基于改进随机森林方法的配电网故障选线与定位

Jiaxin Ru, Guomin Luo, Boyang Shang, Simin Luo, Wen-liang Liu, Shaoliang Wang
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引用次数: 0

摘要

故障电压和故障电流具有非线性和时序特性。为了深入研究各特征变量对配电网选线和故障定位的重要性,提出了一种基于随机森林(RF)算法的配电网选线和故障定位方法。通过改进随机森林子模型,在选线的基础上同时完成定位功能。该网络将单标签系统扩展为多标签任务网络,有利于更好地表达故障数据特征,提高了网络的特征提取能力,大大缩短了故障诊断的时间。本研究以Simulink仿真获得的故障数据作为训练集,基于Scikit-Learn框架建立射频模型。结果表明,该模型具有较高的故障选线率和较小的定位误差。它可以作为配电网故障诊断的辅助手段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Line Selection and Location of Distribution Network Based on Improved Random Forest Method
Fault voltage and fault current have nonlinear and timing characteristics. To deeply study the importance of each characteristic variable for fault line selection and fault location of the distribution network, a fault line selection and fault location method based on a random forest (RF) algorithm was proposed. The location function is completed simultaneously based on line selection by improving the random forest sub-model. The proposed network amplifies the single label system to the multi-label task network, which facilitates the better expression of fault data features, improves the feature extraction ability of the network, and dramatically reduces the time of fault diagnosis. In this study, the fault data obtained by Simulink simulation is used as the training set, and the RF model is established based on the Scikit-Learn framework. The results show that this model has a high fault line selection rate and small location error. It can be used as an auxiliary means of distribution network fault diagnosis.
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