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A novel short-range prediction model for railway track irregularity

机译:铁路轨道不平顺的新型短程预测模型

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摘要

In recent years, with axle loads, train loads, transport volume, and travel speed constantly increasing and railway network steadily lengthening, shortcomings of current maintenance strategies are getting to be noticed from an economical and safety perspective. To overcome the shortcomings, permanent-of-way departments throughout the world have given a considerable attention to an ideal maintenance strategy which is to carry out appropriate maintenances just in time on track locations really requiring maintenance. This strategy is simplified as the condition-based maintenance (CBM) which has attracted attentions of engineers of many industries in the recent 70 years. To implement CBM for track irregularity, there are many issues which need to be addressed. One of them focuses on predicting track irregularity of each day in a future short period. In this paper, based on track irregularity evolution characteristics, a Short-Range Prediction Model was developed to this aim and is abbreviated to TI-SRPM. Performance analysis results for TI-SRPM illustrate that track irregularity amplitude predictions on sampling points by TI-SRPM are very close to their measurements by Track Geometry Car.
机译:近年来,随着车轴载荷,火车载荷,运输量和行进速度不断增加,铁路网络稳步延长,从经济和安全的角度来看,当前维护策略的缺陷正逐渐引起人们的注意。为了克服这些缺点,世界各地的常驻部门已经对理想的维护策略给予了极大的关注,该策略是在真正需要维护的赛道上及时进行适当的维护。这种策略被简化为基于状态的维护(CBM),这在最近70年来引起了许多行业工程师的关注。为了实施用于轨道不规则的CBM,需要解决许多问题。其中之一致力于预测未来短时间内每天的轨道不规则性。在本文中,基于轨道不规则性演变特征,为此目的开发了一种短程预测模型,并将其简称为TI-SRPM。 TI-SRPM的性能分析结果表明,TI-SRPM对采样点的轨道不规则幅度预测非常接近于Track Geometry Car的测量结果。

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