Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratio

Aiming at the nonlinear and low signal-to-noise ratio characteristics of mine hoist vibration signal in complex environments, a mine hoist vibration signal fusion denoising algorithm based on complete EEMD with adaptive noise (CEEMDAN) and adaptive wavelet threshold is proposed. Firstly, the CEEMDAN...

Full description

Bibliographic Details
Main Authors: WANG Houchao, NIU Qiang, CHEN Pengpeng, XIA Shixiong
Format: Article
Language:zho
Published: Editorial Department of Industry and Mine Automation 2023-02-01
Series:Gong-kuang zidonghua
Subjects:
Online Access:http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.18019
_version_ 1797869041564516352
author WANG Houchao
NIU Qiang
CHEN Pengpeng
XIA Shixiong
author_facet WANG Houchao
NIU Qiang
CHEN Pengpeng
XIA Shixiong
author_sort WANG Houchao
collection DOAJ
description Aiming at the nonlinear and low signal-to-noise ratio characteristics of mine hoist vibration signal in complex environments, a mine hoist vibration signal fusion denoising algorithm based on complete EEMD with adaptive noise (CEEMDAN) and adaptive wavelet threshold is proposed. Firstly, the CEEMDAN algorithm is used to decompose the noisy mine hoist vibration signal to obtain the intrinsic mode component (IMF) and the residual. The IMF component is judged for high and low frequency. The t-test method is used to test whether the mean value is significantly different from 0. The IMF component which tends to 0 is the high-frequency component, and the IMF component which is significantly different from 0 is the low-frequency component. Secondly, the appropriate wavelet basis function and decomposition level are selected. The high-frequency IMF component is denoised by using the adaptive wavelet threshold method. Finally, the processed high-frequency IMF components and the unprocessed low-frequency IMF components are reconstructed with the residuals to obtain the de-noised vibration signal from the fusion algorithm. The CEEMDAN denoising method, CEEMD-wavelet threshold combined denoising method, CEEMDAN-wavelet threshold combined denoising method and CEEMDAN-adaptive wavelet threshold fusion denoising method are used to denoise the simulated signal respectively. The results show the following points. ① The signal denoised by the CEEMDAN-adaptive wavelet threshold fusion denoising method is similar to the original signal in local waveform features and signal peak values. Some features of the signal waveform have been restored well. The feature information of the original signal has been well preserved in the process of denoising. ② The composite evaluation index H is used as the objective evaluation standard. The H value of the CEEMDAN-adaptive wavelet threshold fusion denoising method is the smallest. This shows that the denoising effect of the fusion denoising algorithm for the simulation signal is better than that of other denoising methods. The experiment is carried out on the running mine hoist in a mine in Heilongjiang Province. The results show the following points. ① The db4 wavelet basis function is used to decompose the noisy IMF component in four layers. The signal de-noised by CEEMDAN-adaptive wavelet threshold fusion de-noising method is smooth. Some waveform features of the signal have also been restored well. While removing the noise, the feature information of the original signal has been retained to the greatest extent. ② In the actual mine hoist vibration signal denoising process, the CEEMDAN-adaptive wavelet threshold fusion denoising method has the smallest H value and the best denoising effect.
first_indexed 2024-04-10T00:05:21Z
format Article
id doaj.art-31df8a773d1743f895fc2d840b06cd47
institution Directory Open Access Journal
issn 1671-251X
language zho
last_indexed 2024-04-10T00:05:21Z
publishDate 2023-02-01
publisher Editorial Department of Industry and Mine Automation
record_format Article
series Gong-kuang zidonghua
spelling doaj.art-31df8a773d1743f895fc2d840b06cd472023-03-17T00:55:37ZzhoEditorial Department of Industry and Mine AutomationGong-kuang zidonghua1671-251X2023-02-01491637210.13272/j.issn.1671-251x.18019Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratioWANG HouchaoNIU QiangCHEN PengpengXIA ShixiongAiming at the nonlinear and low signal-to-noise ratio characteristics of mine hoist vibration signal in complex environments, a mine hoist vibration signal fusion denoising algorithm based on complete EEMD with adaptive noise (CEEMDAN) and adaptive wavelet threshold is proposed. Firstly, the CEEMDAN algorithm is used to decompose the noisy mine hoist vibration signal to obtain the intrinsic mode component (IMF) and the residual. The IMF component is judged for high and low frequency. The t-test method is used to test whether the mean value is significantly different from 0. The IMF component which tends to 0 is the high-frequency component, and the IMF component which is significantly different from 0 is the low-frequency component. Secondly, the appropriate wavelet basis function and decomposition level are selected. The high-frequency IMF component is denoised by using the adaptive wavelet threshold method. Finally, the processed high-frequency IMF components and the unprocessed low-frequency IMF components are reconstructed with the residuals to obtain the de-noised vibration signal from the fusion algorithm. The CEEMDAN denoising method, CEEMD-wavelet threshold combined denoising method, CEEMDAN-wavelet threshold combined denoising method and CEEMDAN-adaptive wavelet threshold fusion denoising method are used to denoise the simulated signal respectively. The results show the following points. ① The signal denoised by the CEEMDAN-adaptive wavelet threshold fusion denoising method is similar to the original signal in local waveform features and signal peak values. Some features of the signal waveform have been restored well. The feature information of the original signal has been well preserved in the process of denoising. ② The composite evaluation index H is used as the objective evaluation standard. The H value of the CEEMDAN-adaptive wavelet threshold fusion denoising method is the smallest. This shows that the denoising effect of the fusion denoising algorithm for the simulation signal is better than that of other denoising methods. The experiment is carried out on the running mine hoist in a mine in Heilongjiang Province. The results show the following points. ① The db4 wavelet basis function is used to decompose the noisy IMF component in four layers. The signal de-noised by CEEMDAN-adaptive wavelet threshold fusion de-noising method is smooth. Some waveform features of the signal have also been restored well. While removing the noise, the feature information of the original signal has been retained to the greatest extent. ② In the actual mine hoist vibration signal denoising process, the CEEMDAN-adaptive wavelet threshold fusion denoising method has the smallest H value and the best denoising effect.http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.18019mine hoistfusion denoisingvibration signaladaptive wavelet thresholdlow signal-to-noise ratio
spellingShingle WANG Houchao
NIU Qiang
CHEN Pengpeng
XIA Shixiong
Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratio
Gong-kuang zidonghua
mine hoist
fusion denoising
vibration signal
adaptive wavelet threshold
low signal-to-noise ratio
title Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratio
title_full Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratio
title_fullStr Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratio
title_full_unstemmed Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratio
title_short Fusion denoising algorithm for vibration signal of mine hoist with low signal-to-noise ratio
title_sort fusion denoising algorithm for vibration signal of mine hoist with low signal to noise ratio
topic mine hoist
fusion denoising
vibration signal
adaptive wavelet threshold
low signal-to-noise ratio
url http://www.gkzdh.cn/article/doi/10.13272/j.issn.1671-251x.18019
work_keys_str_mv AT wanghouchao fusiondenoisingalgorithmforvibrationsignalofminehoistwithlowsignaltonoiseratio
AT niuqiang fusiondenoisingalgorithmforvibrationsignalofminehoistwithlowsignaltonoiseratio
AT chenpengpeng fusiondenoisingalgorithmforvibrationsignalofminehoistwithlowsignaltonoiseratio
AT xiashixiong fusiondenoisingalgorithmforvibrationsignalofminehoistwithlowsignaltonoiseratio