Abstract
Developing a proper approach for extracting the fault characteristics of rolling element bearings is a significant behavior in variable operation conditions. Generally, without a tachometer, the tacholess order tracking method is well established by instantaneous rotation frequency curve estimation using time-frequency analysis. However, the fault features are often masked in strong background noises. An adaptive cross-validation thresholding de-noising algorithm is employed to improve the performance of the traditional envelope order spectrum method. First, the general linear chirplet transform is applied to estimate the instantaneous rotation frequency curve. Second, with the help of the instantaneous rotation frequency curve, the raw non-stationary signal is transferred to an angular domain by the re-sampling technique. Third, the adaptive cross-validation thresholding de-noising algorithm is employed to purify the angular domain signal to improve the fault feature extraction performance of the envelope order spectrum method. Comparisons using numerical simulations and experimental investigations of bearing faults under variable speed conditions are given to show the superiority of the present method.
Highlights
Rolling element bearings are one of the core elements of rotating motion in mechanical systems, such as planetary gearbox transmissions and motor devices [1]–[7]
The weak fault diagnosis method for rolling bearing under variable speed conditions using the improved empirical wavelet transform (IEWT)-based enhanced envelope order spectrum is proposed in [26], in which cuckoo search algorithm (CSM) was used to determine the support interval of the EWT to ensure the accuracy of the angular domain signal decomposition
The time-frequency representation (TFR) of the filtered signal by generalized linear chirplet transform (GLCT) is shown in Fig. 4 (a), and the estimated instantaneous rotation frequency (IRF) curve is shown in Fig. 4(b), which validly characterizes the tendency of the rotation frequency
Summary
Rolling element bearings are one of the core elements of rotating motion in mechanical systems, such as planetary gearbox transmissions and motor devices [1]–[7]. The weak fault diagnosis method for rolling bearing under variable speed conditions using the improved empirical wavelet transform (IEWT)-based enhanced envelope order spectrum is proposed in [26], in which cuckoo search algorithm (CSM) was used to determine the support interval of the EWT to ensure the accuracy of the angular domain signal decomposition. This avoided presetting related parameters, it increased the computation complexity. The raw signal is de-noised by ACVTD
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