Topology-independent end-to-end learning model for improving the voltage profile in microgrids-integrated power distribution networks

Frontiers in Energy ›› 2023, Vol. 17 ›› Issue (2) : 211-227.

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Frontiers in Energy ›› 2023, Vol. 17 ›› Issue (2) : 211-227. DOI: 10.1007/s11708-022-0847-3
RESEARCH ARTICLE

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Topology-independent end-to-end learning model for improving the voltage profile in microgrids-integrated power distribution networks

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Abstract

With multiple microgrids (MGs) integrated into power distribution networks in a distributed manner, the penetration of renewable energy like photovoltaic (PV) power generation surges. However, the operation of power distribution networks is challenged by the issues of multiple power flow directions and voltage security. Accordingly, an efficient voltage control strategy is needed to ensure voltage security against ever-changing operating conditions, especially when the network topology information is absent or inaccurate. In this paper, we propose a novel data-driven voltage profile improvement model, denoted as system-wide composite adaptive network (SCAN), which depends on operational data instead of network topology details in the context of power distribution networks integrated with multiple MGs. Unlike existing studies that realize topology identification and decision-making optimization in sequence, the proposed end-to-end model determines the optimal voltage control decisions in one shot. More specifically, the proposed model consists of four modules, Pre-training Network and modified interior point methods with adversarial networks (Modified IPMAN) as core modules, and discriminator generative adversarial network (Dis-GAN) and Volt convolutional neural network (Volt-CNN) as ancillary modules. In particular, the generator in SCAN is trained by the core modules in sequence so as to form an end-to-end mode from data to decision. Numerical experiments based on IEEE 33-bus and 123-bus systems have validated the effectiveness and efficiency of the proposed method.

Keywords

end-to-end learning / microgrids / voltage profile improvement / generative adversarial network

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. . Frontiers in Energy. 2023, 17(2): 211-227 https://doi.org/10.1007/s11708-022-0847-3

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Acknowledgment

This work was funded by the National Natural Science Foundation of China (Grant Nos. 52007164, U2066601).

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2022 Higher Education Press 2022
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