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Data-Driven Bias Correction and Defect Diagnosis Model for In-Service Vehicle Acceleration Measurements

机译:在役车辆加速度测量的数据驱动偏差校正和缺陷诊断模型

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摘要

Track quality instruments use low-cost accelerometers placed on or attached to the floors of operating trains, and these instruments collect substantial amounts of data over short inspection periods. The measurements collected by the instruments are the main data source for track irregularity evaluation. However, considerable measurement bias exists in the vertical and lateral vibration data obtained from such instruments. False positive track vibration defects detected by track quality instruments occur frequently. This results in considerable time and effort being expended needlessly because maintenance workers have to visit the railway track sites to check and review the track vibration defects. Therefore, we propose a model for data-driven bias correction and defect diagnosis for in-service vehicle acceleration measurements based on track degradation characteristics. Substantial amounts of historical track measurement data from different inspection methods were mined extensively to eliminate the false positive detection of track vibration defects and diagnose the causes of track vibration defects. Actual measurement data from the Lanxin Railway were used to validate our proposed model. The success rate achieved in identifying false positive track vibration defects was 84.1%, and that in track vibration defect diagnosis was 75.8%. These high success rates suggest that the proposed model can be of practical use in improving railway track maintenance management.
机译:轨道质量仪器使用放置在或连接到运行的火车地板上的低成本加速度计,这些仪器在较短的检查时间内收集了大量数据。仪器收集的测量值是进行轨道不规则性评估的主要数据源。但是,从这样的仪器获得的垂直和横向振动数据中存在相当大的测量偏差。轨道质量仪器检测到的假阳性轨道振动缺陷经常发生。这导致不必要的时间和精力不必要地花费,因为维护人员必须访问铁路轨道站点以检查和检查轨道振动缺陷。因此,我们提出了一种基于轨迹退化特性的数据模型,用于在役车辆加速度测量的数据驱动偏差校正和缺陷诊断。大量挖掘了来自不同检查方法的大量历史轨道测量数据,以消除对轨道振动缺陷的误报,并诊断出轨道振动缺陷的原因。兰新铁路的实际测量数据被用来验证我们提出的模型。假阳性轨道振动缺陷的识别成功率为84.1%,轨道振动缺陷诊断的成功率为75.8%。这些高成功率表明,所提出的模型可以实际用于改善铁路轨道维护管理。

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