基于结冰图像的输电线路电压稳定性评价

Jun Zhang, Dong Wang, Changqian Xu, Haifeng Bian, Feng Su, Long Li
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引用次数: 1

摘要

许多输电线路位于高海拔和结冰地区,面临断线和塔倒的风险。然而,传统的人工检测方法识别速度慢,识别精度低,造成大量的人工成本。本文提出了一种基于结冰图像的输电线路电压稳定风险评估图像识别方法,实现对输电线路电压稳定风险的快速准确识别。首先,采集输电线路结冰图像数据,识别输电线路断线风险;然后,建立基于Mobilenet-V3框架的卷积神经网络模型,以传输线结冰图像数据为输入,传输线断线风险为模型输出。对该模型进行训练,生成输电线电压稳定风险的快速评估模型。然后,建立了另一种深度学习模型,该模型可以基于不同的输电断线实现系统电压稳定裕度的快速计算。并将Mobilenet-V3模型与深度学习模型得到的断行风险与电压稳定裕度的乘积作为最终的电压稳定性评价结果。最后,在某省500kV输电线路上对该模型进行了验证。试验结果表明,该方法能够实现输电线路电压风险快速、准确的评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Icing Image based power system voltage stability evaluation of transmission lines
Many transmission lines are in high-altitude and icing areas, facing the risk of line breaking and tower falling. However, the traditional manual inspection method has slow identification speed and low identification accuracy, resulting in a lot of labor cost. In this paper, an image recognition method of transmission line voltage stability risk assessment based on icing image is proposed to realize fast and accurate identification of transmission line voltage stability risk. Firstly, the transmission line icing image data are collected to identify the risk of transmission line break. Then, a convolutional neural network model based on Mobilenet-V3 framework is built, and the transmission line icing image data is used as the input and transmission line break risk as the output of the model. The model is trained to generate a rapid assessment model of transmission line voltage stability risk. Then, another deep learning model is built which can achieve the fast calculation of voltage stability margin of the system based on the different transmission line break. And the product of line breaking risk and voltage stability margin obtained from the Mobilenet-V3 model and deep learning model is taken as the final voltage stability evaluation result. Finally, the model is tested on a 500kV transmission line in a province. The test results show that this method can realize the rapid and accurate voltage risk assessment of transmission line.
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