Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling Process

The complexity of the internal components of dental air turbine handpieces has been increasing over time. To make operations reliable and ensure patients’ safety, this study established long short-term memory (LSTM) prediction models with the functions of learning, storing, and transmitting memory f...

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Main Authors: Yi-Cheng Huang, Yu-Hsien Chen
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/15/4978
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spelling doaj-6202f497eeb340ddb79bb24ab8d697042021-08-06T15:31:03ZengMDPI AGSensors1424-82202021-07-01214978497810.3390/s21154978Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling ProcessYi-Cheng Huang0Yu-Hsien Chen1Department of Mechatronics Engineering, National Changhua University of Education, Changhua 50074, TaiwanDepartment of Mechatronics Engineering, National Changhua University of Education, Changhua 50074, TaiwanThe complexity of the internal components of dental air turbine handpieces has been increasing over time. To make operations reliable and ensure patients’ safety, this study established long short-term memory (LSTM) prediction models with the functions of learning, storing, and transmitting memory for monitoring the health and degradation of dental air turbine handpieces. A handpiece was used to cut a glass porcelain block back and forth. An accelerometer was used to obtain vibration signals during the free running of the handpiece to identify the characteristic frequency of these vibrations in the frequency domain. This information was used to establish a health index (HI) for developing prediction models. The many-to-one and many-to-many LSTM frameworks were used for machine learning to establish prediction models for the HI and degradation trajectory. The results indicate that, in terms of HI predicted for the testing dataset, the mean square error of the many-to-one LSTM framework was lower than that that of a logistic regression model, which did not have a memory framework. Nevertheless, high accuracies were achieved with both of the two aforementioned approaches. In general, the degradation trajectory prediction model could accurately predict the degradation trend of the dental handpiece; thus, this model can be a useful tool for predicting the degradation trajectory of real dental handpieces in the future.https://www.mdpi.com/1424-8220/21/15/4978dental air turbine handpiecelong short-term memorylogistic regressionremaining useful life
collection DOAJ
language English
format Article
sources DOAJ
author Yi-Cheng Huang
Yu-Hsien Chen
spellingShingle Yi-Cheng Huang
Yu-Hsien Chen
Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling Process
Sensors
dental air turbine handpiece
long short-term memory
logistic regression
remaining useful life
author_facet Yi-Cheng Huang
Yu-Hsien Chen
author_sort Yi-Cheng Huang
title Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling Process
title_short Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling Process
title_full Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling Process
title_fullStr Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling Process
title_full_unstemmed Use of Long Short-Term Memory for Remaining Useful Life and Degradation Assessment Prediction of Dental Air Turbine Handpiece in Milling Process
title_sort use of long short-term memory for remaining useful life and degradation assessment prediction of dental air turbine handpiece in milling process
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-07-01
description The complexity of the internal components of dental air turbine handpieces has been increasing over time. To make operations reliable and ensure patients’ safety, this study established long short-term memory (LSTM) prediction models with the functions of learning, storing, and transmitting memory for monitoring the health and degradation of dental air turbine handpieces. A handpiece was used to cut a glass porcelain block back and forth. An accelerometer was used to obtain vibration signals during the free running of the handpiece to identify the characteristic frequency of these vibrations in the frequency domain. This information was used to establish a health index (HI) for developing prediction models. The many-to-one and many-to-many LSTM frameworks were used for machine learning to establish prediction models for the HI and degradation trajectory. The results indicate that, in terms of HI predicted for the testing dataset, the mean square error of the many-to-one LSTM framework was lower than that that of a logistic regression model, which did not have a memory framework. Nevertheless, high accuracies were achieved with both of the two aforementioned approaches. In general, the degradation trajectory prediction model could accurately predict the degradation trend of the dental handpiece; thus, this model can be a useful tool for predicting the degradation trajectory of real dental handpieces in the future.
topic dental air turbine handpiece
long short-term memory
logistic regression
remaining useful life
url https://www.mdpi.com/1424-8220/21/15/4978
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AT yuhsienchen useoflongshorttermmemoryforremainingusefullifeanddegradationassessmentpredictionofdentalairturbinehandpieceinmillingprocess
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