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Principal components analysis and track quality index: A machine learning approach

机译:主成分分析和轨道质量指标:一种机器学习方法

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Track geometry data exhibits classical big data attributes: value, volume, velocity, veracity and variety. Track Quality Indices-TQI are used to obtain average-based assessment of track segments and schedule track maintenance. TQI is expressed in terms of track parameters like gage, cross level, etc. Though each of these parameters is objectively important but understanding what they collectively convey for a given track segment often becomes challenging. Several railways including passenger and freight have developed single indices that combines different track parameters to assess overall track quality. Some of these railways have selected certain parameters whilst dropping others. Using track geometry data from a sample mile track, we demonstrate how to combine track geometry parameters into a low dimensional form (TQI) that simplifies the track properties without losing much variability in the data. This led us to principal components. To validate the use of principal components as TQI, we employed a two-phase approach. First phase was to identify a classic machine learning technique that works well with track geometry data. The second step was to train the identified machine learning technique on the sample mile-track data using combined TQIs and principal components as defect predictors. The performance of the predictors were compared using true and false positive rates. The results show that three principal components were better at predicting defects and revealing salient characteristics in track geometry data than combined TQIs even though there were some correlations that are potentially useful for track maintenance.
机译:轨道几何数据具有经典的大数据属性:值,体积,速度,准确性和多样性。轨道质量指标-TQI用于获得基于平均的轨道段评估并计划轨道维护。 TQI用诸如轨距,跨度等轨道参数来表示。尽管这些参数中的每一个在客观上都很重要,但要了解它们在给定轨道段中共同传达的内容却常常具有挑战性。包括客运和货运在内的几条铁路已经开发出单一索引,该索引结合了不同的轨道参数以评估总体轨道质量。这些铁路中的一些已经选择了某些参数,而放弃了其他参数。使用样本英里航迹中的航迹几何数据,我们演示了如何将航迹几何参数组合成低维形式(TQI),从而简化了航迹特性而又不会损失数据的太多可变性。这导致了我们的主要组成部分。为了验证主成分作为TQI的使用,我们采用了两阶段方法。第一阶段是确定一种经典的机器学习技术,该技术可以很好地处理轨道几何数据。第二步是使用组合的TQI和主成分作为缺陷预测器,在样本英里轨迹数据上训练已识别的机器学习技术。使用真实和假阳性率比较预测变量的性能。结果表明,即使存在一些可能对轨道维护有用的相关性,三个主要成分也比组合的TQI更好地预测了轨道几何数据中的缺陷并揭示了轨道特征的显着特征。

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