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A MACHINE LEARNING APPROACH FOR TRACK CONDITION ASSESSMENT THROUGH REPEATED HISTORICAL DATA ANALYTICS

机译:重复历史数据分析的履带状态评估机器学习方法

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Condition monitoring of rail infrastructure is an important task to ensure the safety and ride quality. The increasing travel demands of the rail network due to higher miles traveled requires regular monitoring of the infrastructure and efficient processing of the data for timely decision-making. Despite the regular data collection on different parameters such as acceleration and track geometry, the data processing is commonly performed to document the track performance and maintenance without further knowledge discovery to realize all the potential from historical data. Motivated by the wealth of historical track data in practice, this paper investigates the feasibility of using onboard data that is repeatedly collected over a period of time on a segment of track to potentially identify changes to the track. The proposed approach has been envisioned to learn from repeated historical time-series data to identify both the location and timing of unexpected changes to the track system. To account for stochastic nature of the collected data, associated with the temporal mismatch between the time-series across different inspection runs, we propose a framework by adopting the concept of Matrix Profile without relying on time series synchronization. The approach divides the entire data into smaller track segments, performs extensive similarity search of time-series signatures, and associate locations with higher dissimilarity to changes of the track either due to maintenance or a potential defect. To demonstrate the efficacy and potential of the method, evaluation on both synthetic data and the field geometry data from a revenue-service Class I railroad has been conducted. The findings provide promising results in predicting the location of track changes with a reasonably high degree of certainty, with an automated offline analysis.
机译:铁路基础设施的状态监测是确保安全和行驶质量的重要任务。由于行驶里程增加,铁路网络对旅行的需求不断增加,这需要对基础设施进行定期监控,并对数据进行有效处理,以便及时做出决策。尽管定期收集有关加速度和轨道几何形状等不同参数的数据,但通常仍进行数据处理以记录轨道性能和维护情况,而无需进一步的知识发现即可从历史数据中发现所有潜力。出于实践中大量历史航迹数据的动机,本文研究了使用一段时期内在一段航迹上重复收集的机载数据来潜在地识别航迹变化的可行性。已经设想了所提出的方法以从重复的历史时间序列数据中学习,以识别轨道系统的意外变化的位置和时间。为了说明所收集数据的随机性,以及与不同检查运行之间的时间序列之间的时间不匹配相关,我们提出了一种框架,该模型通过采用Matrix Profile的概念而不依赖于时间序列同步。该方法将整个数据划分为较小的磁道段,对时间序列签名执行广泛的相似度搜索,并将由于维护或潜在缺陷而与磁道的变化具有较高不相似性的位置相关联。为了证明该方法的有效性和潜力,已经对来自收入服务I类铁路的合成数据和现场几何数据进行了评估。这些发现通过自动化的离线分析以合理的高度确定性为预测轨道变化的位置提供了可喜的结果。

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  • 来源
    《Joint Rail Conference》|2019年|V001T01A011.1-V001T01A011.6|共6页
  • 会议地点 Snowbird(US)
  • 作者单位

    Department of Civil Engineering Virginia Tech Blacksburg VA USA;

    Department of Mechanical Engineering Virginia Tech Blacksburg VA USA;

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