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A constraint programming approach and a hybrid of genetic and K-means algorithms to solve the p-hub location-allocation problems

机译:约束编程方法和遗传和K-MEAC算法的混合,以解决P-Hub位置分配问题

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摘要

p-Hub location-allocation problem is one of the most interesting subjects in the location theory. Hubs act as switching points to reduce the transportation cost. In this study, two new solution methods, a constraint programming (CP) based model and a hybrid of k-means and genetic algorithm (KGA), are developed to generate exact and approximate solutions, respectively. The proposed CP formulation is more understandable and straightforward in comparison with the MIP model. The experimental results indicate that the CP model uses the memory of the computer (RAM) more efficiently, which enables us to solve the medium size problems. But, in terms of run time, this method cannot be superior to the MIP model. The CP formulation is also extended for the multi allocation p-hub location problem. K-means algorithm, a well-known algorithm for clustering data, is used to generate initial solutions of GA. Furthermore, a new adaptive crossover operator, which is based on the k-means algorithm, is proposed. The experimental results indicate that the KGA algorithm is superior to the GA, regarding time, objective value, and quality of solution measures.
机译:P-Hub位置分配问题是位置理论中最有趣的科目之一。集线器充当切换点,以降低运输成本。在本研究中,开发了两个新的解决方案方法,基于约束编程(CP)的模型和遗传算法(KGA)的混合,以分别产生精确和近似的解决方案。与MIP模型相比,所提出的CP配方更加易懂和简单。实验结果表明,CP模型更有效地使用计算机(RAM)的存储器,这使我们能够解决中尺寸问题。但是,就运行时间而言,此方法不能优于MIP模型。 CP配方也扩展了多分配P-Hub位置问题。 K-means算法是一种众所周知的用于聚类数据的算法,用于生成GA的初始解。此外,提出了一种基于K-Means算法的新的自适应交叉运算符。实验结果表明,KGA算法优于GA,关于时间,客观值和解决方案措施的质量。

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