Baoqiang Zhang, Yuan Ma, Fang Wang, Zizhang Xue, Shanming Liu, Bin Fan
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引用次数: 0
摘要
针对目前电动汽车充电连接设备的安全性和稳定性问题,本研究基于电动汽车的用户行为特征和蒙特卡洛方法,提出了不同容量充电桩的电动汽车充电系统规划。研究发现,集合管理策略下的预测结果与实际负荷变化趋势最为一致。此外,在周负荷预测方面,研究策略比传统的非管理策略有更好的表现。在研究方案下,容量为 A 和 B 的充电桩在高峰期的平均充电速度分别为 41.4 分/秒和 18.8 分/秒,与平时的 58.6 分/秒和 21.3 分/秒相比,分别提高了 29.3%和 11.7%。研究方案的总经济成本为 487.1 万元,比控制方法 1 和 2 分别降低了 67.0 万元和 383.3 万元。与对照方法 3 相比,研究方法需要购买的 a 型和 b 型充电站总数分别减少了 18.47% 和 63.24%。结果表明,该研究方法显著提高了电动汽车充电系统中充电站的利用率。该研究在电动汽车充电系统的智能管理方面具有重要的应用价值。
Application of safety and stability optimization algorithms for charging connection devices in high-power charging systems
In response to the safety and stability issues of current electric vehicle charging connection devices, this study proposes a charging system planning for electric vehicles with different capacity charging piles based on the user behavior characteristics of electric vehicles and Monte Carlo methods. It is found that the predicted results under the set management strategy are most consistent with the trend of actual load changes. Moreover, in the prediction of weekly load, the research strategy has better performance than traditional unmanaged strategies. Under the research scheme, the average charging speed of charging piles with capacity of A and B in the peak period was 41.4 min/ and 18.8 min/, respectively, which increased by 29.3% and 11.7% respectively compared with 58.6 min/ and 21.3 min/ in the normal period. The total economic cost of the research plan was 4.871 million yuan, which was 67.0 million yuan and 3.833 million yuan lower than the control methods 1 and 2, respectively. The total number of charging stations of types a and b that need to be purchased for the research method decreased by 18.47% and 63.24% compared to the comparative method 3. The results indicate that the research method significantly improves the utilization rate of charging stations in the electric vehicle charging system. This study has important application value in the intelligent management of electric vehicle charging systems.