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Combining probabilistic algorithms, Constraint Programming and Lagrangian Relaxation to solve the Vehicle Routing Problem
Authors:Daniel Guimarans  Rosa Herrero  Daniel Riera  Angel A. Juan  Juan Jos�� Ramos
Affiliation:1. Dpt. de Telecomunicaci?? i Enginyeria de Sistemes, Universitat Aut??noma de Barcelona (UAB), Cerdanyola del Vall??s, 08193, Barcelona, Spain
2. Universitat Oberta de Catalunya (UOC), Barcelona, Spain
Abstract:This paper presents an original hybrid approach to solve the Capacitated Vehicle Routing Problem (CVRP). The approach combines a Probabilistic Algorithm with Constraint Programming (CP) and Lagrangian Relaxation (LR). After introducing the CVRP and reviewing the existing literature on the topic, the paper proposes an approach based on a probabilistic Variable Neighbourhood Search (VNS) algorithm. Given a CVRP instance, this algorithm uses a randomized version of the classical Clarke and Wright Savings constructive heuristic to generate a starting solution. This starting solution is then improved through a local search process which combines: (a) LR to optimise each individual route, and (b) CP to quickly verify the feasibility of new proposed solutions. The efficiency of our approach is analysed after testing some well-known CVRP benchmarks. Benefits of our hybrid approach over already existing approaches are also discussed. In particular, the potential flexibility of our methodology is highlighted.
Keywords:
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