4.8 Article

Model-free voltage control of active distribution system with PVs using surrogate model-based deep reinforcement learning

Journal

APPLIED ENERGY
Volume 306, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.apenergy.2021.117982

Keywords

Voltage regulation; Active distribution network; Model-free; Deep reinforcement learning; Solar PVs; Optimization

Funding

  1. National Key Research and Development Program of China [2018YFE0127600]

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This paper proposes a deep reinforcement learning approach based on a surrogate model for voltage control in distribution systems. By training the surrogate model and applying the deep reinforcement learning algorithm, control without the need for a physical model is achieved, effectively handling fast voltage fluctuations.
Accurate knowledge of the distribution system topology and parameters is required to achieve good voltage control performance, but this is difficult to obtain in practice. This paper proposes a physical-model-free voltage control method based on a surrogate-model-enabled deep reinforcement learning approach. Specifically, a surrogate model is trained in a supervised manner using the recorded limited number of historical data to learn the relationship between the power injections and voltage fluctuations of each node. Then, the deep reinforcement learning algorithm is applied to learn an optimal control strategy from the experiences obtained by continuous interactions with the surrogate model. The proposed method can achieve physical-model-free control of unbalanced distribution network and inform real-time decisions to deal with fast voltage fluctuations caused by the rapid variation of PV generation. Simulation results on an unbalance IEEE 123-bus system show that the proposed method can achieve similar performance as that of perfect physical-model-based approaches while being advantageous over other traditional methods.

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