Iliopoulos Ilias A, Sakellariou John S
Stochastic Mechanical Systems & Automation (SMSA) Laboratory, Department of Mechanical Engineering and Aeronautics, University of Patras, 26504 Patras, Greece.
Sensors (Basel). 2024 Jan 8;24(2):375. doi: 10.3390/s24020375.
The problem of remaining useful life estimation (RULE) of hollow worn railway vehicle wheels in terms of remaining mileage via wheel tread depth estimation using on-board vibration signals from a single accelerometer on the bogie frame is presently investigated. This is achieved based on the introduction of a statistical time series method that employs: (i) advanced data-driven stochastic Functionally Pooled models for the modeling of the vehicle dynamics under different wheel tread depths in a range of interest until a critical limit, as well as tread depth estimation through a proper optimization procedure, and (ii) a wheel tread depth evolution function with respect to the vehicle running mileage that interconnects the estimated hollow wear with the remaining useful mileage. The method's RULE performance is investigated via hundreds of Simpack-based Monte Carlo simulations with an Attiko Metro S.A. vehicle and many hollow worn wheels scenarios which are not used for the method's training. The obtained results indicate the accurate estimation of the wheels tread depth with a mean absolute error of ∼0.07 mm that leads to a corresponding small error of ∼3% with respect to the wheels remaining useful mileage. In addition, the comparison with a recently introduced Multiple Model (MM)-based multi-health state classification method for RULE, demonstrates the better performance of the postulated method that achieves 81.17% True Positive Rate (TPR) which is significantly higher than the 45.44% of the MM method.
目前正在研究通过使用转向架框架上单个加速度计的车载振动信号来估计轮辋深度,从而根据剩余里程来估计空心磨损铁路车辆车轮的剩余使用寿命(RULE)问题。这是通过引入一种统计时间序列方法来实现的,该方法采用:(i)先进的数据驱动随机功能池模型,用于对感兴趣范围内不同轮辋深度直至临界极限的车辆动力学进行建模,以及通过适当的优化程序进行轮辋深度估计;(ii)关于车辆行驶里程的轮辋深度演变函数,该函数将估计的空心磨损与剩余使用寿命联系起来。通过基于Attiko Metro S.A.车辆的数百次基于Simpack的蒙特卡罗模拟以及许多未用于该方法训练的空心磨损车轮场景,研究了该方法的RULE性能。获得的结果表明,轮辋深度估计准确,平均绝对误差约为0.07毫米,这导致相对于车轮剩余使用寿命的相应小误差约为3%。此外,与最近引入的基于多模型(MM)的RULE多健康状态分类方法进行比较,证明了该假设方法的更好性能,其真阳性率(TPR)达到81.17%,显著高于MM方法的45.44%。