高阻抗故障定位方法综述及谐波选择分析

IF 3.3 Q3 ENERGY & FUELS
Gabriela N. Lopes;Thiago S. Menezes;Douglas P. S. Gomes;Jose Carlos M. Vieira
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引用次数: 1

摘要

高阻抗故障(HIFs)是配电系统(DS)中反复发生的事件,由通电导体和高阻抗表面之间的接触引起。HIFs可能对生物造成危害并引发山火。然而,由于故障电流小和阻抗变化,HIF保护尚未完全解决,阻碍了传统保护技术的正确运行。在文献中,研究人员主要关注检测技术。因此,HIF定位方法(HIFLM)的发展是最近的,并且仍然缺乏结论性解决方案的证据。此外,到目前为止,还没有任何现有的研究综述了DS中HIFLM的主要挑战。本文对现有的主要HIFLM的设计常用阶段进行了系统分析。该策略是评估在现实世界条件下面临的挑战方面构成共同研究路径的类似特征。此外,本文还提出了一个案例研究,以评估新的HIFLM的最佳输入信号、指标和基于机器学习的决策算法。结果是有希望的,具有高识别率,即使在噪声条件下。该方法可以帮助选择用于基于HIFLM的监督学习的数据集。本文的主要贡献是强调当前方法的现状和支持HIFLM的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High Impedance Fault Location Methods: Review and Harmonic Selection-Based Analysis
High Impedance Faults (HIFs) are recurring events in electrical Distribution Systems (DSs) and occur by the contact between energized conductors and high impedance surfaces. HIFs may pose hazards to living beings and cause bushfires. However, the HIF protection has not been completely solved due to the small fault current and varying impedance, inhibiting traditional protection techniques from functioning correctly. In the literature, researchers have mainly focused on detection techniques. Thus, the development of HIF Location Methods (HIFLMs) is recent, and evidences for conclusive solutions are still lacking. Moreover, to this date, no existing study reviews the main challenges concerning HIFLMs in DSs. This paper proposes a systematic analysis of the common stages to design the main existing HIFLMs. The strategy is evaluating the similar characteristics that pose a common research path regarding challenges faced in real-world conditions. Additionally, this paper proposes a case study to assess the best input signals, metrics, and machine learning-based decision algorithms of a new HIFLM. The results are promising, with high identification rates, even in noisy conditions. The methodology can help to select the datasets for supervised learning-based HIFLM. Highlighting the state-of-art of current methods and support development of HIFLMs are this paper’s main contributions.
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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