Fault Identification Algorithm for Grid Connected Photovoltaic Systems using Machine Learning Techniques

Kanula Dadhich, V. S. Kurukuru, Mohammed Ali Khan, A. Haque
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引用次数: 1

Abstract

The motivation and background behind the fault detection for grid connected solar power plant is presented in this paper. The major issues encountered when integrating a PV system to the grid include multi-peak phenomenon due to partial shading, regulation of circulating currents, the impact of grid impedances on PV system stability, Fault Ride-Through (FRT) Capability, and anti-islanding detection. Hence, fault detection and condition monitoring system are necessary for smooth operation. In this paper, a fault classification technique for single-phase grid connected PV systems is developed. Wavelet Transform and Neural network approaches are used for developing the fault classification algorithm. The results depicted that the developed fault detection algorithm shows a significant improvement in the classification accuracy with 98.4%.
基于机器学习技术的并网光伏系统故障识别算法
本文介绍了并网太阳能电站故障检测的动机和背景。将光伏系统并入电网时遇到的主要问题包括部分遮阳引起的多峰现象、循环电流的调节、电网阻抗对光伏系统稳定性的影响、故障穿越(FRT)能力和抗孤岛检测。因此,故障检测和状态监测系统是保证正常运行的必要条件。本文提出了一种单相并网光伏系统故障分类技术。采用小波变换和神经网络方法开发故障分类算法。结果表明,所开发的故障检测算法的分类准确率显著提高,达到98.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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