Prediction of Railway Vehicles’ Dynamic Behavior with Machine Learning Algorithms

IF 0.8 Q4 ENGINEERING, CIVIL Electronic Journal of Structural Engineering Pub Date : 2018-01-01 DOI:10.56748/ejse.182271
N. Nadarajah, A. Shamdani, G. Hardie, W.K.Chiu, H. Widyastuti
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引用次数: 1

Abstract

The dynamic performance of railway vehicles needs to be carefully monitored to ensure their safe operation. Presently a number of systems such as the Vehicle Track Interaction Monitor and the Instrumented Revenue Vehicles, utilize a number of on-board inertial sensors to obtain near-real time information on the dynamic performance of railway vehicles. These systems provide rich data sets that give an indication of the underlying track condition and the corresponding dynamic response. This paper outlines the use of Machine learning to develop dynamic behavior predictive models for railway vehicles from measured data. This study worked on the development of 2 types of predictive models, viz. regression and classification model. The regression model predicted the time series dynamic response amplitude and the classification model classified the track sections based on the response distribution over it. Train speed and parameters estimated from the unsprung mass were used as predictors in the model. After the trial of a number of predictive models the Ensemble Tree Bagger method was found to have highest overall prediction accuracy. These predictive models can be utilized as a decision making tool to determine safe operational limits and prioritize maintenance interventions.
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基于机器学习算法的铁路车辆动态行为预测
需要仔细监测铁路车辆的动态性能,以确保其安全运行。目前,许多系统,如车辆-轨道交互监视器和仪表化收入车辆,利用许多车载惯性传感器来获得有关铁路车辆动态性能的近实时信息。这些系统提供了丰富的数据集,这些数据集给出了底层轨道状况和相应的动态响应的指示。本文概述了使用机器学习从测量数据中开发铁路车辆动态行为预测模型。本研究开发了两种类型的预测模型,即回归模型和分类模型。回归模型预测时间序列的动态响应幅度,分类模型根据其响应分布对轨道区段进行分类。模型中使用列车速度和根据簧下质量估计的参数作为预测因素。在对许多预测模型进行试验后,发现集合树Bagger方法具有最高的总体预测精度。这些预测模型可作为决策工具,用于确定安全操作限制和优先考虑维护干预措施。
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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来源期刊
Electronic Journal of Structural Engineering
Electronic Journal of Structural Engineering Engineering-Civil and Structural Engineering
CiteScore
1.10
自引率
16.70%
发文量
0
期刊介绍: The Electronic Journal of Structural Engineering (EJSE) is an international forum for the dissemination and discussion of leading edge research and practical applications in Structural Engineering. It comprises peer-reviewed technical papers, discussions and comments, and also news about conferences, workshops etc. in Structural Engineering. Original papers are invited from individuals involved in the field of structural engineering and construction. The areas of special interests include the following, but are not limited to: Analytical and design methods Bridges and High-rise Buildings Case studies and failure investigation Innovations in design and new technology New Construction Materials Performance of Structures Prefabrication Technology Repairs, Strengthening, and Maintenance Stability and Scaffolding Engineering Soil-structure interaction Standards and Codes of Practice Structural and solid mechanics Structural Safety and Reliability Testing Technologies Vibration, impact and structural dynamics Wind and earthquake engineering. EJSE is seeking original papers (research or state-of the art reviews) of the highest quality for consideration for publication. The papers will be published within 3 to 6 months. The papers are expected to make a significant contribution to the research and development activities of the academic and professional engineering community.
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