4.5 Article

Establishment and verification of three-dimensional dynamic model for heavy-haul train-track coupled system

期刊

VEHICLE SYSTEM DYNAMICS
卷 54, 期 11, 页码 1511-1537

出版社

TAYLOR & FRANCIS LTD
DOI: 10.1080/00423114.2016.1213862

关键词

Heavy-haul train; longitudinal train dynamics; vehicle-track coupled dynamics; coupler force

资金

  1. National Natural Science Foundation of China [51478399]
  2. Scientific Discipline Development Project of Southwest Jiaotong University
  3. Science and technology research project of Hebei Province [BJ2016047]

向作者/读者索取更多资源

For the long heavy-haul train, the basic principles of the inter-vehicle interaction and train-track dynamic interaction are analysed firstly. Based on the theories of train longitudinal dynamics and vehicle-track coupled dynamics, a three-dimensional (3-D) dynamic model of the heavy-haul train-track coupled system is established through a modularised method. Specifically, this model includes the subsystems such as the train control, the vehicle, the wheel-rail relation and the line geometries. And for the calculation of the wheel-rail interaction force under the driving or braking conditions, the large creep phenomenon that may occur within the wheel-rail contact patch is considered. For the coupler and draft gear system, the coupler forces in three directions and the coupler lateral tilt angles in curves are calculated. Then, according to the characteristics of the long heavy-haul train, an efficient solving method is developed to improve the computational efficiency for such a large system. Some basic principles which should be followed in order to meet the requirement of calculation accuracy are determined. Finally, the 3-D train-track coupled model is verified by comparing the calculated results with the running test results. It is indicated that the proposed dynamic model could simulate the dynamic performance of the heavy-haul train well.

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