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Detecting Embankment Instability Using Measurable Track Geometry Data

机译:使用可测量的轨道几何数据检测路堤不稳定性

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The British railway system is the oldest in the world. Most railway embankments are aged around 150 years old and the percentage of disruption reports that feature them is frequently higher than other types of railway infrastructure. Remarkable works have been done to understand embankment deterioration and develop asset modelling. Nevertheless, they do not represent a sufficient way of managing assets in detail. As a result, reactive approaches combined with proactive ones would improve the whole asset management scenario. To guarantee good system performance, geotechnical asset management (GAM) aims to reduce uncertainty through informed, data driven decisions and optimisation of resources. GAM approaches are cost sensitive. Thus, data driven approaches that utilize existing resources are highly prized. Track geometry data has been routinely collected by Network Rail, over many years, to identify track defects and subsequently plan track maintenance interventions. Additionally, in 2018 Network Rail commissioned AECOM to undertake a study, described in this paper, to investigate the use of track geometry data in the detection of embankment instabilities. In this study, track geometry data for over 1800 embankments were processed and parameters offering the best correlation with embankment movements were identified and used by an algorithm to generate an embankment instability metric. The study successfully demonstrated that the instability of railway embankments is clearly visible in track geometry data and the metric gives an indication of the worsening of track geometry, that is likely due to embankment instability.
机译:英国的铁路系统是世界上最古老的系统。大多数铁路路堤的使用年限约为150年,破坏报告的百分比通常高于其他类型的铁路基础设施。在了解路堤恶化情况和开发资产建模方面,已经做了出色的工作。但是,它们并不代表详细管理资产的充分方法。结果,将被动方法与主动方法相结合将改善整个资产管理方案。为了保证良好的系统性能,岩土工程资产管理(GAM)旨在通过以数据为依据的明智决策和资源优化来减少不确定性。 GAM方法对成本敏感。因此,利用现有资源的数据驱动方法受到高度重视。多年来,Network Rail已定期收集轨道几何数据,以识别轨道缺陷并随后计划轨道维护干预措施。此外,2018年,Network Rail委托AECOM进行了本文所述的研究,以调查轨道几何数据在检测路堤不稳定性中的用途。在这项研究中,处理了1800多个路堤的轨道几何数据,并确定了与路堤运动具有最佳相关性的参数,并通过算法将其用于生成路堤不稳定性度量。这项研究成功地证明,在路轨几何数据中可以清楚地看到铁路路堤的不稳定性,该度量标准表明了路轨几何形状的恶化,这很可能是由于路堤的不稳定性所致。

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