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Analysis and prediction of double-carriage train wheel wear based on SIMPACK and neural networks

Shuwen Wang, Hao Guo, Siyuan Zhang, D.C. Barton, Peter C. Brooks

2022Advances in Mechanical Engineering26 citationsDOIOpen Access PDF

Abstract

Wheel and rail wear seriously affects the safety and reliability of train operations. In this study single-carriage and double-carriage models considering the connecting unit of a high-speed train are developed to investigate the normal forces, lateral forces, and lateral displacements of wheelsets. Based on the results from these models, the Archard wear model is employed to predict the wheel wear. In addition, based on the daily measured data, a nonlinear autoregulatory (NAR) model and a wavelet neural network (WNN) model are developed to predict the wheel wear over a longer time period. The simulation results show that, compared with the single-carriage model, the normal forces, lateral forces, and lateral displacements of the wheelsets close to the connecting unit in the double-carriage model increase to a certain extent dependent on the speed. The wheel wear predictions show that the wheel wear on the wheelsets near the connecting unit is slightly larger than on the wheelsets far from the connecting unit. Based on the mean square error, the NAR model has somewhat better performance in the wheel wear prediction than the WNN model. The research results represent an important contribution to the maintenance and safe operation of high-speed trains.

Topics & Concepts

TrainStructural engineeringCarriageEngineeringSimulationAutomotive engineeringGeographyCartographyRailway Engineering and DynamicsMechanical stress and fatigue analysisGear and Bearing Dynamics Analysis