Hybrid data mining heuristics for the heterogeneous fleet vehicle routing problem
RAIRO - Operations Research - Recherche Opérationnelle, Tome 52 (2018) no. 3, pp. 661-690

Voir la notice de l'article provenant de la source Numdam

The vehicle routing problem consists of determining a set of routes for a fleet of vehicles to meet the demands of a given set of customers. The development and improvement of techniques for finding better solutions to this optimization problem have attracted considerable interest since such techniques can yield significant savings in transportation costs. The heterogeneous fleet vehicle routing problem is distinguished by the consideration of a heterogeneous fleet of vehicles, which is a very common scenario in real-world applications, rather than a homogeneous one. Hybrid versions of metaheuristics that incorporate data mining techniques have been applied to solve various optimization problems, with promising results. In this paper, we propose hybrid versions of a multi-start heuristic for the heterogeneous fleet vehicle routing problem based on the Iterated Local Search metaheuristic through the incorporation of data mining techniques. The results obtained in computational experiments show that the proposed hybrid heuristics demonstrate superior performance compared with the original heuristic, reaching better average solution costs with shorter run times.

Reçu le :
Accepté le :
DOI : 10.1051/ro/2017072
Classification : 90B06, 90C27, 90C59
Keywords: Hybrid metaheuristic, data mining, heterogeneous fleet vehicle routing problem

Rodrigues de Holanda Maia, Marcelo 1 ; Plastino, Alexandre 1 ; Vaz Penna, Puca Huachi 1

1
@article{RO_2018__52_3_661_0,
     author = {Rodrigues de Holanda Maia, Marcelo and Plastino, Alexandre and Vaz Penna, Puca Huachi},
     title = {Hybrid data mining heuristics for the heterogeneous fleet vehicle routing problem},
     journal = {RAIRO - Operations Research - Recherche Op\'erationnelle},
     pages = {661--690},
     publisher = {EDP-Sciences},
     volume = {52},
     number = {3},
     year = {2018},
     doi = {10.1051/ro/2017072},
     mrnumber = {3868439},
     zbl = {1405.90031},
     language = {en},
     url = {http://geodesic.mathdoc.fr/articles/10.1051/ro/2017072/}
}
TY  - JOUR
AU  - Rodrigues de Holanda Maia, Marcelo
AU  - Plastino, Alexandre
AU  - Vaz Penna, Puca Huachi
TI  - Hybrid data mining heuristics for the heterogeneous fleet vehicle routing problem
JO  - RAIRO - Operations Research - Recherche Opérationnelle
PY  - 2018
SP  - 661
EP  - 690
VL  - 52
IS  - 3
PB  - EDP-Sciences
UR  - http://geodesic.mathdoc.fr/articles/10.1051/ro/2017072/
DO  - 10.1051/ro/2017072
LA  - en
ID  - RO_2018__52_3_661_0
ER  - 
%0 Journal Article
%A Rodrigues de Holanda Maia, Marcelo
%A Plastino, Alexandre
%A Vaz Penna, Puca Huachi
%T Hybrid data mining heuristics for the heterogeneous fleet vehicle routing problem
%J RAIRO - Operations Research - Recherche Opérationnelle
%D 2018
%P 661-690
%V 52
%N 3
%I EDP-Sciences
%U http://geodesic.mathdoc.fr/articles/10.1051/ro/2017072/
%R 10.1051/ro/2017072
%G en
%F RO_2018__52_3_661_0
Rodrigues de Holanda Maia, Marcelo; Plastino, Alexandre; Vaz Penna, Puca Huachi. Hybrid data mining heuristics for the heterogeneous fleet vehicle routing problem. RAIRO - Operations Research - Recherche Opérationnelle, Tome 52 (2018) no. 3, pp. 661-690. doi: 10.1051/ro/2017072

Cité par Sources :