Real time arc fault detection in PV systems using wavelet decomposition

H. Zhu, Zhan Wang, R. Balog
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引用次数: 20

Abstract

Reliable arc fault detection is crucial for the safe operation of photovoltaic (PV) system. Fourier transform methods have been previously used to detect arcing by examining the frequency characteristics of the PV voltage or current but are not well suited because arcs are chaotic, not periodic and not stationary. In contract, wavelet-based transforms are well suited because the technique does not assume periodicity and is adept at detecting discontinuities in the signal. This paper reports on results from the development of a real time arc fault detection technique that was built as a wavelet decomposition based arc detector using a TI C2000 platform DSP. The arc fault detector was tested on a composite arc signal constructed from recordings of real-world inverter noise and real-world arc events replayed through a high-fidelity test bed to compare the ability to differentiate inverter only and inverter plus arcing signals. The results demonstrate that the wavelet decomposition and arc discrimination algorithms can be implemented in real-time on a low-cost DSP.
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基于小波分解的光伏系统电弧故障实时检测
可靠的电弧故障检测对于光伏发电系统的安全运行至关重要。傅里叶变换方法以前被用来检测电弧,通过检查PV电压或电流的频率特性,但不太适合,因为电弧是混沌的,不是周期性的,也不是平稳的。相比之下,基于小波的变换非常适合,因为该技术不假设周期性,并且善于检测信号中的不连续点。本文报道了利用TI C2000平台DSP构建基于小波分解的电弧检测器的实时电弧故障检测技术。电弧故障检测器通过高保真度测试平台对真实逆变器噪声记录和真实电弧事件记录组成的复合电弧信号进行测试,以比较仅逆变器和逆变器加电弧信号的区分能力。结果表明,小波分解和圆弧识别算法可以在低成本的DSP上实时实现。
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