改进麻雀搜索算法在蓄电池换电站换电调度中的应用

IF 0.8 Q4 Computer Science
Qingsheng Shi, Feifan Zhao
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引用次数: 0

摘要

随着电动汽车用户数量的增加,电力交换需求急剧上升,而大规模无序充电将增加电池交换站的运营成本,增加电网的风险。通过与其他算法在23个测试函数上的实验比较,结果表明改进算法的收敛精度和速度都优于其他算法。在解决电动汽车换电站调度优化问题时,通过合理分配电池组充电时间和建立换电需求预测模型,在满足用户换电需求的基础上,电网的平均方差和峰均比分别降低了29.55%和13.2%。充电成本降低约12500元,降低换电池站的运营成本和风险,提升用户体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Improved Sparrow Search Algorithm in Electric Battery Swapping Station Switching Dispatching
The demand for power exchange has risen dramatically as the number of electric vehicle (EV) users has increased, and large-scale disorderly charging will increase the operating costs of battery swapping stations and increase the risk to the power grid. Through experimental comparison with other algorithms on 23 test functions, the results demonstrate that the convergence accuracy and speed of this improved algorithm are superior to those of other algorithms. Furthermore, in solving the optimization problem of EV battery swapping station scheduling, by reasonably allocating the battery pack charging time and establishing the forecasting model of switching demand, the average variance and peak-to-average ratio of the grid are reduced by 29.55% and 13.2%, respectively, based on meeting the user's switching demand. Approximately a 12,500 RMB reduction in the cost of charging lowers the operation cost and risk of battery swapping stations and enhances the user experience.
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自引率
12.50%
发文量
29
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