Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and Temperature

Linear guided wave based methods have been proposed to measure the axial load of continuously welded rail (CWR) in service. The underlying principle is that the propagation velocities of excited guided waves are sensitive to the axial load. However, the in-service CWR inevitably faces changes in rai...

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Main Authors: Xiangyu Duan, Liqiang Zhu, Zujun Yu, Xining Xu
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8859180/
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author Xiangyu Duan
Liqiang Zhu
Zujun Yu
Xining Xu
author_facet Xiangyu Duan
Liqiang Zhu
Zujun Yu
Xining Xu
author_sort Xiangyu Duan
collection DOAJ
description Linear guided wave based methods have been proposed to measure the axial load of continuously welded rail (CWR) in service. The underlying principle is that the propagation velocities of excited guided waves are sensitive to the axial load. However, the in-service CWR inevitably faces changes in rail wear and temperature, which also affects the propagating guided waves and results in severe degradation of existing methods. In this paper, we proposed the IGA-IWLS algorithm to estimate the axial load of in-service CWR using multiple guided wave modes. This novel load estimation method takes rail profile and phase velocities of a small set of wave modes as input, then uses an improved genetic algorithm to roughly search the candidate solutions of axial load and Young's modulus, and finally employs weighted least squares algorithm to iteratively converge to the estimated value of axial load. The paper presents the estimation theory in detail, including selection of the optimal set of guided wave modes and the IGA-IWLS algorithm. Numerical experiments show that the proposed method is able to estimate the axial load of CWR with an accuracy less than 2 MPa and is robust to measurement error and model error.
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spelling doaj.art-54b547fcc65a4e1d9ebe7e898cda8fec2022-12-21T19:46:35ZengIEEEIEEE Access2169-35362019-01-01714352414353810.1109/ACCESS.2019.29456098859180Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and TemperatureXiangyu Duan0https://orcid.org/0000-0002-7339-347XLiqiang Zhu1https://orcid.org/0000-0002-4245-2086Zujun Yu2Xining Xu3School of Mechanical, Electronic and Control Engineering, Beijing Jiaotong University, Beijing, ChinaSchool of Mechanical, Electronic and Control Engineering, Beijing Jiaotong University, Beijing, ChinaSchool of Mechanical, Electronic and Control Engineering, Beijing Jiaotong University, Beijing, ChinaSchool of Mechanical, Electronic and Control Engineering, Beijing Jiaotong University, Beijing, ChinaLinear guided wave based methods have been proposed to measure the axial load of continuously welded rail (CWR) in service. The underlying principle is that the propagation velocities of excited guided waves are sensitive to the axial load. However, the in-service CWR inevitably faces changes in rail wear and temperature, which also affects the propagating guided waves and results in severe degradation of existing methods. In this paper, we proposed the IGA-IWLS algorithm to estimate the axial load of in-service CWR using multiple guided wave modes. This novel load estimation method takes rail profile and phase velocities of a small set of wave modes as input, then uses an improved genetic algorithm to roughly search the candidate solutions of axial load and Young's modulus, and finally employs weighted least squares algorithm to iteratively converge to the estimated value of axial load. The paper presents the estimation theory in detail, including selection of the optimal set of guided wave modes and the IGA-IWLS algorithm. Numerical experiments show that the proposed method is able to estimate the axial load of CWR with an accuracy less than 2 MPa and is robust to measurement error and model error.https://ieeexplore.ieee.org/document/8859180/Axial load estimationrail wearsemi-analytical finite elementultrasonic guided wavecontinuously welded rail
spellingShingle Xiangyu Duan
Liqiang Zhu
Zujun Yu
Xining Xu
Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and Temperature
IEEE Access
Axial load estimation
rail wear
semi-analytical finite element
ultrasonic guided wave
continuously welded rail
title Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and Temperature
title_full Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and Temperature
title_fullStr Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and Temperature
title_full_unstemmed Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and Temperature
title_short Estimating the Axial Load of In-Service Continuously Welded Rail Under the Influences of Rail Wear and Temperature
title_sort estimating the axial load of in service continuously welded rail under the influences of rail wear and temperature
topic Axial load estimation
rail wear
semi-analytical finite element
ultrasonic guided wave
continuously welded rail
url https://ieeexplore.ieee.org/document/8859180/
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AT zujunyu estimatingtheaxialloadofinservicecontinuouslyweldedrailundertheinfluencesofrailwearandtemperature
AT xiningxu estimatingtheaxialloadofinservicecontinuouslyweldedrailundertheinfluencesofrailwearandtemperature