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Application of Cross-correlation Denoising Algorithm for UHF Partial Discharge Detection

机译:互相关去噪算法在特高频局部放电检测中的应用

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For insulation condition assessment of HV power apparatus, partial discharge (PD) monitoring is one of the most effective techniques. However, on-line PD measurements are affected by high levels of electromagnetic interference (EMI) that makes sensitive PD detection very difficult. On the basis of crosscorrelation algorithm, this paper described a new PD extraction method which can reject noise from weak UHF signal. According to the analysis of PD feature, a double exponential model was setup. Then a damped oscillatory pulse (DOP) based on this model was applied for cross-correlation calculation with the test signal. In order to stimulate the noisy on-site testing environment, narrow band interference and Gaussian white noise was used in the laboratory tests. The noises have been successfully eliminated because the signal and noise was incorrelate with each other. The denoising performance of cross-correlation algorithm was analyzed by Signal-to-Noise (SNR) and correlation coefficient. The results showed that the method was effective in rejecting noise in high levels of interference environment. In addition, PD pulse integrity has been greatly improved.
机译:对于高压电力设备的绝缘状况评估,局部放电(PD)监控是最有效的技术之一。但是,在线局部放电测量受到高水平的电磁干扰(EMI)的影响,这使得灵敏的局部放电检测非常困难。在互相关算法的基础上,描述了一种新的局部放电提取方法,该方法可以抑制微弱UHF信号的噪声。根据对局部放电特征的分析,建立了一个双指数模型。然后,将基于该模型的阻尼振荡脉冲(DOP)与测试信号进行互相关计算。为了刺激嘈杂的现场测试环境,在实验室测试中使用了窄带干扰和高斯白噪声。因为信号和噪声彼此不相关,所以噪声已被成功消除。通过信噪比(SNR)和相关系数分析了互相关算法的去噪性能。结果表明,该方法可有效抑制高干扰环境下的噪声。此外,PD脉冲的完整性得到了极大的改善。

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