4.6 Article

Component-scaled signal reconstruction for enhanced noise filtration

Journal

JOURNAL OF VIBRATION AND CONTROL
Volume 29, Issue 3-4, Pages 700-713

Publisher

SAGE PUBLICATIONS LTD
DOI: 10.1177/10775463211051461

Keywords

empirical mode decomposition; noise removal; digital image correlation; intrinsic mode function; nonlinear vibration

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This research presents a signal denoising method based on empirical mode decomposition (EMD) and linear combinations of intrinsic mode functions (IMFs). The proposed method effectively addresses the issue of mode mixing and optimizes the linear combination to minimize noise and maximize information in the denoised signal. The method is demonstrated on two applications and compared to existing denoising approaches, showing better performance.
This research introduces a procedure for signal denoising based on linear combinations of intrinsic mode functions (IMFs) extracted using empirical mode decomposition (EMD). The method, termed component-scaled signal reconstruction, employs the standard EMD algorithm, with no enhancements to decompose the signal into a set of IMFs. The problem of mode mixing is leveraged for noise removal by constructing an optimal linear combination of the potentially mixed IMFs. The optimal linear combination is determined using an optimization routine with an objective function that maximizes and minimizes the information and noise, respectively, in the denoised signal. The method is demonstrated by applying it to a computer-generated voice sample and the displacement response of a cantilever beam with local stiffness nonlinearity. In the first application, the noise is introduced into the sample manually by adding a Gaussian white-noise signal to the signal. In the second application, the response of the entire beam is filmed using two 1-megapixel cameras, and the three-dimensional displacement field is extracted using digital image correlation. The noise in this application arises entirely from the images captured. The proposed method is compared to existing EMD, ensemble EMD, and LMD based denoising approaches and is found to perform better.

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