Multitype Maximal Covering Location Problems: Hybridizing discrete and continuous problems
Metadatos
Afficher la notice complèteDate
2021-11-29Referencia bibliográfica
ARTICLE IN PRESS: V. Blanco, R. Gázquez and F. Saldanha-da-Gama. Multitype Maximal Covering Location Problems: Hybridizing discrete and continuous problems. European Journal of Operational Research xxx (xxxx) xxx: [https://doi.org/10.1016/j.ejor.2022.10.037]
Patrocinador
Spanish Ministerio de Ciencia e Innovación, AEI/FEDER grant number PID2020-114594GBC21; Junta de Andalucía projects P18-FR- 1422/2369; FEDERUS-1256951; B-FQM-322-UGR20; CEI-3-FQM331; Netmeet- Data (Fundación BBVA 2019); MAG-Maria de Maeztu grant CEX2020-001105-M /AEI /10.13039/501100011033; Spanish Ministry of Education and Science grant number PEJ2018- 002962-A; grant UIDB/04561/2020 from National Funding from FCT|Fundaçao para a Ciencia e Tecnologia, PortugalRésumé
This paper introduces a general modeling framework for a multi-type maximal
covering location problem in which the position of facilities in different metric spaces are simultaneously
decided to maximize the demand generated by a set of points. From the need of
intertwining location decisions in discrete and in continuous sets, a general hybridized problem
is considered in which some types of facilities are to be located in finite sets and the others
in continuous metric spaces. A natural non-linear model is proposed for which an integer linear
programming reformulation is derived. A branch-and-cut algorithm is developed for better
tackling the problem. The study proceeds considering the particular case in which the continuous
facilities are to be located in the Euclidean plane. In this case, taking advantage from
some geometrical properties it is possible to propose an alternative integer linear programming
model. The results of an extensive battery of computational experiments performed to assess
the methodological contribution of this work is reported on. The data consists of up to 920
demand nodes using real geographical and demographic data.