Nondestructive Estimation of Neutral Temperature in Rails: A Comparative Study of Machine Learning Strategies

Matthew Belding, A. Enshaeian, Piervincenzo Rizzo
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Abstract

This paper presents the latest findings of a nondestructive evaluation technique currently under development at the University of Pittsburgh to determine the rail neutral temperature (RNT) in continuous welded rails. The technique is based on the extraction of relevant features from rail vibrations and the use of machine learning (ML) to associate these features to the longitudinal stress of the rail of interest. The features contain the spectral information of the vibrations and are pooled together by frequency domain decomposition for input to ML algorithms. Minimum redundancy–maximum relevance and neighboring component analysis are used to identify relevant features to reduce the size of the input vector. In addition, seven algorithms were considered to identify the most accurate model for neutral temperature with respect to the ground truth RNT measured with a strain-gage rosette. The data used in this study were collected from a 5° curved rail on concrete ties. The vibrations were triggered with a hammer and recorded with a few wireless and wired accelerometers attached on the railhead. The results showed that the Gaussian process regressor performs best, and as few as 20 frequencies can be used to predict the RNT with sufficient accuracy.
铁轨中性温度的无损估算:机器学习策略比较研究
本文介绍了匹兹堡大学目前正在开发的无损评估技术的最新研究成果,该技术用于确定连续焊接钢轨的钢轨中性温度 (RNT)。该技术基于从钢轨振动中提取相关特征,并利用机器学习 (ML) 将这些特征与相关钢轨的纵向应力联系起来。这些特征包含振动的频谱信息,并通过频域分解汇集在一起,输入到 ML 算法中。最小冗余-最大相关性和邻近成分分析用于识别相关特征,以减少输入向量的大小。此外,还考虑了七种算法,以确定相对于用应变片测得的基本真实 RNT 最准确的中性温度模型。本研究使用的数据是从混凝土轨枕上的 5° 弯轨采集的。振动由锤子触发,并由连接在轨头上的几个无线和有线加速度计记录。结果表明,高斯过程回归器的性能最佳,只需使用 20 个频率就能足够准确地预测 RNT。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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