Optimal Charging Scheduling and Effective Generation Source Mobilization for Electric Vehicle Charging Stations
Online First: 07/07/2026
Email tác giả liên hệ:
vndieu@hcmut.edu.vnDOI:
https://doi.org/10.54644/jte.2026.1766Từ khóa:
Electric Vehicle Charging Station, Vehicle-to-Grid, Optimal Power Flow, Gradient-Based Optimizer, Distribution SystemTóm tắt
Optimizing power generation sources, promoting the flexibility of consumption loads, effectively coordinating the electric vehicle charging station system (EVCS), integrating renewable energy, minimizing negative impacts on the system are always the desires of operators and investors. In this study, we proposed an optimal charging coordination model for EVCS that combines effective mobilization of power generation sources integrated with renewable energy, with the goal of minimizing power generation costs in two cases with and without considering emissions. The Gradient-Based Optimizer (GBO) algorithm was utilized to identify solutions, the search results were simulated using Matlab software and tested on IEEE 30 bus standard network, 7 charging stations, 3 charging levels in 24 hours according to the electricity price framework in Vietnam through 3 test cases and 2 scenarios considering Vehicle to Grid (V2G) technology. The solution results were compared with published studies, evaluating the proposed application.
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