Abstract

Wheelset bearings are crucial mechanical components of high-speed trains. Wheelset-bearing fault detection is of great significance to ensure the safety of high-speed train service. Convolution sparse representations (CSRs) provide an excellent framework for extracting impulse responses induced by bearing faults. However, the performance of CSR on extracting impulse responses is fairly sensitive to inappropriate selection of method-related parameters, and a convolution model for representing the impulse responses has not been discussed. In view of these two unsolved problems, a convolutional representation model of the impulse response series is developed. A novel fault detection method, named adaptive CSR (ACSR), is then proposed based on combinations of CSR and methods for estimating three parameters related to CSR. Finally, the effectiveness of the proposed ACSR method is validated via simulation, bench testing, and a real-life running test employing a high-speed train.

Highlights

  • Wheelset bearings are crucial mechanical components of high-speed trains, and their major roles are to transform the rotational motion of wheelsets to the linear motion of highspeed trains, transmit driving motor torques, and bear the vertical loads of frames and car bodies

  • The fault-characteristic frequency harmonics obtained by EEMD and spectra kurtosis were confused by some uncorrelated spectra lines, indicating that the proposed adaptive CSR (ACSR) had good performance when extracting impulse response series (IRS) caused by wheelset bearings

  • (2) ACSR was proposed based on the combination of Convolution sparse representations (CSRs) and a method for estimating three parameters

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Summary

Introduction

Wheelset bearings are crucial mechanical components of high-speed trains, and their major roles are to transform the rotational motion of wheelsets to the linear motion of highspeed trains, transmit driving motor torques, and bear the vertical loads of frames and car bodies. Sparse representation based on matching pursuit and explicit dictionaries has been used to extract impulse responses induced by rotational machine faults for gear and bearing fault detection [43]. CSR has obtained satisfied fault detection results, convolution sparse representation framework or model for representing impulse response series has still not been discussed, and its fault detection performance is sensitive to inappropriate selections of method-related parameters. In view of these two unsolved problems, a convolutional representation model of impulse response series induced by bearing faults is proposed.

Convolutional Representation Model of Impulse Response Series
Basic Theory of CSR
The Proposed ACSR
Case 1
Case 2
Experimental Verification
Conclusion
Full Text
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