6533b861fe1ef96bd12c42e3

RESEARCH PRODUCT

A hybrid evolution strategy for the open vehicle routing problem

George IoannouChristos D. TarantilisOlli BräysyPanagiotis P. Repoussis

subject

education.field_of_studyMathematical optimizationGeneral Computer Sciencebusiness.industryComputer scienceOffspringPopulationManagement Science and Operations ResearchTabu searchSearch algorithmModeling and SimulationVehicle routing problemCombinatorial optimizationLocal search (optimization)Guided Local SearchArtificial intelligencebusinesseducationEvolution strategyMetaheuristic

description

This paper presents a hybrid evolution strategy (ES) for solving the open vehicle routing problem (OVRP), which is a well-known combinatorial optimization problem that addresses the service of a set of customers using a homogeneous fleet of non-depot returning capacitated vehicles. The objective is to minimize the fleet size and the distance traveled. The proposed solution method manipulates a population of @m individuals using a (@m+@l)-ES; at each generation, a new intermediate population of @l offspring is produced via mutation, using arcs extracted from parent individuals. The selection and combination of arcs is dictated by a vector of strategy parameters. A multi-parent recombination operator enables the self-adaptation of the mutation rates based on the frequency of appearance of each arc and the diversity of the population. Finally, each new offspring is further improved via a memory-based trajectory local search algorithm, while an elitist scheme guides the selection of survivors. Experimental results on well-known benchmark data sets demonstrate the competitiveness of the proposed population-based hybrid metaheuristic algorithm.

https://doi.org/10.1016/j.cor.2008.11.003