Publication | Open Access
Fault Detection of Railway Vehicle Suspension Systems Using Multiple-Model Approach
60
Citations
7
References
2008
Year
Fault DiagnosisReliability EngineeringEngineeringSuspension FailuresFault EstimationRailway Vehicle ModelCivil EngineeringMechatronicsMechanical SystemsStructural Health MonitoringDetection AlgorithmSystems EngineeringVehicle DynamicAutomatic Fault DetectionFault AnalysisTrain ControlFault DetectionTransportation Engineering
This paper demonstrates the possibility to detect suspension failures of railway vehicles using a multiple-model approach from on-board measurement data. The railway vehicle model used includes the lateral and yaw motions of the wheelsets and bogie, and the lateral motion of the vehicle body, with sensors measuring the lateral acceleration and yaw rate of the bogie, and lateral acceleration of the body. The detection algorithm is formulated based on the Interacting Multiple-Model (IMM) algorithm. The IMM method has been applied for detecting faults in vehicle suspension systems in a simulation study. The mode probabilities and states of vehicle suspension systems are estimated based on a Kalman Filter (KF). This algorithm is evaluated in simulation examples. Simulation results indicate that the algorithm effectively detects on-board faults of railway vehicle suspension systems.
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