State Key Laboratory of Coal Mine Disaster Dynamics and Control, School of Resources and Safety Engineering, Chongqing University, Chongqing 400044, China.
School of Resources and Safety Engineering, Central South University, Changsha 410083, China.
Sensors (Basel). 2021 Aug 4;21(16):5271. doi: 10.3390/s21165271.
Signal denoising is one of the most important issues in signal processing, and various techniques have been proposed to address this issue. A combined method involving wavelet decomposition and multiscale principal component analysis (MSPCA) has been proposed and exhibits a strong signal denoising performance. This technique takes advantage of several signals that have similar noises to conduct denoising; however, noises are usually quite different between signals, and wavelet decomposition has limited adaptive decomposition abilities for complex signals. To address this issue, we propose a signal denoising method based on ensemble empirical mode decomposition (EEMD) and MSPCA. The proposed method can conduct MSPCA-based denoising for a single signal compared with the former MSPCA-based denoising methods. The main steps of the proposed denoising method are as follows: First, EEMD is used for adaptive decomposition of a signal, and the variance contribution rate is selected to remove components with high-frequency noises. Subsequently, the Hankel matrix is constructed on each component to obtain a higher order matrix, and the main score and load vectors of the PCA are adopted to denoise the Hankel matrix. Next, the PCA-denoised component is denoised using soft thresholding. Finally, the stacking of PCA- and soft thresholding-denoised components is treated as the final denoised signal. Synthetic tests demonstrate that the EEMD-MSPCA-based method can provide good signal denoising results and is superior to the low-pass filter, wavelet reconstruction, EEMD reconstruction, Hankel-SVD, EEMD-Hankel-SVD, and wavelet-MSPCA-based denoising methods. Moreover, the proposed method in combination with the AIC picking method shows good prospects for processing microseismic waves.
信号去噪是信号处理中最重要的问题之一,已经提出了各种技术来解决这个问题。已经提出了一种涉及小波分解和多尺度主成分分析(MSPCA)的组合方法,并且表现出很强的信号去噪性能。该技术利用具有相似噪声的几个信号进行去噪;然而,噪声在信号之间通常非常不同,并且小波分解对复杂信号的自适应分解能力有限。为了解决这个问题,我们提出了一种基于集合经验模态分解(EEMD)和 MSPCA 的信号去噪方法。与以前的基于 MSPCA 的去噪方法相比,该方法可以对单个信号进行基于 MSPCA 的去噪。所提出的去噪方法的主要步骤如下:首先,使用 EEMD 对信号进行自适应分解,并选择方差贡献率来去除高频噪声的分量。随后,在每个分量上构建 Hankel 矩阵,以获得更高阶矩阵,并采用 PCA 的主得分和负载向量对 Hankel 矩阵进行去噪。接下来,使用软阈值对 PCA 去噪的分量进行去噪。最后,将 PCA 和软阈值去噪分量的堆叠视为最终的去噪信号。合成测试表明,基于 EEMD-MSPCA 的方法可以提供良好的信号去噪结果,并且优于低通滤波器、小波重建、EEMD 重建、Hankel-SVD、EEMD-Hankel-SVD 和小波-MSPCA 基于的去噪方法。此外,该方法与 AIC 拾取方法相结合,在处理微地震波方面具有良好的前景。