Study on the Extraction Method for Track-Side Acoustic Features Based on Cyclic Stationary Analysis

Author:

Zhao Xing1ORCID,Lu Yiming1,Chang Baoxian1,Chen Liqun1

Affiliation:

1. College of Locomotive and Rolling Stock Engineering, Dalian Jiaotong University, Dalian 116028, China

Abstract

Because of its non-contact measurement characteristics, trackside acoustic technology is now utilized for train bearing fault diagnosis. However, the collected acoustic signal produces Doppler distortions that can impact the accuracy of bearing fault diagnosis. Additionally, when a fault occurs in the train bearing, it is analyzed using cyclostationary methods. In this study, we combine bearing fault characteristics with Doppler distortion correction and cyclostationary analysis methods. The trackside acoustic test platform is employed to collect and test the fault signals from bearings. These signals are processed and analyzed using Doppler distortion correction algorithms and cyclostationary techniques. A comparison between time domain maps and power spectrum maps before and after correction reveals an increase in SNR (signal to noise ratio) and a more concentrated energy distribution within the fault signals—at least a 50% improvement is observed. To further validate our method’s effectiveness, we select existing TADS equipment from a depot to collect bearing signals for analysis and processing using our proposed bearing fault diagnosis method. Comparison of time domain maps and power spectrum maps before and after correction shows clearer overall images and amplitude increase of nearly 125%. Therefore, we have successfully developed a stepwise method for bearing fault diagnosis based on cyclostationary Doppler distortion correction.

Funder

The National Science Foundation of China Youth Science Fund Project

Dalian High-level Talents Innovation Support Program

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Industrial and Manufacturing Engineering,Control and Optimization,Mechanical Engineering,Computer Science (miscellaneous),Control and Systems Engineering

Reference31 articles.

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2. Ouyang, K. (2018). Research on Circular Array Short-Time Technique for Train Bearing Wayside Acoustic Signal Separation and Distortion Correction. [Ph.D. Thesis, University of Science and Technology of China].

3. Trackside acoustic detector system(TADS) for rolling bearing of train;Xia;Harbin Bear.,2005

4. Structural Health Monitoring in the Railway Industry: A Review;Barke;Struct. Health Monit.,2005

5. Neural pattern identification of railroad wheel-bearing faults from audible acoustic signals: Comparison of FFT, CWT, and DWT features;Choe;Tex. A&M Univ.,1997

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