Metaheuristic optimization algorithms for the optimal coordination of plug-in electric vehicle charging in distribution systems with distributed generation

•A method for the charging coordination of electric vehicles is proposed.•Optimization algorithms based on metaheuristics are developed.•A 449-node distribution system is used to test the proposed method. This paper proposes three metaheuristic optimization techniques to solve the plug-in electric v...

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Veröffentlicht in:Electric power systems research 2017-01, Vol.142, p.351-361
Hauptverfasser: Arias, Nataly Bañol, Franco, John F., Lavorato, Marina, Romero, Rubén
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Sprache:eng
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Zusammenfassung:•A method for the charging coordination of electric vehicles is proposed.•Optimization algorithms based on metaheuristics are developed.•A 449-node distribution system is used to test the proposed method. This paper proposes three metaheuristic optimization techniques to solve the plug-in electric vehicle (PEV) charging coordination problem in electrical distribution systems (EDSs). Optimization algorithms based on tabu search, greedy randomized adaptive search procedure, and a novel hybrid optimization algorithm are developed with the objective of minimizing the total operational costs of the EDS, considering the impact of charging the electric vehicle batteries during a specific time period. The proposed methodologies determine a charging schedule for the electric vehicle batteries considering priorities according to the PEV owners charging preferences. A 449-node system with two distributed generation units was used to demonstrate the efficiency of the proposed methodologies, taking into account different PEV penetration levels. The results show that the charging schedule found makes the economic operation of the EDS possible, while satisfying operational and priority constraints.
ISSN:0378-7796
1873-2046
DOI:10.1016/j.epsr.2016.09.018