Active Distribution Network Reconfiguration with Renewable Energy Based on Multi-agent Deep Reinforcement Learning

Zheng Lin, Changxu Jiang, Yuejun Lu, Chenxi Liu
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Abstract

Distributed generation (DG) represented by wind turbines and photovoltaic systems has been extensively connected to the power distribution network (DN). However, the random fluctuations of DG pose new challenges to the safety, stability, and economic performance of DN, while distribution network reconfiguration (DNR) technology can alleviate this problem to some extent. Traditional heuristic algorithms are difficult to deal with uncertainties in the source-load and the increasing complexity of DN. Therefore, this paper proposes an active DNR method based on a model-free multi-agent deep deterministic policy gradient reinforcement learning framework (MADDPG). Firstly, the number of fundamental loops in the distribution network are determined and agent for each fundamental loop are deployed. Each agent has an actor and a critic network, which can control operations of the branch switches in the loop. Next, a mathematical model of DNR will be constructed. Then, a MADDPG training framework for distribution network reconfiguration is built, which adopts centralized training and distributed execution. Finally, the simulation cases are performed on an improved IEEE 33-bus power system to prove the effectiveness of MADDPG algorithm. The results illustrate that MADDPG algorithm can improve the economic and stability performance of the distribution network to some extent, demonstrating the effectiveness of the proposed approach.
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基于多智能体深度强化学习的可再生能源主动配电网重构
以风力发电机组和光伏发电系统为代表的分布式发电系统已广泛接入配电网。然而,分布式电网的随机波动对分布式电网的安全性、稳定性和经济性提出了新的挑战,而配网重构技术可以在一定程度上缓解这一问题。传统的启发式算法难以处理源负载的不确定性和DN日益增加的复杂性。为此,本文提出了一种基于无模型多智能体深度确定性策略梯度强化学习框架(madpg)的主动DNR方法。首先,确定配电网中基本环路的数量,并为每个基本环路部署agent;每个agent有一个actor网络和一个critical网络,可以控制回路中分支交换机的操作。接下来,我们将构建DNR的数学模型。然后,构建了集中训练、分布式执行的配电网络重构madpg训练框架。最后,在改进的IEEE 33总线电源系统上进行了仿真,验证了madpg算法的有效性。结果表明,madpg算法能在一定程度上提高配电网的经济性和稳定性,证明了所提方法的有效性。
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