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Stress Wave Signal Denoising Using Ensemble Empirical Mode Decomposition and an Instantaneous Half Period Model

机译:整体经验模态分解和瞬时半周期模型的应力波信号降噪

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摘要

Stress-wave-based techniques have been proven to be an accurate nondestructive test means for determining the quality of wood based materials and they been widely used for this purpose. However, the results are usually inconsistent, partially due to the significant difficulties in processing the nonlinear, non-stationary stress wave signals which are often corrupted by noise. In this paper, an ensemble empirical mode decomposition (EEMD) based approach with the aim of signal denoising was proposed and applied to stress wave signals. The method defined the time interval between two adjacent zero-crossings within the intrinsic mode function (IMF) as the instantaneous half period (IHP) and used it as a criterion to detect and classify the noise oscillations. The waveform between the two adjacent zero-crossings was retained when the IHP was larger than the predefined threshold, whereas the waveforms with smaller IHP were set to zero. Finally the estimated signal was obtained by reconstructing the processed IMFs. The details of threshold choosing rules were also discussed in the paper. Additive Gaussian white noise was embedded into real stress wave signals to test the proposed method. Butterworth low pass filter, EEMD-based low pass filter and EEMD-based thresholding filter were used to compare filtering performance. Mean square error between clean and filtered stress waves was used as filtering performance indexes. The results demonstrated the excellent efficiency of the proposed method.
机译:基于应力波的技术已被证明是确定木质材料质量的准确无损测试手段,并且已广泛用于此目的。然而,结果通常是不一致的,部分是由于在处理经常被噪声破坏的非线​​性非平稳应力波信号时存在很大的困难。本文提出了一种基于整体经验模态分解(EEMD)的信号去噪方法,并将其应用于应力波信号。该方法将本征模式函数(IMF)中两个相邻零交叉点之间的时间间隔定义为瞬时半周期(IHP),并将其用作检测和分类噪声振荡的标准。当IHP大于预定义的阈值时,将保留两个相邻的零交叉之间的波形,而将IHP较小的波形设置为零。最后,通过重构处理后的IMF获得估计信号。本文还讨论了阈值选择规则的细节。将加性高斯白噪声嵌入到真实应力波信号中以测试该方法。使用Butterworth低通滤波器,基于EEMD的低通滤波器和基于EEMD的阈值滤波器来比较滤波性能。干净应力波与滤波后应力波之间的均方误差用作滤波性能指标。结果证明了该方法的优异效率。

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