Title of article
Two memetic algorithms for heterogeneous fleet vehicle routing problems
Author/Authors
Prins، نويسنده , , Christian، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
13
From page
916
To page
928
Abstract
The vehicle routing problem (VRP) plays an important role in the distribution step of supply chains. From a depot with identical vehicles of limited capacity, it consists in determining a set of vehicle trips of minimum total length, to satisfy the demands of a set of customers. In general, the number of vehicles used is a decision variable. The heterogeneous fleet VRP (HFVRP or HVRP) is a natural generalization with several vehicle types, each type being defined by a capacity, a fixed cost, a cost per distance unit and a number of vehicles available. The vehicle fleet mix problem (VFMP) is a variant with an unlimited number of vehicles per type. This paper presents two memetic algorithms (genetic algorithms hybridized with a local search) able to solve both the VFMP and the HVRP. They are based on chromosomes encoded as giant tours, without trip delimiters, and on an optimal evaluation procedure which splits these tours into feasible trips and assigns vehicles to them. The second algorithm uses a distance measure in solution space to diversify the search. Numerical tests on standard VFMP and HFVRP instances show that the two methods, especially the one with distance measure, compete with published metaheuristics and improve several best-known solutions.
Keywords
vehicle routing , Heterogeneous fleet , Memetic algorithm , Fleet mix problem , Distribution , Metaheuristic
Journal title
Engineering Applications of Artificial Intelligence
Serial Year
2009
Journal title
Engineering Applications of Artificial Intelligence
Record number
2125163
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