Zuo Yun, Hu Gebiao, Gan Fan, Zeng Zhiwu, Lin Zhichi, Wang Xinxun, Xu Ruiqing, Wen Liang, Hu Shubing, Le Haihong, Wu Runze, Wang Jingang
Construction Branch State Grid Jiangxi Electric Power Co., Ltd., Nanchang 330036, China.
Yichun Power Supply Branch of State Grid Jiangxi Electric Power Co., Ltd., Yichun 336000, China.
Sensors (Basel). 2025 Jun 19;25(12):3830. doi: 10.3390/s25123830.
Pulsed eddy current (PEC) testing technology has been widely used in the field of non-destructive testing of metal grounding structures due to its wide-band excitation and response characteristics. However, multi-source noise in industrial environments can significantly degrade the performance of PEC sensors, thereby limiting their detection accuracy. This study proposes a multi-modal joint pulsed eddy current signal sensor denoising method that integrates the inductive disturbance mechanism. This method constructs the Improved Whale Optimization -Variational Mode Decomposition-Singular Value Decomposition-Wavelet Threshold Denoising (IWOA-VMD-SVD-WTD) fourth-order processing architecture: IWOA adaptively optimizes the VMD essential variables (K, α) and employs the optimized VMD to decompose the perception coefficient (IMF) of the PEC signal. It utilizes the correlation coefficient criterion to filter and identify the primary noise components within the signal, and the SVD-WTD joint denoising model is established to reconstruct each component to remove the noise signal received by the PEC sensor. To ascertain the efficacy of this approach, we compared the IWOA-VMD-SVD-WTD method with other denoising methods under three different noise levels through experiments. The test results show that compared with other VMD-based denoising techniques, the average signal-to-noise ratio (SNR) of the PEC signal received by the receiving coil for 200 noise signals in different noise environments is 24.31 dB, 29.72 dB and 29.64 dB, respectively. The average SNR of the other two denoising techniques in different noise environments is 15.48 dB, 18.87 dB, 18.46 dB and 19.32 dB, 27.13 dB, 26.78 dB, respectively, which is significantly better than other denoising methods. In addition, in practical applications, this method is better than other technologies in denoising PEC signals and successfully achieves noise reduction and signal feature extraction. This study provides a new technical solution for extracting pure and impurity-free PEC signals in complex electromagnetic environments.
脉冲涡流(PEC)检测技术因其宽带激励和响应特性,已在金属接地结构无损检测领域得到广泛应用。然而,工业环境中的多源噪声会显著降低PEC传感器的性能,从而限制其检测精度。本研究提出了一种融合感应干扰机制的多模态联合脉冲涡流信号传感器去噪方法。该方法构建了改进的鲸鱼优化 - 变分模态分解 - 奇异值分解 - 小波阈值去噪(IWOA - VMD - SVD - WTD)四阶处理架构:IWOA自适应优化VMD的关键变量(K,α),并采用优化后的VMD对PEC信号的感知系数(IMF)进行分解。利用相关系数准则对信号中的主要噪声成分进行滤波和识别,并建立SVD - WTD联合去噪模型对各成分进行重构,以去除PEC传感器接收到的噪声信号。为确定该方法的有效性,我们通过实验将IWOA - VMD - SVD - WTD方法与其他去噪方法在三种不同噪声水平下进行了比较。测试结果表明,在不同噪声环境下,对于200个噪声信号,接收线圈接收到的PEC信号的平均信噪比(SNR),该方法分别为24.31 dB、29.72 dB和29.64 dB。其他两种去噪技术在不同噪声环境下的平均SNR分别为15.48 dB、18.87 dB、18.46 dB和19.32 dB、27.13 dB、26.78 dB,明显优于其他去噪方法。此外,在实际应用中,该方法在PEC信号去噪方面优于其他技术,并成功实现了降噪和信号特征提取。本研究为在复杂电磁环境中提取纯净无杂质的PEC信号提供了一种新的技术解决方案。