An efficient genetic algorithm for the uncapacitated R-allocation P-hub maximal covering problem

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Abstract

This paper deals with the Uncapacitated r-allocation p-hub Maximal Covering Problem (UrApHMCP) with a binary coverage criterion. This problem consists of choosing p hub locations from a set of nodes so as to maximize the total demand covered under the r-allocation strategy. The general assumption is that the transportation between the non-hub nodes is possible only via hub nodes, while each non-hub node is assigned to at most r hubs. An integer linear programming formulation of the UrApHMCP is presented and tested within the framework of a commercial CPLEX solver. In order to solve the problem on large scale hub instances that cannot be handled by the CPLEX, a Genetic Algorithm (GA) is proposed. The results of computational experiments on standard p-hub benchmark instances with up to 200 nodes demonstrate efficiency and effectiveness of the proposed GA method.

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Janković, O. (2018). An efficient genetic algorithm for the uncapacitated R-allocation P-hub maximal covering problem. Yugoslav Journal of Operations Research, 28(2), 201–218. https://doi.org/10.2298/yjor170120011j

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