基于DRL和物理凸优化的ADNs中离散和连续可调器件的双时间尺度协调

IF 3.2 Q3 ENERGY & FUELS
Jian Zhang;Yigang He
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引用次数: 0

摘要

电动汽车(ev)和可再生分布式发电机(dg)对有源配电网(ADNs)的高度渗透导致了频繁、快速和激烈的电压值违规。将数据驱动的深度强化学习(DRL)与物理凸模型有机结合,提出了一种针对ADNs中不同类型可调装置的双时间尺度协调方案。在慢时间尺度上建立马尔可夫决策过程(MDP),其中每小时设置有载变压器换流器(oltc)和可切换电容器电抗器(SCRs)的比率/状态以及ess充放电功率,以优化网络损耗,同时调节电压大小。提出了一种基于松弛-预测-修正策略的改进DRL,用于消除离散动作分量的维数缺陷。然而,在快速时间尺度(例如几秒或几分钟)上,平衡和不平衡ADNs中的dg逆变器和静态无功补偿器(SVCs)的最佳无功功率采用物理凸优化设置,以在尊重物理约束的同时最小化网络损耗。通过IEEE 33节点平衡馈线和123节点不平衡馈线的5个仿真实例验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two-Timescale Coordination of Discretely and Continuously Adjustable Devices in ADNs With DRL and Physical Convex Optimization
High penetration of electrical vehicles (EVs) and renewable distributed generators (DGs) into active distribution networks (ADNs) lead to frequent, rapid and fierce voltages magnitudes violations. A novel two-timescale coordination scheme for different types of adjustable devices in ADNs is put forward in this article by organically integrating data-driven deep reinforce-ment learning (DRL) into physical convex model. A Markov Decision Process (MDP) is formulated on slow timescale, in which ratios/statuses of on load transformer changers (OLTCs) and switchable capacitors reactors (SCRs) and ESSs charging/ discharging power are set hourly to optimize network losses while regulating voltages magnitudes. An improved DRL with relaxation-prediction-correction strategies is proposed for eradicating discrete action components dimension curses. Whereas, on fast timescale (e.g., several seconds or minutes), the optimal reactive power of DGs inverters and static VAR compensators (SVCs) in balanced and unbalanced ADNs are set with physical convex optimization to minimize network losses while respecting physical constraints. Five simulations cases with IEEE 33-node balanced and 123-node unbalanced feeders are carried out to verify capabilities of put forward method.
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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