Data-driven Reactive Power Optimization of Distribution Networks via Graph Attention Networks

被引:0
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作者
Wenlong Liao [1 ]
Dechang Yang [2 ]
Qi Liu [3 ]
Yixiong Jia [4 ]
Chenxi Wang [4 ]
Zhe Yang [5 ]
机构
[1] Wind Engineering and Renewable Energy Laboratory, Ecole Polytechnique Federale de Lausanne (EPFL)
[2] the College of Information and Electrical Engineering, China Agricultural University
[3] the College of Electrical Engineering and Automation, Shandong University of Science and Technology
[4] the Department of Electrical and Electronic Engineering (Energy Digitalization Laboratory), The University of Hong Kong
[5] the Department of Electrical Engineering, The Hong Kong Polytechnic University
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摘要
Reactive power optimization of distribution networks is traditionally addressed by physical model based methods, which often lead to locally optimal solutions and require heavy online inference time consumption. To improve the quality of the solution and reduce the inference time burden, this paper proposes a new graph attention networks based method to directly map the complex nonlinear relationship between graphs(topology and power loads) and reactive power scheduling schemes of distribution networks, from a data-driven perspective. The graph attention network is tailored specifically to this problem and incorporates several innovative features such as a self-loop in the adjacency matrix, a customized loss function, and the use of max-pooling layers. Additionally, a rulebased strategy is proposed to adjust infeasible solutions that violate constraints. Simulation results on multiple distribution networks demonstrate that the proposed method outperforms other machine learning based methods in terms of the solution quality and robustness to varying load conditions. Moreover, its online inference time is significantly faster than traditional physical model based methods, particularly for large-scale distribution networks.
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页数:12
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