Critical link identification of power system vulnerability based on modified graph attention network

Changgang Wang, Xianwei Wang, Yu Cao, Yang Li, Qi Lv, Yaoxin Zhang
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Abstract

With the expansion of the power grid and the increase of the proportion of new energy sources, the uncertainty and random factors of the power grid increase, endangering the safe operation of the system. It is particularly important to find out the critical links of vulnerability in the power grid to ensure the reliability of the power grid operation. Aiming at the problem that the identification speed of the traditional critical link of vulnerability identification methods is slow and difficult to meet the actual operation requirements of the power grid, the improved graph attention network (IGAT) based identification method of the critical link is proposed. First, the evaluation index set is established by combining the complex network theory and the actual operation data of power grid. Secondly, IGAT is used to dig out the mapping relationship between various indicators and critical links of vulnerability during the operation of the power grid, establish the identification model of critical links of vulnerability, and optimize the original graph attention network considering the training accuracy and efficiency. Thirdly, the original data set is obtained through simulation, and the identification model is trained, verified and tested. Finally, the model is applied to the improved IEEE 30-node system and the actual power grid, and the results show that the proposed method is feasible, and the accuracy and speed are better than that of traditional methods. It has certain engineering utilization value.
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基于修正图注意网络的电力系统脆弱性关键环节识别
随着电网规模的扩大和新能源比例的增加,电网的不确定性和随机因素增多,危及系统的安全运行。找出电网中存在漏洞的关键环节,对确保电网运行的可靠性尤为重要。针对传统漏洞关键环节识别方法识别速度慢、难以满足电网实际运行要求的问题,提出了基于改进图注意网络(IGAT)的关键环节识别方法。首先,结合复杂网络理论和电网实际运行数据,建立评价指标集。其次,利用图注意网络(IGAT)挖掘电网运行过程中各项指标与脆弱性关键环节之间的映射关系,建立脆弱性关键环节识别模型,并在考虑训练精度和效率的基础上优化原始图注意网络。第三,通过仿真获得原始数据集,对识别模型进行训练、验证和测试。最后,将模型应用于改进的 IEEE 30 节点系统和实际电网,结果表明所提出的方法是可行的,其准确性和速度均优于传统方法。具有一定的工程实用价值。
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