考虑电动汽车充放电控制的微电网优化调度方法OA
Optimal Scheduling of Microgrid Considering Charging and Discharging Control of Electric Vehicles
[目的]电动汽车(electric vehicle,EV)由于其储能特性可作为灵活性资源参与电网互动,规模化电动汽车接入微电网后对微电网的优化调度提供了新的机遇.为此,提出了一种基于双层随机模型预测控制(stochastic model predictive control,SMPC)的微电网优化调度策略.[方法]上层优化采用场景分析法处理光伏出力、负荷需求和电动汽车数量的不确定性,生成典型场景集并建立优化模型,通过滚动优化实现微电网的经济调度.下层提出了基于广播控制方法的充电桩动态功率分配策略,在考虑电动汽车充放电可行区域的情况下,实现对上层调度指令的高效分配.[结果]所提优化调度方法兼顾经济性和鲁棒性,综合表现优于确定性模型和鲁棒优化(robust optimization,RO)方法,所提充电站功率分配策略较传统的集中式功率分配策略降低了通信压力且具备良好的跟踪效果.[结论]所提优化调度策略能够在满足电动汽车充电需求的情况下,提高微电网调度运行的经济性与灵活性;广播控制算法兼顾了通信效率与系统的扩展性,适用于即插即用的大规模场景.
[Objective]Due to their energy storage capabilities,electric vehicles(EVs)can serve as flexible resources for grid interaction.The large-scale integration of EVs into microgrids creates new opportunities for optimal scheduling.This paper proposes a two-layer stochastic model predictive control(SMPC)-based optimal scheduling strategy for microgrids.[Methods]In the upper-layer,scenario analysis is employed to handle uncertainties in photovoltaic output,load demand,and the number of EVs.A set of representative scenarios is generated,and an optimization model is established to achieve economic dispatching through rolling optimization.In the lower layer,a dynamic power allocation strategy for charging piles is developed based on a broadcast control method.This strategy enables efficient allocation of upper-layer dispatch instructions while considering the charging and discharging regions of EVs.[Results]Case studies indicate that the proposed optimal scheduling method enhances robustness while maintaining economic efficiency,outperforming both deterministic models and robust optimization(RO)approaches.Moreover,the proposed power allocation strategy for charging piles reduces communication burdens compared with traditional centralized power allocation strategies and demonstrates satisfactory tracking performance.[Conclusions]The proposed optimal scheduling strategy improves the economic efficiency and flexibility of microgrid operation while satisfying EV charging demands.The broadcast control algorithm balances communication efficiency and system scalability,making it suitable for large-scale,plug-and-play scenarios.
翟润如;唐志远;曹洲豪;刘友波;向月;高红均;常政威
四川大学电气工程学院,成都市 610065四川大学电气工程学院,成都市 610065四川大学电气工程学院,成都市 610065四川大学电气工程学院,成都市 610065四川大学电气工程学院,成都市 610065四川大学电气工程学院,成都市 610065国网四川省电力公司,成都市 610041
信息技术与安全科学
电动汽车(EV)微电网随机模型预测控制(SMPC)优化调度
electric vehicle(EV)microgridstochastic model predictive control(SMPC)optimal scheduling
《电力建设》 2026 (6)
98-110,13
四川省科技计划资助项目(2025ZDZX0034)This work is supported by Sichuan Science and Technology Program(No.2025ZDZX0034).
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