Abstract
Singular value decomposition (SVD) is an effective method used in bearing fault diagnosis. Ideally two important problems should be solved in any diagnosis: one is how to decide the dimension embedding of the trajectory matrix (TM); the other is how to select the singular value (SV) representing the intrinsic information of the bearing condition. In order to solve such problems, this study proposed an effective method to find the optimal TM and SV and perform fault signal filtering based on false nearest neighbors (FNN) and statistical information criteria. First of all, the embedded dimension of the trajectory matrix is determined with the FNN according to the chaos theory. Then the trajectory matrix is subjected to SVD, which is helpful to acquire all the combinations of SV and decomposed signals. According to the similarities of the signal changed back and signal in normal state based on statistical information criteria, the SV representing fault signal can be obtained. The spectrum envelope demodulation method can be used to perform effective analysis on the fault. The effectiveness of the proposed method is verified with simulation signals and low-speed bearing fault signals, and compared with the published SVD-based method and Fast Kurtogram diagnosis method.
Highlights
Bearings are widely used in rotating machinery, and bearing failures are the most frequent problem
The rest of the singular values combined with the chaotic phase space reconstruction, and the Singular value decomposition (SVD) and statistical information criteria can be used to decomposed signals for rebuilding the one-dimensional signal can obtain the filtered fault signal
This study proposed an effective SV selection filtering method based on false nearest neighbor
Summary
Bearings are widely used in rotating machinery, and bearing failures are the most frequent problem. Zhao et al [23] proposed selecting a singular value using difference spectra The performance of this method, will be reduced against a strong background of noisy signals, as the method mainly focuses on the maximum peak position of the constructed singular spectrum, which may result in the loss of important information about other peaks. Due to the above problems, this study proposes anFirst effective to to the singular reconstruction of chaos space, theunder embedded dimension of First the trajectory matrix select values theory and applied it inphase fault diagnosis low-speed rotation. Method has been fault signal the decomposed signal back to a one-dimensional signal, andThis effective analysis can verified with simulation experiments and engineering experiment,This andmethod compared published be performed on the faults using spectrum envelope modulation. With the published SVD-based method and Fast Kurtogram; Section 6 presents the conclusions
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