首页> 外文会议>Joint Rail Conference >RAIL NEUTRAL TEMPERATURE ESTIMATION USING FIELD DATA, NUMERICAL MODELS, AND MACHINE LEARNING
【24h】

RAIL NEUTRAL TEMPERATURE ESTIMATION USING FIELD DATA, NUMERICAL MODELS, AND MACHINE LEARNING

机译:轨道中性温度估计使用现场数据,数值模型和机器学习

获取原文

摘要

Effective Rail Neutral Temperature (RNT) management is needed for continuous welded rail (CWR). RNT is the temperature at which the longitudinal stress of a rail is zero. Due to the lack of expansion joints, CWR develops internal tensile or compressive stresses when the rail temperature is below or above, respectively, the RNT. Mismanagement of RNT can lead to rail fracture or buckling when thermal stresses exceed the limits of rail steel. In this work, we propose an effective RNT estimation method structured around four hypotheses. The work leverages field-collected vibration test data, high-fidelity numerical models, and machine learning techniques. First, a contactless non-destructive and non-disruptive sensing technology was developed to collect real-world rail vibrational data. Second, the team established an instrumented field test site at a revenue-service line in the state of Illinois and performed multi-day data collection to cover a wide range of temperature and thermal stress levels. Third, numerical models were developed to understand and predict rail vibration behavior under the influence of temperature and longitudinal load. Excellent agreement between model and experimental results were obtained using an optimization approach. Finally, a supervised machine learning algorithm was developed to estimate RNT using the field-collected rail vibration data. Sensitivity studies and error analyses were included in this work. The system performance with field data indicates that the proposed framework can support reasonable RNT estimation accuracy when measurement or model noise is low.
机译:连续焊接轨道(CWR)需要有效的轨道空档温度(RNT)管理。 RNT是轨道纵向应力为零的温度。由于缺乏伸缩缝,当轨道温度分别低于或更高,CWR分别在RNT下方或更高时开发内部拉伸或压缩应力。当热应力超过轨道钢的极限时,RNT的Mismanagement可能导致轨道断裂或屈曲。在这项工作中,我们提出了一种有效的RNT估计方法,其围绕四个假设构成。该工作利用现场收集的振动测试数据,高保真数值模型和机器学习技术。首先,开发了一种非接触式无损和非破坏性的传感技术来收集现实世界的轨道振动数据。其次,该团队在伊利诺伊州州的收入 - 服务线上建立了一个仪表现场测试网站,并进行了多日数据收集,以涵盖各种温度和热应力水平。第三,开发了数值模型,以了解温度和纵向负荷的影响下的轨道振动行为。使用优化方法获得模型和实验结果之间的良好协议。最后,开发了一种监督机学习算法,以使用现场收集的轨道振动数据来估计RNT。这项工作中包含了敏感性研究和错误分析。具有现场数据的系统性能表明,当测量或模型噪声低时,所提出的框架可以支持合理的RNT估计精度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号