Publication | Open Access
Classification of ball bearing faults using a hybrid intelligent model
76
Citations
35
References
2017
Year
Fault DiagnosisEngineeringFault ForecastingIntelligent SystemsCondition MonitoringReliability EngineeringData ScienceData MiningPattern RecognitionDecision TreeSystems EngineeringFuzzy LogicStructural Health MonitoringComputer EngineeringVibration SignalsSignal ProcessingAutomatic Fault DetectionMechanical SystemsIndustrial InformaticsFault DetectionHybrid Intelligent Model
In this paper, classification of ball bearing faults using vibration signals is presented. A review of condition monitoring using vibration signals with various intelligent systems is first presented. A hybrid intelligent model, FMM-RF, consisting of the Fuzzy Min-Max (FMM) neural network and the Random Forest (RF) model, is proposed. A benchmark problem is tested to evaluate the practicality of the FMM-RF model. The proposed model is then applied to a real-world dataset. In both cases, power spectrum and sample entropy features are used for classification. Results from both experiments show good accuracy achieved by the proposed FMM-RF model. In addition, a set of explanatory rules in the form of a decision tree is extracted to justify the predictions. The outcomes indicate the usefulness of FMM-RF in performing classification of ball bearing faults.
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