Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization Algorithm

As the sound signal of a machine contains abundant information and is easy to measure, acoustic-based monitoring or diagnosis systems exhibit obvious superiority, especially in some extreme conditions. However, the sound directly collected from industrial field is always polluted. In order to elimin...

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Main Authors: Jing Xu, Zhongbin Wang, Chao Tan, Lei Si, Lin Zhang, Xinhua Liu
Format: Article
Language:English
Published: MDPI AG 2016-07-01
Series:Applied Sciences
Subjects:
Online Access:http://www.mdpi.com/2076-3417/6/7/199
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spelling doaj-1760f6118e8e42f6bc954bae4ba2a5062020-11-24T21:13:34ZengMDPI AGApplied Sciences2076-34172016-07-016719910.3390/app6070199app6070199Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization AlgorithmJing Xu0Zhongbin Wang1Chao Tan2Lei Si3Lin Zhang4Xinhua Liu5School of Mechatronic Engineering, China University of Mining and Technology, No.1 Daxue Road, Xuzhou 221116, ChinaSchool of Mechatronic Engineering, China University of Mining and Technology, No.1 Daxue Road, Xuzhou 221116, ChinaSchool of Mechatronic Engineering, China University of Mining and Technology, No.1 Daxue Road, Xuzhou 221116, ChinaSchool of Mechatronic Engineering, China University of Mining and Technology, No.1 Daxue Road, Xuzhou 221116, ChinaSchool of Mechatronic Engineering, China University of Mining and Technology, No.1 Daxue Road, Xuzhou 221116, ChinaSchool of Mechatronic Engineering, China University of Mining and Technology, No.1 Daxue Road, Xuzhou 221116, ChinaAs the sound signal of a machine contains abundant information and is easy to measure, acoustic-based monitoring or diagnosis systems exhibit obvious superiority, especially in some extreme conditions. However, the sound directly collected from industrial field is always polluted. In order to eliminate noise components from machinery sound, a wavelet threshold denoising method optimized by an improved fruit fly optimization algorithm (WTD-IFOA) is proposed in this paper. The sound is firstly decomposed by wavelet transform (WT) to obtain coefficients of each level. As the wavelet threshold functions proposed by Donoho were discontinuous, many modified functions with continuous first and second order derivative were presented to realize adaptively denoising. However, the function-based denoising process is time-consuming and it is difficult to find optimal thresholds. To overcome these problems, fruit fly optimization algorithm (FOA) was introduced to the process. Moreover, to avoid falling into local extremes, an improved fly distance range obeying normal distribution was proposed on the basis of original FOA. Then, sound signal of a motor was recorded in a soundproof laboratory, and Gauss white noise was added into the signal. The simulation results illustrated the effectiveness and superiority of the proposed approach by a comprehensive comparison among five typical methods. Finally, an industrial application on a shearer in coal mining working face was performed to demonstrate the practical effect.http://www.mdpi.com/2076-3417/6/7/199wavelet threshold denoisingsound signalwavelet transformimproved fruit fly optimization algorithmfly distance range
collection DOAJ
language English
format Article
sources DOAJ
author Jing Xu
Zhongbin Wang
Chao Tan
Lei Si
Lin Zhang
Xinhua Liu
spellingShingle Jing Xu
Zhongbin Wang
Chao Tan
Lei Si
Lin Zhang
Xinhua Liu
Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization Algorithm
Applied Sciences
wavelet threshold denoising
sound signal
wavelet transform
improved fruit fly optimization algorithm
fly distance range
author_facet Jing Xu
Zhongbin Wang
Chao Tan
Lei Si
Lin Zhang
Xinhua Liu
author_sort Jing Xu
title Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization Algorithm
title_short Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization Algorithm
title_full Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization Algorithm
title_fullStr Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization Algorithm
title_full_unstemmed Adaptive Wavelet Threshold Denoising Method for Machinery Sound Based on Improved Fruit Fly Optimization Algorithm
title_sort adaptive wavelet threshold denoising method for machinery sound based on improved fruit fly optimization algorithm
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2016-07-01
description As the sound signal of a machine contains abundant information and is easy to measure, acoustic-based monitoring or diagnosis systems exhibit obvious superiority, especially in some extreme conditions. However, the sound directly collected from industrial field is always polluted. In order to eliminate noise components from machinery sound, a wavelet threshold denoising method optimized by an improved fruit fly optimization algorithm (WTD-IFOA) is proposed in this paper. The sound is firstly decomposed by wavelet transform (WT) to obtain coefficients of each level. As the wavelet threshold functions proposed by Donoho were discontinuous, many modified functions with continuous first and second order derivative were presented to realize adaptively denoising. However, the function-based denoising process is time-consuming and it is difficult to find optimal thresholds. To overcome these problems, fruit fly optimization algorithm (FOA) was introduced to the process. Moreover, to avoid falling into local extremes, an improved fly distance range obeying normal distribution was proposed on the basis of original FOA. Then, sound signal of a motor was recorded in a soundproof laboratory, and Gauss white noise was added into the signal. The simulation results illustrated the effectiveness and superiority of the proposed approach by a comprehensive comparison among five typical methods. Finally, an industrial application on a shearer in coal mining working face was performed to demonstrate the practical effect.
topic wavelet threshold denoising
sound signal
wavelet transform
improved fruit fly optimization algorithm
fly distance range
url http://www.mdpi.com/2076-3417/6/7/199
work_keys_str_mv AT jingxu adaptivewaveletthresholddenoisingmethodformachinerysoundbasedonimprovedfruitflyoptimizationalgorithm
AT zhongbinwang adaptivewaveletthresholddenoisingmethodformachinerysoundbasedonimprovedfruitflyoptimizationalgorithm
AT chaotan adaptivewaveletthresholddenoisingmethodformachinerysoundbasedonimprovedfruitflyoptimizationalgorithm
AT leisi adaptivewaveletthresholddenoisingmethodformachinerysoundbasedonimprovedfruitflyoptimizationalgorithm
AT linzhang adaptivewaveletthresholddenoisingmethodformachinerysoundbasedonimprovedfruitflyoptimizationalgorithm
AT xinhualiu adaptivewaveletthresholddenoisingmethodformachinerysoundbasedonimprovedfruitflyoptimizationalgorithm
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