DETERMINATION OF RATIONAL PARAMETERS FOR A NETWORK OF CHARGING STATIONS FOR ELECTRIC VEHICLES
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Abstract
This article examines the problem of determining rational parameters for a network of electric vehicle charging stations. The main factors influencing the placement of electric vehicle charging stations are analyzed. A multi-purpose model for choosing the location of charging stations has been developed. An algorithmic model is proposed to improve the sparrow search method, which is used as the basis for solving the problem of determining the rational parameters of a network of electric vehicle charging stations.
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This work is licensed under a Creative Commons Attribution 4.0 International License.
A. LOBASHOV, Belarusian National Technical University, Minsk
д-р техн. наук, проф.
D. KAPSKI, Belarusian National Technical University, Minsk
д-р техн. наук, проф.
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