EMI-based Diagnosis to Grounding Grids by Combining Ensemble Empirical Mode Decomposition and ICA

Hengli Song, Qiang Wu, H. Dong
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引用次数: 4

Abstract

Grounding grids have been performed an essential role in electric transformer substations. The nondestructive diagnosis system applies transforms the condition of the undergrounding conductors to the surficial induced electric signal in sensing coil. However, the induced signal cannot be used directly to diagnosis due to the raw measurement is a mixture of responses from signal of interest, strong interference and other unknown noises. Therefore the separation of individual signatures from the mixture is posed as a blind source separation (BSS) problem. To extract the induced signal corrupted by noise, the independent component analysis (ICA) method is considered. By combining the EEMD and FastICA, the single-channel signal is decomposed into its ICs. The desired signal is then reconstructed to visualize the break point of the grounding grid. The results show this approach can be used to effectively diagnosis grounding gird in harsh electromagnetic environment.
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基于集成经验模态分解和ICA的接地网电磁干扰诊断
接地网在变电站中起着至关重要的作用。该无损诊断系统的应用是将地下导体的状态转化为感应线圈中的表面感应电信号。然而,由于原始测量是兴趣信号、强干扰和其他未知噪声的混合响应,感应信号不能直接用于诊断。因此,从混合信号中分离单个信号是一个盲源分离(BSS)问题。为了提取受噪声干扰的感应信号,采用了独立分量分析方法。通过结合EEMD和FastICA,将单通道信号分解成其ic。然后重建所需的信号以可视化接地网的断点。结果表明,该方法可以有效地诊断恶劣电磁环境下的接地网。
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