<b>A hybrid approach based on genetic algorithm and nearest neighbor heuristic for solving the capacitated vehicle routing problem

  • Stanley Jefferson de Araújo Lima Universidade Nove de Julho
  • Sidnei Alves de Araújo Universidade Nove de Julho
  • Pedro Henrique Triguis Schimit Universidade Nove de Julho
Keywords: capacitated vehicle routing problem, genetic algorithms, nearest neighbor, Gillett & Miller, downhill, complex networks.

Abstract

This work presents a hybrid approach called GA-NN for solving the Capacitated Vehicle Routing Problem (CVRP) using Genetic Algorithms (GA) and Nearest Neighbor heuristic (NN). The first technique was applied to determine the groups of customers to be served by the vehicles while the second is responsible to build the route of each vehicle. In addition, the heuristics of Gillett & Miller (GM) and Downhill (DH) were used, respectively, to generate the initial population of GA and to refine the solutions provided by GA. In the results section, we firstly present experiments demonstrating the performance of the NN heuristic for solving the Shortest Path and Traveling Salesman problems. The results obtained in such experiments constitute the main motivation for proposing the GA-NN. The second experimental study shows that the proposed hybrid approach achieved good solutions for instances of CVRP widely known in the literature, with low computational cost. It also allowed us to evidence that the use of GM and DH helped the hybrid GA-NN to converge on promising points in the search space, with a small number of generations.

 

Downloads

Download data is not yet available.

Author Biography

Stanley Jefferson de Araújo Lima, Universidade Nove de Julho

Informatics and Knowledge Management Graduate Program.

Published
2018-04-26
How to Cite
Lima, S. J. de A., Araújo, S. A. de, & Schimit, P. H. T. (2018). <b&gt;A hybrid approach based on genetic algorithm and nearest neighbor heuristic for solving the capacitated vehicle routing problem. Acta Scientiarum. Technology, 40(1), e36708. https://doi.org/10.4025/actascitechnol.v40i1.36708
Section
Computer Science

 

0.8
2019CiteScore
 
 
36th percentile
Powered by  Scopus

 

 

0.8
2019CiteScore
 
 
36th percentile
Powered by  Scopus