Litcius/Paper detail

Adaptive Elitist Genetic Algorithm With Improved Neighbor Routing Initialization for Electric Vehicle Routing Problems

Yanfei Zhu, Kwang Y. Lee, Yonghua Wang

2021IEEE Access40 citationsDOIOpen Access PDF

Abstract

This paper applies the elitist genetic algorithm to the electric vehicle routing problem with time window. In initialization, the paper proposes an improved neighbor routing initialization method for adaptive elitist genetic algorithm. The improved neighbor routing method is used to select the nearest EV customer as the next route to be scheduled and make the route start from the suitable first customer in the initialization of the elitist GA. It makes the scheduled route begins with a neighboring directionality, which can be inherited in selection, crossover, and mutation operations. For effective convergence, new adaptive crossover probability and mutation probability are provided to make the algorithm converge faster. Experimental studies on randomly distributed customers and Solomon benchmark cases show the effective performance of the algorithm. The algorithm is demonstrated in the simulation of a U.S. Postal Service system.

Topics & Concepts

InitializationCrossoverComputer scienceVehicle routing problemBenchmark (surveying)Genetic algorithmDestination-Sequenced Distance Vector routingMathematical optimizationAlgorithmConvergence (economics)MutationRouting (electronic design automation)Link-state routing protocolArtificial intelligenceRouting protocolMathematicsMachine learningComputer networkGeodesyEconomicsProgramming languageGeographyGeneChemistryEconomic growthBiochemistryVehicle Routing Optimization MethodsMetaheuristic Optimization Algorithms ResearchAdvanced Multi-Objective Optimization Algorithms