Optimal electric vehicle charging station allocation

Despite the environmental and economic benefits of Electric Vehicles (EVs), distribution network operators will need to understand the location where the charging infrastructure will be placed to ensure EV users’ needs are met. In this sense, this work proposes a methodology to define the optimal lo...

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1. Verfasser: Leonardo Bitencourt
Format: Dataset
Sprache:eng
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Zusammenfassung:Despite the environmental and economic benefits of Electric Vehicles (EVs), distribution network operators will need to understand the location where the charging infrastructure will be placed to ensure EV users’ needs are met. In this sense, this work proposes a methodology to define the optimal location of EV semi-fast charging stations (CS) at a neighborhood level, through a multi-objective approach. It applies a hierarchical clustering method to define CS service zones, considering technical and mobility aspects. Besides, it considers uncertainties related to the EV load profile to determine the CS capacity, based on the user’s charging behavior. A Pareto Frontier method is deployed to support the decision-making process on CS optimal location, considering utility and EV users’ preferences. The results indicate that the best CS locations for mid-term EV penetration can also fit into long-term planning, with higher EV charging demand. Thus, these locations would be good candidates for the power utility to make initial investments, in both planning horizons. A real distribution system case is used to demonstrate the applicability of the results.
DOI:10.17632/g3kp7yt2m5.2