. GCS was introduced to overcome the weaknesses of Cuckoo Search algorithm in terms of computational time and search accuracy. GCS used Gaussian distribution instead of Levy Flight which based on Levy distribution. In this study, the GCS algorithm was implemented using JavaScript and the dataset used was obtained from ORLib. The research outcomes showed that the GCS algorithm could achieve optimal result in all dataset.
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