Abstract

To carry out state identification and fault diagnosis of mechanical equipment, a new method is proposed for fault diagnosis of mechanical equipment based on the reconstruction of feature vector in the fractional Fourier transform domain. First, the time series of vibration signals are performed by fractional Fourier transform in different orders, according to statistical characteristic in the fractional Fourier transform domain. The kurtosis coefficients are then used for searching the optimal order. Next, taking the normal signal as the tracking target, the difference between the detection signal and the normal signal in fractional Fourier transform domain is calculated in the optimal order, so the normal signal is filtered and the state vector is extracted. The characteristic parameters of the correlation dimension, the zero-order moment, and the kurtosis coefficient are then restructured as a feature vector, and finally, the states are recognized using the k-nearest neighbor cross-validation estimation method. The effect of feature extraction is analyzed by correlation coefficient and diagnostic effect is evaluated using the correct rate of diagnosis. Experiment and analysis illustrates that this proposed target tracking filter fault diagnosis method based on reconstruction of feature vector in fractional Fourier transform domain is simple and intuitive. This method has a favorable feature extraction effect, high accuracy rate of diagnosis, high state recognition efficiency, and good recognition stability, making it a viable option for quantitative real-time state recognition and fault diagnosis of mechanical vibration equipment.

Highlights

  • The fractional Fourier transform (FRFT) is a unified time-frequency transform tool

  • Based on the analysis of statistical moments and fractal characteristics for the FRFT mode of vibration signal, to better extract the characteristic state of the signal and recognize the working state accurately, a target tracking fault diagnosis method based on statistical moment and correlation dimension of FRFT is proposed

  • Using the analysis of fractal characteristics and statistical moments of the FRFT of vibration signal as a foundation, an algorithm for fault diagnosis based on FRFT target filter is proposed

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Summary

Introduction

The fractional Fourier transform (FRFT) is a unified time-frequency transform tool. As a generalized Fourier transform, FRFT has the characteristics of general time-frequency analysis tools which can better reflect these properties of the signal and exhibits advantages in interference suppression. To determine the detection signal of vibrating equipment in different states, the order range between 0 and 4 for FRFT is used; the zero-order moment m0, kurtosis coefficient Kx, and correlation dimension D for the corresponding FRFT mode vector is calculated; and the statistics moment and fractal characteristics of FRFT can be analyzed. Based on the analysis of statistical moments and fractal characteristics for the FRFT mode of vibration signal, to better extract the characteristic state of the signal and recognize the working state accurately, a target tracking fault diagnosis method based on statistical moment and correlation dimension of FRFT is proposed.

Results
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