Publication | Closed Access
Pattern Recognition for Automatic Machinery Fault Diagnosis
60
Citations
5
References
2004
Year
Fault DiagnosisCondition MonitoringMachine VisionImage AnalysisMachinery Fault DiagnosisData MiningPattern RecognitionEngineeringDiagnosisStructural Health MonitoringKnowledge DiscoveryGeneric MethodologyAutomatic Fault DetectionComputer ScienceIndustrial InformaticsFault DetectionVibration AnalysisEffective Feature Extraction
We present a generic methodology for machinery fault diagnosis through pattern recognition techniques. The proposed method has the advantage of dealing with complicated signatures, such as those present in the vibration signals of rolling element bearings with and without defects. The signature varies with the location and severity of bearing defects, load and speed of the shaft, and different bearing housing structures. More specifically, the proposed technique contains effective feature extraction, good learning ability, reliable feature fusion, and a simple classification algorithm. Examples with experimental testing data were used to illustrate the idea and effectiveness of the proposed method.
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