Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution Network

As key equipment in modern industry, it is important to diagnose and predict the health status of bearings. Data-driven methods for remaining useful life (RUL) prognostics have achieved excellent performance in recent years compared to traditional methods based on physical models. In this paper, we...

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Main Authors: Peihong Li, Xiaozhi Liu, Yinghua Yang
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Sensors
Subjects:
RUL
Online Access:https://www.mdpi.com/1424-8220/21/12/4217
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spelling doaj-ba6c51f421154e25a29b6381507a2eb92021-07-01T00:39:32ZengMDPI AGSensors1424-82202021-06-01214217421710.3390/s21124217Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution NetworkPeihong Li0Xiaozhi Liu1Yinghua Yang2College of Information Science and Engineering, Northeastern University, Shenyang 110819, ChinaCollege of Information Science and Engineering, Northeastern University, Shenyang 110819, ChinaCollege of Information Science and Engineering, Northeastern University, Shenyang 110819, ChinaAs key equipment in modern industry, it is important to diagnose and predict the health status of bearings. Data-driven methods for remaining useful life (RUL) prognostics have achieved excellent performance in recent years compared to traditional methods based on physical models. In this paper, we propose a novel data-driven method for predicting the remaining useful life of bearings based on a deep graph convolutional neural network with spatiotemporal domain convolution. This network uses the average sliding root mean square (ASRMS) as the health factor to identify the healthy and degraded states, and then uses correlation coefficient analysis on the hybrid features of the degraded data to construct a spatial graph according to the strength of the correlation between the obtained features. In the time domain, we introduce historical data as the input to the temporal convolution. After the data are processed by the spatial map and the temporal dimension, we perform the prediction of the remaining useful life. The experimental results show the accuracy of the method.https://www.mdpi.com/1424-8220/21/12/4217RULASRMSgraph convolutiontemporal convolution
collection DOAJ
language English
format Article
sources DOAJ
author Peihong Li
Xiaozhi Liu
Yinghua Yang
spellingShingle Peihong Li
Xiaozhi Liu
Yinghua Yang
Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution Network
Sensors
RUL
ASRMS
graph convolution
temporal convolution
author_facet Peihong Li
Xiaozhi Liu
Yinghua Yang
author_sort Peihong Li
title Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution Network
title_short Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution Network
title_full Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution Network
title_fullStr Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution Network
title_full_unstemmed Remaining Useful Life Prognostics of Bearings Based on a Novel Spatial Graph-Temporal Convolution Network
title_sort remaining useful life prognostics of bearings based on a novel spatial graph-temporal convolution network
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-06-01
description As key equipment in modern industry, it is important to diagnose and predict the health status of bearings. Data-driven methods for remaining useful life (RUL) prognostics have achieved excellent performance in recent years compared to traditional methods based on physical models. In this paper, we propose a novel data-driven method for predicting the remaining useful life of bearings based on a deep graph convolutional neural network with spatiotemporal domain convolution. This network uses the average sliding root mean square (ASRMS) as the health factor to identify the healthy and degraded states, and then uses correlation coefficient analysis on the hybrid features of the degraded data to construct a spatial graph according to the strength of the correlation between the obtained features. In the time domain, we introduce historical data as the input to the temporal convolution. After the data are processed by the spatial map and the temporal dimension, we perform the prediction of the remaining useful life. The experimental results show the accuracy of the method.
topic RUL
ASRMS
graph convolution
temporal convolution
url https://www.mdpi.com/1424-8220/21/12/4217
work_keys_str_mv AT peihongli remainingusefullifeprognosticsofbearingsbasedonanovelspatialgraphtemporalconvolutionnetwork
AT xiaozhiliu remainingusefullifeprognosticsofbearingsbasedonanovelspatialgraphtemporalconvolutionnetwork
AT yinghuayang remainingusefullifeprognosticsofbearingsbasedonanovelspatialgraphtemporalconvolutionnetwork
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