考虑多不确定性和响应成本的电动汽车集群模型

Mingshen Wang, Xiaodong Yuan, Wenfei Yi, Lei Gao, Zheng Zhang, Li-Na Cui
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引用次数: 0

摘要

电动汽车的大规模集成化给电网带来了挑战。由于电动汽车对上下调节的响应潜力,电动汽车集群为电网提供了可观的响应能力。现有的电动汽车集群响应能力评价方法没有综合考虑用户的多样化需求,忽略了电池损耗和激励补偿对用户的影响。为了解决上述问题,改进了现有的聚类建模方法,包括考虑用户需求和电池损耗因素。首先,分析了电动汽车用户的不同需求对电动汽车不确定性的影响。提出了并网后单电动汽车运行区域的不确定性模型,分析了单电动汽车短期和长期规模响应能力。然后分析了放电速率、放电深度和初始荷电状态值对电池损耗的影响。建立了精细化的电池损耗模型。然后,分析了分时电价和激励补偿电价对电动汽车用户的影响。建立了响应成本模型,提出了一种电动汽车集群响应能力评价方法。最后,研究结果验证了所提建模方法对电动汽车聚类的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Electric Vehicle Cluster Model Considering Multiple Uncertainties and Response Costs
The large-scale integration of electric vehicles (EVs) brings challenges to the power grid. Due to the response potential of the EVs for up and down regulation, the EV cluster provides considerable response capacity to the power grid. Existing evaluation methods for the response capacity of EV cluster failed to comprehensively consider the diverse requirements of users, and ignored the impact of battery loss and incentive compensation on users. To solve above problems, the existing cluster modeling methods are improved, including considering user requirements and battery loss factors. Firstly, the diverse requirements of EV users that affect the uncertainty of EV are analyzed. A model for the uncertainty of the single EV’s operation area after grid integration is proposed, and the short-term and long-term scale response capacities of single EV are analyzed. Then, the influence of discharge rate, discharge depth and initial SOC value on battery loss is analyzed. A refined battery loss model was established. Then, the response of EV users under the influence of time-of-use price and incentive compensation price is analyzed. A response cost model is built, and propose an EV cluster response capacity evaluation method. Finally, study results validate the effectiveness of the proposed modeling method for EV cluster.
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