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Enhance High Impedance Fault Detection and Location Accuracy via μ -PMUs

机译:通过μ-PMU增强高阻抗故障检测和定位精度

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摘要

The high impedance fault (HIF) has random, irregular, and unsymmetrical characteristics, making such a fault difficult to detect in distribution grids via conventional relay measurements with relatively low resolution and accuracy. This paper proposes a stochastic HIF monitoring and location scheme using high-resolution time-synchronized data in $mu $ -PMUs for distribution network protection. Specifically, we systematically design a process based on feature selections, semi-supervised learning (SSL), and probabilistic learning for fault detection and location. For example, a wrapper method is proposed to leverage output data in feature selection to avoid overfitting and reduce communication demand. To utilize unlabeled data and quantify uncertainties, an SSL-based method is proposed using the information theory for fault detection. For location, a probabilistic analysis is proposed via moving window total least square based on the probability distribution of the fault impedance. For numerical validation, we set up an experiment platform based on the real-time simulator, so that the real-time property of $mu $ -PMU can be examined. Such experiment shows enhanced HIF detection and location, when compared to the traditional methods.
机译:高阻抗故障(HIF)具有随机,不规则和不对称的特性,使得这种故障很难通过常规继电器测量以相对较低的分辨率和精度在配电网中检测到。本文提出了一种随机的HIF监视和定位方案,该方案使用$ mu $ -PMU中的高分辨率时间同步数据来保护配电网络。具体来说,我们基于特征选择,半监督学习(SSL)和概率学习进行系统设计流程,以进行故障检测和定位。例如,提出了一种包装器方法,以在特征选择中利用输出数据,以避免过度拟合并减少通信需求。为了利用未标记的数据并量化不确定性,提出了一种使用信息论进行故障检测的基于SSL的方法。对于位置,基于故障阻抗的概率分布,通过移动窗口总最小二乘法提出概率分析。为了进行数值验证,我们建立了一个基于实时模拟器的实验平台,以便可以检查$ mu $ -PMU的实时属性。与传统方法相比,此类实验显示出增强的HIF检测和定位。

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