Convolutional Deep Leaning-Based Distribution System Topology Identification with Renewables
编号:61 访问权限:仅限参会人 更新:2021-12-04 17:21:24 浏览:376次 张贴报告

报告开始:2021年12月17日 15:45(Asia/Shanghai)

报告时间:5min

所在会场:[Z] Poster Session [Z9] Poster Session 9: Power system and automation

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摘要
Obtaining the distribution system topology states timely is critical for system monitoring while challenged by correlations brought by high penetrated renewable energy sources (RES). To address this issue, a deep learning model is proposed for distribution system topology identification considering the underlying complex correlations of renewables. Specifically, to remove the dependence of the power system model parameters like line impedance, the input of the model only consists of the voltage magnitudes. Then, this is fed into the proposed deep learning model (DLM), which can fully capture the data features and thus classify the topology of the grid to hedge against the correlations of the RES and thus enhance the identification accuracy. The simulation results demonstrate the accuracy and efficiency of the proposed model in the IEEE 33-node distribution system.
关键词
Distribution system topology identification, correlation, deep learning, renewable energy
报告人
Huayi Wu
The Hong Kong Polytechnic University

稿件作者
Huayi Wu The Hong Kong Polytechnic University
Zhao Xu The Hong Kong Polytechnic University
Minghao Wang The Hong Kong Polytechnic University
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    2023

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  • 11月10日 2021

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  • 12月10日 2021

    注册截止日期

  • 12月11日 2021

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主办单位
IEEE IAS
承办单位
IEEE IAS Student Chapter of Southwest Jiaotong University (SWJTU)
IEEE IAS Student Chapter of Huazhong University of Science and Technology (HUST)
IEEE PELS (Power Electronics Society) Student Chapter of HUST
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