Multi-Agent Deep Reinforcement Learning for Voltage Control With Coordinated Active and Reactive Power Optimization

被引:43
|
作者
Hu, Daner [1 ]
Ye, Zhenhui [1 ]
Gao, Yuanqi [2 ]
Ye, Zuzhao [2 ]
Peng, Yonggang [1 ]
Yu, Nanpeng [2 ]
机构
[1] Zhejiang Univ, Dept Elect Engn, Hangzhou 310027, Peoples R China
[2] Univ Calif Riverside, Dept Elect & Comp Engn, Riverside, CA 92521 USA
关键词
Voltage control; Reactive power; Inverters; Costs; Reinforcement learning; Optimization; Voltage fluctuations; Deep reinforcement learning; experience augmentation; multi-agent; soft actor-critic; voltage control; DISTRIBUTION NETWORKS; OPERATION; FRAMEWORK; FLOW;
D O I
10.1109/TSG.2022.3185975
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The increasing penetration of distributed renewable energy resources causes voltage fluctuations in distribution networks. The controllable active and reactive power resources such as energy storage (ES) systems and electric vehicles (EVs) in active distribution networks play an important role in mitigating the voltage excursions. This paper proposes a two-timescale hybrid voltage control strategy based on a mixed-integer optimization method and multi-agent reinforcement learning (MARL) to reduce power loss and mitigate voltage violations. In the slow-timescale, the active and reactive power optimization problem involving capacitor banks (CBs), on-load tap changers (OLTC), and ES systems is formulated as a mixed-integer second-order cone programming problem. In the fast-timescale, the reactive power of smart inverters connected to solar photovoltaic systems and active power of EVs are adjusted to mitigate short-term voltage fluctuations with a MARL algorithm. Specifically, we propose an experience augmented multi-agent actor-critic (EA-MAAC) algorithm with an attention mechanism to learn high-quality control policies. The control policies are executed online in a decentralized manner. The proposed hybrid voltage control strategy is validated on an IEEE testing distribution feeder. The numerical results show that our proposed control strategy is not only sample-efficient and robust but also effective in mitigating voltage fluctuations.
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页码:4873 / 4886
页数:14
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