Abstract

The vibration signals of bearings and gears measured from rotating machinery usually have nonlinear, nonstationary characteristics. The local projection algorithm cannot only reduce the noise of the nonlinear system, but can also preserve the nonlinear deterministic structure of the signal. The influence of centroid selection on the performance of noise reduction methods is analyzed, and the multiscale local projection method of centroid was proposed in this paper. This method considers both the geometrical shape and statistical error of the signal in high dimensional phase space, which can effectively eliminate the noise and preserve the complete geometric structure of the attractors. The diagonal slice spectrum can identify the frequency components of quadratic phase coupling and enlarge the coupled frequency component in the nonlinear signal. Therefore, the proposed method based on the above two algorithms can achieve more accurate results of fault diagnosis of gears and rolling bearings. The simulated signal is used to verify its effectiveness in a numerical simulation. Then, the proposed method is conducted for fault diagnosis of gears and rolling bearings in application researches. The fault characteristics of faulty bearings and gears can be extracted successfully in the researches. The experimental results indicate the effectiveness of the novel proposed method.

Highlights

  • Rolling bearings and gears have been widely used in varieties of rotating machineries.The phenomenon of the whole equipment downtime due to the failure of key components such as rolling bearings and gears is obvious

  • When the multiscale local projection algorithm is used separately, it is not easy to extract the modulation frequency component in the fault signal, while the diagonal slice spectrum can identify the frequency components of quadratic phase coupling and enlarge the coupled frequency component in the nonlinear signal

  • The diagonal slice spectrum can identify the frequency components of quadratic phase coupling and enlarge the coupled frequency component in the nonlinear signal

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Summary

Introduction

Rolling bearings and gears have been widely used in varieties of rotating machineries. When the multiscale local projection algorithm is used separately, it is not easy to extract the modulation frequency component in the fault signal, while the diagonal slice spectrum can identify the frequency components of quadratic phase coupling and enlarge the coupled frequency component in the nonlinear signal. According to the characteristics of gear and rolling bearing fault signals in mechanical equipment, a method of mechanical fault feature extraction based on the multiscale local projective algorithm and diagonal slice spectrum is proposed. The basic principle and characteristics of the proposed feature extraction method of a mechanical fault based on the multiscale local projection algorithm and diagonal slice spectrum are introduced in the Section 2.

Standard Local Projection Algorithm
Multiscale Local Projection Algorithm
The Basic Principle of Diagonal Slice Spectrum
Numerical Simulation of Chaotic Signals
Simulation of Diagonal Slice Spectrum
Application to Case Western Reserve University Bearing Data
Application to Drivetrain Diagnostics Simulator
Findings
Conclusions
Full Text
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