Citizen centric optimal electric vehicle charging stations locations in
a full city: case of Malaga
- URL: http://arxiv.org/abs/2109.04975v1
- Date: Fri, 10 Sep 2021 16:19:56 GMT
- Title: Citizen centric optimal electric vehicle charging stations locations in
a full city: case of Malaga
- Authors: Christian Cintrano, Jamal Toutouh, and Enrique Alba
- Abstract summary: Two metaheuristics are applied to address the relying optimization problem: a genetic algorithm (GA) and a variable neighborhood search (VNS)
The experimental analysis over a realistic scenario of Malaga city, Spain, shows that the metaheuristics are able to find competitive solutions which dramatically improve the actual installation of the stations in Malaga.
- Score: 8.204924070199864
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This article presents the problem of locating electric vehicle (EV) charging
stations in a city by defining the Electric Vehicle Charging Stations Locations
(EV-CSL) problem. The idea is to minimize the distance the citizens have to
travel to charge their vehicles. EV-CSL takes into account the maximum number
of charging stations to install and the electric power requirements. Two
metaheuristics are applied to address the relying optimization problem: a
genetic algorithm (GA) and a variable neighborhood search (VNS). The
experimental analysis over a realistic scenario of Malaga city, Spain, shows
that the metaheuristics are able to find competitive solutions which
dramatically improve the actual installation of the stations in Malaga. GA
provided statistically the best results.
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