Two-Stage Hybrid-Filtering Based Fault Detection & Classification method for Active Distribution Networks

F. Mumtaz, H. H. Khan, Muhammad Usman Haider, Muhammad Bin Younas, M. Mohsin, Muhammad Zeeshan
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Abstract

Active distribution networks (ADNs) are the modern power networks that are cultivated due to the widespread dispersion of renewable energy resources (RERs) near consumer territory. However, faults detection and classification is an issue in such ADNs owing to the low current level during faults, and bidirectional power flows. This paper establishes a new fault detection and classification method for ADNs. In the first stage, a discrete Kalman filter (DKF) is implemented on measured current signals for noise-less state estimations. In the second stage, the second-order low pass filter (SOLPF) is implemented to the per phase current signature to take out the desired filtered features (DFF). Furthermore, the DFF of the current signal is squared, and then the exponential is taken to compute the single-phase fault detection & classification index (SPFD&CI). If the SPFD&CI of any phase is more than a constant threshold level the associated phase is deliberately faulty. Moreover, due to phase segregation, the fault categorization is autonomous. The suggested approach is tested in MATLAB/Simulink firmware on the ADN's tested. The results show that, in various cases, the suggested technique detects and classifies all varieties of fault conditions with less than 1/2 a cycle.
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基于两阶段混合滤波的有源配电网故障检测与分类方法
主动配电网(ADNs)是由于可再生能源在消费者区域附近的广泛分布而形成的现代电网。然而,由于故障时的电流水平较低,且电流是双向的,因此这种ADNs的故障检测和分类是一个问题。本文建立了一种新的adn故障检测与分类方法。在第一阶段,采用离散卡尔曼滤波(DKF)对测量电流信号进行无噪声状态估计。在第二阶段,二阶低通滤波器(SOLPF)被实现到每相电流签名,以取出所需的滤波特征(DFF)。然后对电流信号的DFF进行平方,取指数计算单相故障检测分类指数(SPFD&CI)。如果任何阶段的SPFD&CI大于一个固定的阈值水平,则该阶段是故意错误的。此外,由于相位偏析,故障分类是自治的。建议的方法在MATLAB/Simulink固件中对ADN进行了测试。结果表明,在各种情况下,该方法均能以小于1/2 a周期的时间对各种故障状态进行检测和分类。
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