Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction Wheels

To suppress noise in signals, a denoising method called AIC−SVD is proposed on the basis of the singular value decomposition (SVD) and the Akaike information criterion (AIC). First, the Hankel matrix is chosen as the trajectory matrix of the signals, and its optimal number of rows and colu...

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Main Authors: Xianbo Yin, Yang Xu, Xiaowei Sheng, Yan Shen
Format: Article
Language:English
Published: MDPI AG 2019-11-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/22/5032
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author Xianbo Yin
Yang Xu
Xiaowei Sheng
Yan Shen
author_facet Xianbo Yin
Yang Xu
Xiaowei Sheng
Yan Shen
author_sort Xianbo Yin
collection DOAJ
description To suppress noise in signals, a denoising method called AIC−SVD is proposed on the basis of the singular value decomposition (SVD) and the Akaike information criterion (AIC). First, the Hankel matrix is chosen as the trajectory matrix of the signals, and its optimal number of rows and columns is selected according to the maximum energy of the singular values. On the basis of the improved AIC, the valid order of the optimal matrix is determined for the vibration signals mixed with Gaussian white noise and colored noise. Subsequently, the denoised signals are reconstructed by inverse operation of SVD and the averaging method. To verify the effectiveness of AIC−SVD, it is compared with wavelet threshold denoising (WTD) and empirical mode decomposition with Savitzky−Golay filter (EMD−SG). Furthermore, a comprehensive indicator of denoising (CID) is introduced to describe the denoising performance. The results show that the denoising effect of AIC−SVD is significantly better than those of WTD and EMD−SG. On applying AIC−SVD to the micro-vibration signals of reaction wheels, the weak harmonic parameters can be successfully extracted during pre-processing. The proposed method is self-adaptable and robust while avoiding the occurrence of over-denoising.
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spelling doaj.art-a0c910ccf21543c59a7f0f228f338d952022-12-22T03:59:43ZengMDPI AGSensors1424-82202019-11-011922503210.3390/s19225032s19225032Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction WheelsXianbo Yin0Yang Xu1Xiaowei Sheng2Yan Shen3College of Mechanical Engineering, Donghua University, Shanghai 201620, ChinaCollege of Mechanical Engineering, Donghua University, Shanghai 201620, ChinaCollege of Mechanical Engineering, Donghua University, Shanghai 201620, ChinaCollege of Mechanical Engineering, Donghua University, Shanghai 201620, ChinaTo suppress noise in signals, a denoising method called AIC−SVD is proposed on the basis of the singular value decomposition (SVD) and the Akaike information criterion (AIC). First, the Hankel matrix is chosen as the trajectory matrix of the signals, and its optimal number of rows and columns is selected according to the maximum energy of the singular values. On the basis of the improved AIC, the valid order of the optimal matrix is determined for the vibration signals mixed with Gaussian white noise and colored noise. Subsequently, the denoised signals are reconstructed by inverse operation of SVD and the averaging method. To verify the effectiveness of AIC−SVD, it is compared with wavelet threshold denoising (WTD) and empirical mode decomposition with Savitzky−Golay filter (EMD−SG). Furthermore, a comprehensive indicator of denoising (CID) is introduced to describe the denoising performance. The results show that the denoising effect of AIC−SVD is significantly better than those of WTD and EMD−SG. On applying AIC−SVD to the micro-vibration signals of reaction wheels, the weak harmonic parameters can be successfully extracted during pre-processing. The proposed method is self-adaptable and robust while avoiding the occurrence of over-denoising.https://www.mdpi.com/1424-8220/19/22/5032signal denoisingsingular value decompositionakaike information criterionreaction wheelmicro-vibration
spellingShingle Xianbo Yin
Yang Xu
Xiaowei Sheng
Yan Shen
Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction Wheels
Sensors
signal denoising
singular value decomposition
akaike information criterion
reaction wheel
micro-vibration
title Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction Wheels
title_full Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction Wheels
title_fullStr Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction Wheels
title_full_unstemmed Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction Wheels
title_short Signal Denoising Method Using AIC–SVD and Its Application to Micro-Vibration in Reaction Wheels
title_sort signal denoising method using aic svd and its application to micro vibration in reaction wheels
topic signal denoising
singular value decomposition
akaike information criterion
reaction wheel
micro-vibration
url https://www.mdpi.com/1424-8220/19/22/5032
work_keys_str_mv AT xianboyin signaldenoisingmethodusingaicsvdanditsapplicationtomicrovibrationinreactionwheels
AT yangxu signaldenoisingmethodusingaicsvdanditsapplicationtomicrovibrationinreactionwheels
AT xiaoweisheng signaldenoisingmethodusingaicsvdanditsapplicationtomicrovibrationinreactionwheels
AT yanshen signaldenoisingmethodusingaicsvdanditsapplicationtomicrovibrationinreactionwheels