利用斯托克韦尔变换和随机森林进行基于谐波选择的高阻抗故障定位分析

G. N. Lopes, T. S. Menezes, J. Vieira
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引用次数: 1

摘要

高阻抗故障 (HIF) 源于通电导体与高阻抗表面之间的接触。在配电系统中,由于故障电流较低且阻抗不断变化,传统的故障定位技术无法正确发挥作用,因此高阻抗故障定位是一个尚未完全解决的问题。因此,本文评估了随机森林算法在配电系统中定位 HIF 的潜力。其主要思想基于斯托克韦尔变换从仅在系统变电站使用真实 HIF 信号测量的相电流和中性线电流中提取的频率,从而进行电能质量数据分析。结果很有希望,即使电流信号有噪声,识别率也很高。此外,该方法还能帮助研究人员为基于监督学习的 HIF 定位方法更好地选择数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Harmonic Selection-based Analysis for High Impedance Fault Location Using Stockwell Transform and Random Forest
High Impedance Faults (HIFs) originate from the contact between an energized conductor and a high impedance surface. In distribution systems, the HIFs location is an issue that has not been completely solved due to the low fault current and varying impedance, which inhibits traditional fault location techniques from correctly functioning. Thus, this paper assesses the potential of the Random Forest algorithm to be employed to locate HIFs in power distribution systems. The main idea is based on the frequencies extracted by the Stockwell Transform from the phase and neutral currents measured only at the system substation using real HIF signals, thus performing a power quality data analysis. The results are promising, with high identification rates, even with noisy current signals. Additionally, the methodology can help researchers to better select their datasets for supervised-learning-based HIF location methods.
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