首页|Fault feature extraction method for rotating machinery based on a CEEMDAN-LPP algorithm and synthetic maximum index
Fault feature extraction method for rotating machinery based on a CEEMDAN-LPP algorithm and synthetic maximum index
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NSTL
Elsevier
Fault feature extraction plays an important role in rotating machinery fault diagnosis. With progress in the development of signal processing methods, more and more features can be obtained from rotating machinery signals. However, these often contain many superfluous features, and the commonly used single evaluation criterion in the feature selection procedure is often inadequate for selecting sensitive features. With this problem in mind, a synthetic maximum index, with which both the global and local properties of features can be considered, is proposed for feature selection. Combining this index with the advantages of complete ensemble empirical mode decomposition with adaptive noise and the locality preserving projection algorithm, a novel fault feature extraction method for rotating machinery is proposed. The average fault recognition accuracies of this method on three datasets are 99.79%, 99.17% and 100%, respectively. Comparing it with seven comparative methods, the results demonstrate that the proposed method has better performance.
Rotating machineryFeature extractionFault diagnosisLocality preserving projectionSynthetic maximum indexComplete ensemble empirical mode decomposition with adaptive noiseEMPIRICAL MODE DECOMPOSITIONDIAGNOSIS METHODENSEMBLESPECTRUM