首页> 外文期刊>International journal of electrical power and energy systems >Real-time fault detection in PV systems under MPPT using PMU and high-frequency multi-sensor data through online PCA-KDE-based multivariate KL divergence
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Real-time fault detection in PV systems under MPPT using PMU and high-frequency multi-sensor data through online PCA-KDE-based multivariate KL divergence

机译:使用基于在线PCA-KDE的多变量KL发散的PMU和高频多传感器数据在MPPT下的PV系统实时故障检测

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This paper considers data-based real-time adaptive Fault Detection (FD) in Grid-connected PV (GPV) systems under Power Point Tracking (PPT) modes during large variations. Faults under PPT modes remain undetected for longer periods introducing new protection challenges and threats to the system. An intelligent FD algorithm is developed through real-time multi-sensor measurements and virtual estimations from Micro Phasor Measurement Unit (Micro-PMU). The high-dimensional high-frequency multivariate characteristics are non linear time-varying where computational efficiency becomes crucial to realize online adaptive FD. The adaptive assumption-free method is developed through Principal Component Analysis (PCA) for dimension reduction and feature extraction with reduced complexity. Novel fault indicators D-x(t) and discrimination index AD(t) are developed using Kullback-Leibler Divergence (KLD) for an accurate evaluation of Transformed Components (TCs) through recursive Smooth Kernel Density Estimation (KDE). The algorithm is developed through extensive data with 2.2 x 10(6) measurements from a GPV system under Maximum PPT (MPPT) and Intermediate PPT (IPPT) switching modes. The validation scenarios include seven faults: open circuit, voltage sags, partial shading, inverter, current feedback sensor, and MPPT/IPPT controller in boost converter faults. The adaptive algorithm is proved computationally efficient and very accurate for successful FD under large temperature and irradiance variations with noisy measurements.
机译:本文在大变型期间,在电源点跟踪(PPT)模式下,在电力点跟踪(PPT)模式下,在网格连接的PV(GPV)系统中基于基于数据的实时自适应故障检测(FD)。 PPT模式下的故障仍未被未被发现,对于更长的时间,对系统引入新的保护挑战和威胁。智能FD算法是通过实时多传感器测量和来自微量PMAOR测量单元(Micro-PMU)的虚拟估计来开发的。高维高频多变量特性是非线性时变的,其中计算效率变得至关重要,以实现在线自适应FD。通过主成分分析(PCA)开发自适应假设方法,用于减压和具有降低复杂性的特征提取。新颖的故障指示器D-X(T)和辨别指标AD(T)使用Kullback-Leibler发散(KLD)开发,用于通过递归平滑核密度估计(KDE)准确评估转化的组分(TCS)。该算法是通过广泛的数据开发的,从最大PPT(MPPT)和中间PPT(IPPT)切换模式下的GPV系统中的2.2 x 10(6)测量。验证方案包括七个故障:打开电路,电压凹陷,部分遮阳,逆变器,电流反馈传感器和升压转换器故障中的MPPT / IPPT控制器。在大型温度和辐照度变化下,在计算上的噪声变化和嘈杂测量的辐照变异下,对自适应算法进行了计算上的高效,非常准确。

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