Title
Approximating the Pareto-front of a planar bi-objective competitive facility location and design problem
Abstract
A bi-objective competitive facility location and design problem is considered. The problem of obtaining a complete representation of the efficient set and its corresponding Pareto-front has been previously tackled through exact general methods, but they require high computational effort. In this work, we propose a new evolutionary multi-objective optimization algorithm, named FEMOEA, which deals with the problem at hand in a fast and efficient way. It combines ideas from different multi-objective and single-objective optimization evolutionary algorithms, although it also incorporates new devices which help to reduce the computational requirements, and also to improve the quality of the provided solutions. The performance of the algorithm is analyzed by comparing it to other (meta)heuristics previously proposed in the literature. In particular, the reference algorithms MOEA/D, SPEA2 and NSGA-II have been considered. A comprehensive computational study shows that the new heuristic method outperforms, on average, the three heuristic algorithms. Additionally, it reduces, on average, the computing time of the exact methods by approximately 99%, and this offering high-quality discrete approximations of the true Pareto-front. HighlightsA new multi-objective evolutionary algorithm, called FEMOEA, is presented.Its aim is to obtain a discrete approximation of the Pareto-front of multi-objective optimization problems.It combines ideas from different multi-objective and single-objective optimization evolutionary algorithms.It also incorporates a new improving method and a new stopping rule. It has been applied to a hard-to-solve bi-objective continuous competitive facility location and design problem.Computational studies show that the new method outperforms, on average, both SPEA2 and NSGA-II.
Year
DOI
Venue
2015
10.1016/j.cor.2014.02.013
Computers & Operations Research
Keywords
Field
DocType
Competitive location,Franchise system,Nonlinear bi-objective optimization problem,Pareto-front,Evolutionary computation
Mathematical optimization,Heuristic,Evolutionary algorithm,Evolutionary computation,Algorithm,Multi-objective optimization,Facility location problem,Heuristics,Planar,Imperialist competitive algorithm,Mathematics
Journal
Volume
Issue
ISSN
62
C
0305-0548
Citations 
PageRank 
References 
5
0.42
13
Authors
5