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Rail Wear and Remaining Life Prediction Using Meta-Models

INTERNATIONAL JOURNAL OF RAIL TRANSPORTATION(2020)

Univ Twente

Cited 23|Views38
Abstract
The study presented in this paper proposes a method to estimate the Remaining Useful Life (RUL) of railway tracks determined by wear and taking into account various track geometry and usage profile parameters. The relation between these parameters and rail wear is established by means of meta-models derived from physical models. These models are obtained with regression analysis where the best fit is found from a relatively large set of numerical experiments for various scenarios. The specific parameter settings for these scenarios are obtained by using the Latin Hypercube Sampling (LHS) method. Furthermore, for the rail profile, which is one of the input parameters for the meta-model, it is shown that the evolution due to wear in moderate curves can be characterized by only one parameter. The findings in this work including are valuable for Infrastructure Managers (IMs) and can easily be implemented in maintenance decision support tools.
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Key words
Wear,wheel-rail contact,multi-body dynamic simulation,meta-modeling,latin hypercube sampling
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Chat Paper

要点】:本文提出了一种基于元模型预测铁路轨道剩余使用寿命(RUL)的方法,通过考虑轨道几何形状和使用状况参数,以及轨道磨损与这些参数之间的关系。

方法】:研究通过回归分析,从大量不同场景的数值实验中找到最佳拟合,从而建立物理模型衍生的元模型。

实验】:利用拉丁超立方采样(LHS)方法获得特定参数设置,实验使用的数据集为各种场景的数值实验,结果显示该方法对于基础设施管理者(IMs)具有实用价值,并且可以容易地应用于维护决策支持工具中。