| Literature DB >> 22346576 |
Lixin Gao1, Zijing Yang, Ligang Cai, Huaqing Wang, Peng Chen.
Abstract
A nonlinear redundant lifting wavelet packet algorithm was put forward in this study. For the node signals to be decomposed in different layers, predicting operators and updating operators with different orders of vanishing moments were chosen to take norm l(p) of the scale coefficient and wavelet coefficient acquired from decomposition, the predicting operator and updating operator corresponding to the minimal norm value were used as the optimal operators to match the information characteristics of a node. With the problems of frequency alias and band interlacing in the analysis of redundant lifting wavelet packet being investigated, an improved algorithm for decomposition and node single-branch reconstruction was put forward. The normalized energy of the bottommost decomposition node coefficient was calculated, and the node signals with the maximal energy were extracted for demodulation. The roller bearing faults were detected successfully with the improved analysis on nonlinear redundant lifting wavelet packet being applied to the fault diagnosis of the roller bearings of the finishing mills in a plant. This application proved the validity and practicality of this method.Entities:
Keywords: fault diagnosis; nonlinear; redundant lifting wavelet packet; roller bearings
Mesh:
Year: 2010 PMID: 22346576 PMCID: PMC3274082 DOI: 10.3390/s110100260
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1.Expression of multi-phase matrix for lifting wavelets.
Figure 2.Node spectrogram about redundant lifting wavelet packet decomposition of simulation signal.
Figure 3.Node sequence in redundant lifting wavelet packet decomposition.
Figure 4.Schematic solution to band interlacing.
Figure 6.Block diagram about node-signal single-branch reconstruction of improved nonlinear redundant lifting wavelet packets.
Figure 7.Driving chain of finishing mill in a steel mill.
l (×1029) of all nodes.
| (0,1) | (1,1) | (1,2) | (2,1) | (2,2) | (2,3) | (2,4) | |
|---|---|---|---|---|---|---|---|
| (4,4) | 8.4610 | 10.029 | 9.7141 | 10.466 | 10.430 | 10.288 | 9.9694 |
| (12,4) | 8.4799 | 9.9424 | 9.7322 | 10.443 | 10.419 | 10.300 | 9.9515 |
| (12,12) | 8.4499 | 9.9080 | 9.7571 | 10.438 | 10.425 | 10.300 | 9.9772 |
| (20,4) | 8.4866 | 9.9333 | 9.7375 | 10.438 | 10.413 | 10.314 | 9.9509 |
| (20,12) | 8.4482 | 9.9071 | 9.7595 | 10.434 | 10.421 | 10.312 | 9.9774 |
| (20,20) | 8.4536 | 9.9088 | 9.7654 | 10.423 | 10.425 | 10.308 | 9.9871 |
Optimal predicting operator and updating operator for nodes.
| (0,1) | (1,1) | (1,2) | (2,1) | (2,2) | (2,3) | (2,4) | |
| (20,12) | (20,12) | (4,4) | (20,20) | (20,4) | (4,4) | (20,4) |
Figure 9.Triple-layer nonlinear redundant lifting wavelet packet decomposition of signals.
Figure 10.Wavelet packet energy analysis.
Figure 11.Modulation analysis: (a) local frequency spectrogram of signals. (b) modulation spectrogram after single-branch reconstruction of nodes.
Figure 12.Schematic damage of bearing outer-ring of axis I at the southern output terminal of the step-up box.
Selection of predicting operators and updating operators.
| 4 | 12 | 12 | 20 | 20 | 20 | |
| 4 | 4 | 12 | 4 | 12 | 20 |