基于小波包变换和Tsallis熵的光伏直流串联电弧故障特征频带提取

Wenkang Xu, L. Yao, Jinshan Qi, Shiming Tian, Xuemei Zhang, Mingming Pan, Xin Wu
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引用次数: 0

摘要

光伏直流串联电弧的故障特征分散在mhz级宽带内,因此提取故障特征频带增强特征信息对于高效检测电弧故障具有重要意义。本文首次在PSACD中建立了基于Cassie模型的光伏直流串联电弧故障仿真。以光伏阵列故障前后两个工频周期的输出电流作为信号分析单元。利用Tsallis小波包奇异熵(TWPSE)对母小波和分解层数的组合进行优化。然后在最优组合的基础上,对信号分析单元进行小波包分解重构,计算各频段故障前后的Tsallis熵比,确定故障特征频段。最后,对最优组合和非最优组合得到的特征频带进行能量比分析,发现前者提取的故障特征频带能量比最大。结果表明,优化组合提取的故障特征频带能有效增强故障特征,更有利于光伏直流串联电弧故障的高效检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of Fault Characteristic Frequency Band of Photovoltaic DC Series Arc Based on Wavelet Packet Transform and Tsallis Entropy
The fault characteristics of photovoltaic (PV) DC series arc are scattered in the MHz-level broadband, so extracting the fault characteristic frequency band to enhance the characteristic information is of great significance for the efficient detection of arc faults. In this paper, a Cassie model-based photovoltaic DC series arc fault simulation is first established in PSACD. The output current of the photovoltaic array with two power frequency cycles before and after the fault is used as the signal analysis unit. The combination of mother wavelet and decomposition layer number is optimized by using Tsallis wavelet packet singular entropy (TWPSE). Then, based on the optimal combination, the signal analysis unit is decomposed and reconstructed by wavelet packet, and the Tsallis entropy ratio before and after the fault of each frequency band is calculated to determine the fault characteristic frequency band. Finally, the energy ratio analysis is carried out on the characteristic frequency bands obtained by the optimal and non-optimal combinations, and it is found that the fault characteristic frequency band extracted by the former has the largest energy ratio. The results show that the fault characteristic frequency band extracted by optimal combination can effectively enhance the fault feature, and is more conducive to efficient detection of photovoltaic DC series arc faults.
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