DocumentCode :
3374267
Title :
Virtual Equipment for benchmarking Predictive Maintenance algorithms
Author :
Mattes, A. ; Schopka, U. ; Schellenberger, Martin ; Scheibelhofer, P. ; Leditzky, G.
Author_Institution :
Fraunhofer IISB, Erlangen, Germany
fYear :
2012
fDate :
9-12 Dec. 2012
Firstpage :
1
Lastpage :
12
Abstract :
This paper presents a comparison of three algorithm types (Bayesian Networks, Random Forest and Linear Regression) for Predictive Maintenance on an implanter system in semiconductor manufacturing. The comparison studies are executed using a Virtual Equipment which serves as a testing environment for prediction algorithms prior to their implementation in a semiconductor manufacturing plant (fab). The Virtual Equipment uses input data that is based on historical fab data collected during multiple filament failure cycles. In an automated study, the input data is altered systematically, e.g. by adding noise, drift or maintenance effects, and used for predictions utilizing the created Predictive Maintenance models. The resulting predictions are compared to the actual time-to-failure and to each other. Multiple analysis methods are applied, resulting in a performance table.
Keywords :
automatic testing; belief networks; benchmark testing; failure analysis; learning (artificial intelligence); maintenance engineering; production engineering computing; regression analysis; semiconductor industry; virtual instrumentation; Bayesian networks; historical fabrication data; implanter system; linear regression; multiple analysis method; multiple filament failure cycles; predictive maintenance algorithm benchmarking; predictive maintenance model; random forest; semiconductor manufacturing plant; testing environment; virtual equipment; Bayesian methods; Data models; Prediction algorithms; Predictive maintenance; Predictive models; Semiconductor process modeling; Vegetation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Simulation Conference (WSC), Proceedings of the 2012 Winter
Conference_Location :
Berlin
ISSN :
0891-7736
Print_ISBN :
978-1-4673-4779-2
Electronic_ISBN :
0891-7736
Type :
conf
DOI :
10.1109/WSC.2012.6465084
Filename :
6465084
Link To Document :
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