湖南电力 ›› 2026, Vol. 46 ›› Issue (2): 78-83.doi: 10.3969/j.issn.1008-0198.2026.02.010

• 电网运行与控制 • 上一篇    下一篇

基于时间方差准确度系数优化随机森林的串联电弧故障识别方法

刘凯1,2, 吴聪1,2, 刘谋海1,2, 钟海诚3, 余敏琪1,2, 仝海昕3   

  1. 1.国网湖南省电力有限公司供电服务中心(计量中心),湖南 长沙 410004;
    2.智能电气量测与用电技术湖南省重点实验室,湖南 长沙 410004;
    3.长沙理工大学电气与信息工程学院,湖南 长沙 410114
  • 收稿日期:2025-11-03 修回日期:2025-12-15 出版日期:2026-04-25 发布日期:2026-05-09
  • 作者简介:刘凯(1981),男,硕士,高级工程师,研究方向为电力系统及自动化。吴聪(1993),男,博士,工程师,研究方向为智能电网分析。刘谋海(1990),男,硕士,高级工程师,研究方向为智能电网分析。

identification Method for Series Arc faults Based on TVA-Optimized Random forest

LiU Kai1,2, WU Cong1,2, LiU Mouhai1,2, ZHONG Haicheng3, YU Minqi1,2, TONG Haixin3   

  1. 1. State Grid Hunan Electric Power Co., Ltd. Power Supply Service Center (Metering Center), Changsha 410004, China;
    2. Hunan Provincial Key Laboratory of intelligent Electrical Measurement and Power Utilization Technology Changsha 410004, China;
    3. School of Electrical Engineering, Changsha University of Science and Technology, Changsha 410114, China
  • Received:2025-11-03 Revised:2025-12-15 Online:2026-04-25 Published:2026-05-09

摘要: 为解决低压电力场景中特征混叠的串联电弧故障识别难题,提出一种基于时间方差准确度(time-variance-accuracy,TVA)系数优化随机森林模型的识别低压串联电弧故障的方法。首先,通过对样本特征敏感度的分析,发现问题主要源于特定场景下样本特征敏感度下降,导致传统电弧检测方法判断失准。其次,利用随机森林模型集合运作机制的抗干扰特性,将随机森林模型作为核心识别模型。最后,构建TVA系数实现随机森林超参数的多目标优化,并利用低压负荷样本训练随机森林模型,在训练后的随机森林模型输入端嵌入时频特征去噪提取程序。经低压串联电压实验检测,基于 TVA系数优化随机森林模型的低压串联电弧故障识别方法的故障识别准确率达到99.97%,在精度及计算速度上均超越传统方法,证明该方法克服了特征重叠干扰,实现了低压串联电弧故障的精准识别。

关键词: 超参数优化, 随机森林, 样本特征敏感度, 串联电弧故障

Abstract: To solve the problem of identifying series arc faults with feature aliasing in low-voltage power scenarios, this paper proposes a time-variance-accuracy coefficient random forest(TVA-Rf) model for low-voltage series arc fault detection. First, analysis of sample feature sensitivity reveals that the core issue stems from reduced sensitivity under specific conditions, leading to inaccuracies in traditional arc detection methods. Secondly, the random forest model is used as the core recognition model due to its anti-interference properties. finally, a TVA coeffit is constructed to achieve multi-objective optimization of random forest hyperparameters, and the random forest model is trained using low-voltage load samples. Through experimental testing of low voltage series voltage, the fault identification method achieves an accuracy rate of 99.97%, and surpasses traditional methods in both accuracy and calculation speed. This proves that the method overcomes feature overlap interference and achieves accurate identification of low voltage series arc faults.

Key words: hyperparameter optimization, random forest, feature sensitivity of samples, series arc fault

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