DocumentCode :
1792840
Title :
Predictive maintenance decision using statistical linear regression and kernel methods
Author :
Tung Le ; Ming Luo ; Junhong Zhou ; Chan, Hian L.
Author_Institution :
Manuf. Execution & Control Group, SIMTech, Singapore, Singapore
fYear :
2014
fDate :
16-19 Sept. 2014
Firstpage :
1
Lastpage :
6
Abstract :
In this paper, we develop a predictive maintenance (PdM) method to determine the most effective time to apply maintenance to an equipment and study its application to a real semiconductor etching chamber. More specifically, we first apply linear regression to predict the (output) equipment health condition from the (input) operational parameters. This choice of linear model also allows us to propose an algorithm to reduce the number of operational parameters to be monitored for PdM purposes using t-statistics. Then, we follow a cross-validation based procedure to generate prediction error samples and apply a kernel method to construct the corresponding probability density function of the prediction error. Finally, the PdM decision can be made based on the likelihood of the predicted health condition exceeding a certain maintenance threshold. Our analysis using real data from a semiconductor etching chamber shows that the proposed PdM decision with the reduced dimension linear regression performs comparably to the one using full-scale linear model and can be used for better maintenance planning compared to the existing practice of fixed-schedule maintenance.
Keywords :
condition monitoring; least squares approximations; maintenance engineering; regression analysis; PdM decision; equipment health condition prediction; fixed-schedule maintenance; kernel methods; maintenance planning; predictive maintenance; predictive maintenance decision; reduced dimension linear regression; statistical linear regression; Data models; Etching; Inspection; Linear regression; Maintenance engineering; Predictive models; Training;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Emerging Technology and Factory Automation (ETFA), 2014 IEEE
Conference_Location :
Barcelona
Type :
conf
DOI :
10.1109/ETFA.2014.7005357
Filename :
7005357
Link To Document :
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