Acceleration-based friction coefficient estimation of a rail vehicle using feedforward NN: validation with track measurements

被引:1
|
作者
Abduraxman, Bilal [1 ]
Hubbard, Peter [1 ]
Harrison, Tim [1 ]
Ward, Christopher [1 ,3 ]
Fletcher, David [2 ]
Lewis, Roger [2 ]
White, Ben [2 ]
机构
[1] Loughborough Univ, Wolfson Sch Mech Elect & Mfg Engn, Loughborough, England
[2] Univ Sheffield, Dept Mech Engn, Sheffield, England
[3] RAIB, Derby, England
关键词
Low adhesion detection; friction coefficient estimation; slip; creep; railhead conditioning; ADHESION ESTIMATION; CONTACT; MODEL; IDENTIFICATION; FORCES;
D O I
10.1080/00423114.2024.2323600
中图分类号
TH [机械、仪表工业];
学科分类号
0802 ;
摘要
Low friction can lead to poor adhesion conditions between the rail and wheel, which is detrimental to rail vehicle operation and safety. Up to date knowledge of the rail-wheel friction level is currently not available across rail networks, meaning planning mitigation strategies is difficult. This paper presents a real-time friction coefficient estimation algorithm based on a feed-forward neural network (FNN). Unlike conventional methods, the FNN does not depend on slip/adhesion curves or creep force models, and only requires wheelset longitudinal acceleration and speed. The wheelset acceleration and friction measurements are obtained by running a two-car rail vehicle on a friction-modified track with five different levels of friction conditions at four different vehicle speeds. Four different FNNs are trained for four speed conditions, and their estimation performance were validated by training multiple FNNs and testing them in each speed case using new sets of data. Validation results show that the average mean absolute errors from the four FNNs remains below 0.0083.
引用
收藏
页码:3235 / 3254
页数:20
相关论文
共 50 条
  • [31] Estimation of vehicle sideslip angle and tire-road friction coefficient based on magnetometer with GPS
    J.-H. Yoon
    S. Eben Li
    C. Ahn
    International Journal of Automotive Technology, 2016, 17 : 427 - 435
  • [32] Analysis of the Potential of Onboard Vehicle Sensors for Model-based Maximum Friction Coefficient Estimation
    Lampe, Nicolas
    Ziaukas, Zygimantas
    Westerkamp, Clemens
    Jacob, Hans-Georg
    2023 AMERICAN CONTROL CONFERENCE, ACC, 2023, : 1622 - 1628
  • [33] Erratum to: Estimation of Road Friction Coefficient in Different Road Conditions Based on Vehicle Braking Dynamics
    You-Qun Zhao
    Hai-Qing Li
    Fen Lin
    Jian Wang
    Xue-Wu Ji
    Chinese Journal of Mechanical Engineering, 2017, 30 : 1475 - 1475
  • [34] Estimation of vehicle sideslip angle and tire-road friction coefficient based on magnetometer with GPS
    Yoon, J. -H.
    Li, S. Eben
    Ahn, C.
    INTERNATIONAL JOURNAL OF AUTOMOTIVE TECHNOLOGY, 2016, 17 (03) : 427 - 435
  • [35] Dynamic vehicle-track interaction in switches and crossings and the influence of rail pad stiffness - field measurements and validation of a simulation model
    Palsson, Bjorn A.
    Nielsen, Jens C. O.
    VEHICLE SYSTEM DYNAMICS, 2015, 53 (06) : 734 - 755
  • [36] Road tire friction coefficient estimation for four wheel drive electric vehicle based on moving optimal estimation strategy
    Feng, Yuchi
    Chen, Hong
    Zhao, Haiyan
    Zhou, Hao
    MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2020, 139
  • [37] Observer-based estimation of velocity and tire-road friction coefficient for vehicle control systems
    Ying Peng
    Jian Chen
    Yan Ma
    Nonlinear Dynamics, 2019, 96 : 363 - 387
  • [38] Observer-based estimation of velocity and tire-road friction coefficient for vehicle control systems
    Peng, Ying
    Chen, Jian
    Ma, Yan
    NONLINEAR DYNAMICS, 2019, 96 (01) : 363 - 387
  • [39] Prediction of Track Quality Index (TQI) Using Vehicle Acceleration Data based on Machine Learning
    Choi, Chanyong
    Kim, Hunki
    Kim, Young Cheul
    Kim, Sang-su
    JOURNAL OF THE KOREAN GEOSYNTHETIC SOCIETY, 2020, 19 (01): : 45 - 53
  • [40] Intelligent Vehicle Trajectory Tracking Control Based on VFF-RLS Road Friction Coefficient Estimation
    Nie, Yanxin
    Hua, Yiding
    Zhang, Minglu
    Zhang, Xiaojun
    ELECTRONICS, 2022, 11 (19)