Optimal Control of Active Distribution Network using Deep Reinforcement Learning

2022 IEEE INTERNATIONAL CONFERENCE ON ENVIRONMENT AND ELECTRICAL ENGINEERING AND 2022 IEEE INDUSTRIAL AND COMMERCIAL POWER SYSTEMS EUROPE (EEEIC / I&CPS EUROPE)(2022)

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摘要
Distribution network power losses is responsible for a large portion of system energy losses. In an active distribution network (ADN), the greater penetration of distribution generations (DGs) excel to bidirectional power flow that are responsible for large voltage excursions. To address this problem, this research paper proposes a deepireinforcement learningistrategy for ADN optimal voltage control that comprises of a solid-state transformer (SST). The proposed scheme computes optimal values of SST's reactive power that helps to solve the problem of ADN bus voltage excursions. Furthermore, in this strategy, the optimalecontrol issue is expressed as a Markovedecisioneprocess (MDP) that deals with continuousistatesiandiactionispaces. The deepideterministic policyigradient (DDPG) algorithm is used to study the reactive power control strategies to determine the optimaleactions from given states by utilizing the data driven deep_neural_networks (DNNs). Numerical simulations on modified IEEE 33-bus system using MATLAB show that the proposed strategy effectively sustains entire bus voltage in the allowable limits, and lessens the power loss of the system.
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关键词
active distribution network, deep neural networks, deep deterministic policy gradient, optimal voltage control, reinforcement learning, solid state transformer.
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