Digital Twin-Driven Remaining Useful Life Prediction for Gear Performance Degradation: A ReviewSource: Journal of Computing and Information Science in Engineering:;2021:;volume( 021 ):;issue: 003::page 030801-1DOI: 10.1115/1.4049537Publisher: The American Society of Mechanical Engineers (ASME)
Abstract: As a transmission component, the gear has been obtained widespread attention. The remaining useful life (RUL) prediction of gear is critical to the prognostics health management (PHM) of gear transmission systems. The digital twin (DT) provides support for gear RUL prediction with the advantages of rich health information data and accurate health indicators (HI). This paper reviews digital twin-driven RUL prediction methods for gear performance degradation, from the view of digital twin-driven physical model-based and virtual model-based prediction method. From the view of the physical model-based one, it includes a prediction model based on gear crack, gear fatigue, gear surface scratch, gear tooth breakage, and gear permanent deformation. From the view of the digital twin-driven virtual model-based one, it includes non-deep learning methods and deep learning methods. Non-deep learning methods include the wiener process, gamma process, hidden Markov model (HMM), regression-based model, and proportional hazard model. Deep learning methods include deep neural networks (DNN), deep belief networks (DBN), convolutional neural networks (CNN), and recurrent neural networks (RNN). It mainly summarizes the performance degradation and life test of various models in gear and evaluates the advantages and disadvantages of various methods. In addition, it encourages future works.
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contributor author | He, Bin | |
contributor author | Liu, Long | |
contributor author | Zhang, Dong | |
date accessioned | 2022-02-05T22:31:56Z | |
date available | 2022-02-05T22:31:56Z | |
date copyright | 2/23/2021 12:00:00 AM | |
date issued | 2021 | |
identifier issn | 1530-9827 | |
identifier other | jcise_21_3_030801.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4277707 | |
description abstract | As a transmission component, the gear has been obtained widespread attention. The remaining useful life (RUL) prediction of gear is critical to the prognostics health management (PHM) of gear transmission systems. The digital twin (DT) provides support for gear RUL prediction with the advantages of rich health information data and accurate health indicators (HI). This paper reviews digital twin-driven RUL prediction methods for gear performance degradation, from the view of digital twin-driven physical model-based and virtual model-based prediction method. From the view of the physical model-based one, it includes a prediction model based on gear crack, gear fatigue, gear surface scratch, gear tooth breakage, and gear permanent deformation. From the view of the digital twin-driven virtual model-based one, it includes non-deep learning methods and deep learning methods. Non-deep learning methods include the wiener process, gamma process, hidden Markov model (HMM), regression-based model, and proportional hazard model. Deep learning methods include deep neural networks (DNN), deep belief networks (DBN), convolutional neural networks (CNN), and recurrent neural networks (RNN). It mainly summarizes the performance degradation and life test of various models in gear and evaluates the advantages and disadvantages of various methods. In addition, it encourages future works. | |
publisher | The American Society of Mechanical Engineers (ASME) | |
title | Digital Twin-Driven Remaining Useful Life Prediction for Gear Performance Degradation: A Review | |
type | Journal Paper | |
journal volume | 21 | |
journal issue | 3 | |
journal title | Journal of Computing and Information Science in Engineering | |
identifier doi | 10.1115/1.4049537 | |
journal fristpage | 030801-1 | |
journal lastpage | 030801-16 | |
page | 16 | |
tree | Journal of Computing and Information Science in Engineering:;2021:;volume( 021 ):;issue: 003 | |
contenttype | Fulltext |