Publication | Closed Access
Event-Triggered Discrete Component Prognosis of Hybrid Systems Using Degradation Model Selection
19
Citations
26
References
2020
Year
EngineeringDiagnosisFault ForecastingSystem ReliabilityReliability EngineeringSystems EngineeringModeling And SimulationFailure DetectionStructural Health MonitoringComputer EngineeringReliability PredictionAutomatic Fault DetectionDiscrete Event SystemFault EstimationReliability ModellingProcess ControlDegradation Model SelectionHybrid SystemsFault Detection
In this article, a new event-triggering mechanism based prognosis scheme is proposed for discrete components in hybrid systems using degradation model selection. As an advantage over existing prognosis methods for hybrid systems, a more challenging case that multiple discrete components suffer from intermittent faults with unknown degradations is investigated. By introducing a hybrid structure where a centralized structure is used for fault detection and isolation and a distributed structure is adopted for fault estimation, the fault isolation performance under multiple discrete faults condition can be enhanced using the IMCSM and the fault estimation can be implemented with less computational burden using the decomposed submodels. With the aid of tumbling window, the total duration of intermittent fault in tumbling window can be treated as the intermittent fault feature. Since the degradation model describing the feature evolution is unknown in practice and may vary with the usage condition, an event-triggered prognosis method is proposed where a degradation model selection method is developed to find the best fit model under various usage conditions and thus remaining useful life prediction can be achieved. Experimental results on an electrical hybrid system validate the developed scheme.
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