TY - CONF
T1 - Detection of Rail Surface Defects based on Axle Box Acceleration Measurements
T2 - The 10th Transport Research Arena Conference 2024
AU - Phusakulkajorn, Wassamon
AU - Hendriks, Jurjen
AU - Moraal, Jan
AU - Shen, Chen
AU - Zeng, Yuanchen
AU - Unsiwilai, Siwarak
AU - Bogojevic, Bojan
AU - Asplund, Matthias
AU - Zoeteman, Arjen
AU - Nunez, Alfredo
AU - Dollevoet, Rolf
AU - Li, Zili
PY - 2024
Y1 - 2024
N2 - This work presents the results of a measurement campaign to demonstrate the effectiveness of the axle box acceleration (ABA) technology for detecting rail defects. The measurements were conducted along the Iron Ore line between Sweden and Norway for the IN2TRACK3 project. This line is mostly single-track with passenger-freight mixed traffic and heavy axle load. Historical data and track information data were not considered in this study. By analyzing data acquired from the accelerometers in vertical and longitudinal directions, rail defects were detected in near real-time using big-data analytics. For our validated sections, 100% of rail defects (including squats) were detected using time-frequency analysis and an outlier detection approach. The methodology also allows for identifying priority locations, e.g., defective welds, joints, transition zones, etc., and its use for prescriptive maintenance recommendations is being explored in the framework of the IAM4RAIL project.
AB - This work presents the results of a measurement campaign to demonstrate the effectiveness of the axle box acceleration (ABA) technology for detecting rail defects. The measurements were conducted along the Iron Ore line between Sweden and Norway for the IN2TRACK3 project. This line is mostly single-track with passenger-freight mixed traffic and heavy axle load. Historical data and track information data were not considered in this study. By analyzing data acquired from the accelerometers in vertical and longitudinal directions, rail defects were detected in near real-time using big-data analytics. For our validated sections, 100% of rail defects (including squats) were detected using time-frequency analysis and an outlier detection approach. The methodology also allows for identifying priority locations, e.g., defective welds, joints, transition zones, etc., and its use for prescriptive maintenance recommendations is being explored in the framework of the IAM4RAIL project.
KW - Rail defect detection
KW - Rail monitoring
KW - Rail surface defects
KW - Axle-box acceleration
KW - Intelligent railway infrastructure
M3 - Paper
Y2 - 15 April 2024 through 18 April 2024
ER -