Corona onset and breakdown voltage prediction of rod-plane air gaps based on SVM algorithm

Zhibin Qiu, J. Ruan, Daochun Huang, M. Wei, Liezheng Tang, Shengwen Shu
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引用次数: 5

Abstract

Corona onset voltage and breakdown voltage of the air gap are the basis for the external insulation design of high-voltage transmission projects. A new prediction method for the discharge voltage of rod-plane air gaps is proposed in this paper. Support vector machine (SVM) is applied to establish the prediction model, and the improved grid search (GS) method is used for parameter optimization. The features extracted from the electric field distribution calculated by finite element model of the rod-plane air gap are taken as the input parameters to the SVM model, and whether corona will onset, or the gap will breakdown under a given voltage is taken as the output of the SVM model. Trained by the electric field features under several limited experimental values, the SVM model is effective to predict the corona onset or breakdown voltage. The proposed method is applied to predict the positive DC corona onset voltage and power frequency AC breakdown voltage of rod-plane air gaps. The predicted results are in accordance with the experimental values with small deviation, which preliminary validate the feasibility of predicting the discharge voltage of the air gap by machine learning algorithms.
基于支持向量机算法的杆面气隙电晕发作及击穿电压预测
气隙的起晕电压和击穿电压是高压输电工程外绝缘设计的依据。提出了一种新的杆面气隙放电电压预测方法。采用支持向量机(SVM)建立预测模型,采用改进的网格搜索(GS)方法进行参数优化。将由杆面气隙有限元模型计算得到的电场分布提取的特征作为SVM模型的输入参数,将给定电压下是否会发生电晕或气隙是否会击穿作为SVM模型的输出。支持向量机模型通过在几个有限实验值下的电场特征训练,可以有效地预测电晕发生电压或击穿电压。将该方法应用于预测棒面气隙直流正电晕起始电压和工频交流击穿电压。预测结果与实验值吻合,偏差较小,初步验证了机器学习算法预测气隙放电电压的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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