Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
7195403 | Reliability Engineering & System Safety | 2016 | 20 Pages |
Abstract
In this study, the Wavelet Packets transform energy combined with Artificial Neural Networks with Radial Basis Function architecture (RBF-ANN) are applied to vibration signals to detect cracks in a rotating shaft. Data were obtained from a rig where the shaft rotates under its own weight, at steady state at different crack conditions. Nine defect conditions were induced in the shaft (with depths from 4% to 50% of the shaft diameter). The parameters for Wavelet Packets transform and RBF-ANN are selected to optimize its success rates results. Moreover, 'Probability of Detection' curves were calculated showing probabilities of detection close to 100% of the cases tested from the smallest crack size with a 1.77% of false alarms.
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Authors
M.J. Gómez, C. Castejón, J.C. GarcÃa-Prada,