Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal Analysis

The underground local fan and auxiliary fan also play a vital role in the underground air quality, compared with the system fan. However, the number of underground local fans and auxiliary fans is large and widely distributed, which is disadvantageous to adopt the same method of online monitoring an...

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Main Authors: Shijie Song, Dandan Qiu, Sunwei Qin
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Advances in Civil Engineering
Online Access:http://dx.doi.org/10.1155/2021/9650644
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spelling doaj-0ff26aa03c2548ea9ea5dfb0ce93bac52021-09-06T00:00:08ZengHindawi LimitedAdvances in Civil Engineering1687-80942021-01-01202110.1155/2021/9650644Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal AnalysisShijie Song0Dandan Qiu1Sunwei Qin2School of Resources and Safety EngineeringSchool of Resources and Safety EngineeringChemistry and Environmental EngineeringThe underground local fan and auxiliary fan also play a vital role in the underground air quality, compared with the system fan. However, the number of underground local fans and auxiliary fans is large and widely distributed, which is disadvantageous to adopt the same method of online monitoring and fault diagnosis method as the system fan. In order to find a new fault diagnosis method, which is cost-effective and reliable, this paper proposes a fault diagnosis method based on sound signal. It analyzes the source of fan noise and studies the overall scheme of mine fan fault diagnosis expert system based on sound signal. The fault expert system consists of four parts: signal acquisition and noise elimination, feature extraction, state recognition, and fault diagnosis. Its principle is briefly introduced. The denoising method of wavelet is adopted in this paper. Wavelet packet is used to extract the characteristics of sound signal, and the energy size and energy proportion of each frequency component are used as the basis of knowledge acquisition and reasoning. Through the analysis of the measured signals of the fan in the normal operating state, the feature vectors were extracted as the basis for the discrimination of the normal state after noise elimination. At the same time, the audio processing software was used to simulate the sound signals in three fault states. Then, the feature vector of the fault state is extracted, which is obviously different from that of the fan in the normal operation. As the basis of fault state analysis of the expert system, it lays the foundation for the realization of the expert system of mine fan equipment running state diagnosis.http://dx.doi.org/10.1155/2021/9650644
collection DOAJ
language English
format Article
sources DOAJ
author Shijie Song
Dandan Qiu
Sunwei Qin
spellingShingle Shijie Song
Dandan Qiu
Sunwei Qin
Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal Analysis
Advances in Civil Engineering
author_facet Shijie Song
Dandan Qiu
Sunwei Qin
author_sort Shijie Song
title Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal Analysis
title_short Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal Analysis
title_full Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal Analysis
title_fullStr Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal Analysis
title_full_unstemmed Research on the Fault Diagnosis Method of Mine Fan Based on Sound Signal Analysis
title_sort research on the fault diagnosis method of mine fan based on sound signal analysis
publisher Hindawi Limited
series Advances in Civil Engineering
issn 1687-8094
publishDate 2021-01-01
description The underground local fan and auxiliary fan also play a vital role in the underground air quality, compared with the system fan. However, the number of underground local fans and auxiliary fans is large and widely distributed, which is disadvantageous to adopt the same method of online monitoring and fault diagnosis method as the system fan. In order to find a new fault diagnosis method, which is cost-effective and reliable, this paper proposes a fault diagnosis method based on sound signal. It analyzes the source of fan noise and studies the overall scheme of mine fan fault diagnosis expert system based on sound signal. The fault expert system consists of four parts: signal acquisition and noise elimination, feature extraction, state recognition, and fault diagnosis. Its principle is briefly introduced. The denoising method of wavelet is adopted in this paper. Wavelet packet is used to extract the characteristics of sound signal, and the energy size and energy proportion of each frequency component are used as the basis of knowledge acquisition and reasoning. Through the analysis of the measured signals of the fan in the normal operating state, the feature vectors were extracted as the basis for the discrimination of the normal state after noise elimination. At the same time, the audio processing software was used to simulate the sound signals in three fault states. Then, the feature vector of the fault state is extracted, which is obviously different from that of the fan in the normal operation. As the basis of fault state analysis of the expert system, it lays the foundation for the realization of the expert system of mine fan equipment running state diagnosis.
url http://dx.doi.org/10.1155/2021/9650644
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AT sunweiqin researchonthefaultdiagnosismethodofminefanbasedonsoundsignalanalysis
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