Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under Operation

Predicting the axle temperature states of the high-speed train under operation in advance and evaluating working states of axle bearings is important for improving the safety of train operation and reducing accident risks. The method of monitoring the axle temperature of a train under operation, com...

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Main Authors: Wei Hao, Feng Liu
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Symmetry
Subjects:
Online Access:https://www.mdpi.com/2073-8994/12/10/1662
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spelling doaj-d989e3fb584140e1aaf447ccb4180d912020-11-25T02:45:44ZengMDPI AGSymmetry2073-89942020-10-01121662166210.3390/sym12101662Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under OperationWei Hao0Feng Liu1School of Computer and Information Technology, Beijing Jiaotong University, Beijing 100044, ChinaSchool of Computer and Information Technology, Beijing Jiaotong University, Beijing 100044, ChinaPredicting the axle temperature states of the high-speed train under operation in advance and evaluating working states of axle bearings is important for improving the safety of train operation and reducing accident risks. The method of monitoring the axle temperature of a train under operation, combined with the neural network prediction method, was applied. A total of 36 sensors were arranged at key positions such as the axle bearings of the train gearbox and the driving end of the traction motor. The positions of the sensors were symmetrical. Axle temperature measurements over 11 days with more than 38,000 km were obtained. The law of the change of the axle temperature in each section was obtained in different environments. The resultant data from the previous 10 days were used to train the neural network model, and a total of 800 samples were randomly selected from eight typical locations for the prediction of axle temperature over the following 3 min. In addition, the results predicted by the neural network method and the GM (1,1) method were compared. The results show that the predicted temperature of the trained neural network model is in good agreement with the experimental temperature, with higher precision than that of the GM (1,1) method, indicating that the proposed method is sufficiently accurate and can be a reliable tool for predicting axle temperature.https://www.mdpi.com/2073-8994/12/10/1662high-speed trainaxle temperature predictionneural networksrandom sampling
collection DOAJ
language English
format Article
sources DOAJ
author Wei Hao
Feng Liu
spellingShingle Wei Hao
Feng Liu
Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under Operation
Symmetry
high-speed train
axle temperature prediction
neural networks
random sampling
author_facet Wei Hao
Feng Liu
author_sort Wei Hao
title Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under Operation
title_short Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under Operation
title_full Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under Operation
title_fullStr Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under Operation
title_full_unstemmed Axle Temperature Monitoring and Neural Network Prediction Analysis for High-Speed Train under Operation
title_sort axle temperature monitoring and neural network prediction analysis for high-speed train under operation
publisher MDPI AG
series Symmetry
issn 2073-8994
publishDate 2020-10-01
description Predicting the axle temperature states of the high-speed train under operation in advance and evaluating working states of axle bearings is important for improving the safety of train operation and reducing accident risks. The method of monitoring the axle temperature of a train under operation, combined with the neural network prediction method, was applied. A total of 36 sensors were arranged at key positions such as the axle bearings of the train gearbox and the driving end of the traction motor. The positions of the sensors were symmetrical. Axle temperature measurements over 11 days with more than 38,000 km were obtained. The law of the change of the axle temperature in each section was obtained in different environments. The resultant data from the previous 10 days were used to train the neural network model, and a total of 800 samples were randomly selected from eight typical locations for the prediction of axle temperature over the following 3 min. In addition, the results predicted by the neural network method and the GM (1,1) method were compared. The results show that the predicted temperature of the trained neural network model is in good agreement with the experimental temperature, with higher precision than that of the GM (1,1) method, indicating that the proposed method is sufficiently accurate and can be a reliable tool for predicting axle temperature.
topic high-speed train
axle temperature prediction
neural networks
random sampling
url https://www.mdpi.com/2073-8994/12/10/1662
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AT fengliu axletemperaturemonitoringandneuralnetworkpredictionanalysisforhighspeedtrainunderoperation
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