Freight train derailment severity prediction: a physics-informed one-dimensional model

Di Kang, Steven W. Kirkpatrick, Zhipeng Zhang, Xiang Liu, Zheyong Bian
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Abstract

Purpose Accurately estimating the severity of derailment is a crucial step in quantifying train derailment consequences and, thereby, mitigating its impacts. The purpose of this paper is to propose a simplified approach aimed at addressing this research gap by developing a physics-informed 1-D model. The model is used to simulate train dynamics through a time-stepping algorithm, incorporating derailment data after the point of derailment. Design/methodology/approach In this study, a simplified approach is adopted that applies a 1-D kinematic analysis with data obtained from various derailments. These include the length and weight of the rail cars behind the point of derailment, the train braking effects, derailment blockage forces, the grade of the track and the train rolling and aerodynamic resistance. Since train braking/blockage effects and derailment blockage forces are not always available for historical or potential train derailment, it is also necessary to fit the historical data and find optimal parameters to estimate these two variables. Using these fitted parameters, a detailed comparison can be performed between the physics-informed 1-D model and previous statistical models to predict the derailment severity. Findings The results show that the proposed model outperforms the Truncated Geometric model (the latest statistical model used in prior research) in estimating derailment severity. The proposed model contributes to the understanding and prevention of train derailments and hazmat release consequences, offering improved accuracy for certain scenarios and train types Originality/value This paper presents a simplified physics-informed 1-D model, which could help understand the derailment mechanism and, thus, is expected to estimate train derailment severity more accurately for certain scenarios and train types compared with the latest statistical model. The performance of the braking response and the 1-D model is verified by comparing known ride-down profiles with estimated ones. This validation process ensures that both the braking response and the 1-D model accurately represent the expected behavior.
货运列车脱轨严重程度预测:物理信息一维模型
目的准确估计脱轨的严重程度是量化列车脱轨后果并进而减轻其影响的关键一步。本文旨在提出一种简化方法,通过开发一个物理信息一维模型来弥补这一研究空白。该模型通过时间步进算法,结合脱轨点之后的脱轨数据,用于模拟列车动态。设计/方法/途径在本研究中,采用了一种简化方法,利用从各种脱轨事故中获得的数据进行一维运动学分析。这些数据包括脱轨点后面轨道车辆的长度和重量、列车制动效应、脱轨阻塞力、轨道坡度以及列车滚动阻力和空气动力阻力。由于列车制动/阻塞效应和脱轨阻塞力并不总是能用于历史或潜在的列车脱轨事故,因此还需要对历史数据进行拟合,并找到估算这两个变量的最佳参数。利用这些拟合参数,可以对物理信息一维模型和以前的统计模型进行详细比较,以预测脱轨严重程度。结果结果表明,在估计脱轨严重程度方面,所提出的模型优于截断几何模型(以前研究中使用的最新统计模型)。本文提出了一个简化的物理信息一维模型,该模型有助于理解脱轨机理,因此,与最新的统计模型相比,有望更准确地估计某些情况下和某些类型列车的脱轨严重程度。制动响应和一维模型的性能是通过比较已知的脱轨曲线和估计的脱轨曲线来验证的。这一验证过程可确保制动响应和一维模型准确地反映预期行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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