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  4. Virtual Equipment for benchmarking Predictive Maintenance algorithms
 
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2012
Conference Paper
Title

Virtual Equipment for benchmarking Predictive Maintenance algorithms

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.
Author(s)
Mattes, A.
Schöpka, U.
Schellenberger, M.  
Scheibelhofer, P.
Leditzky, G.
Mainwork
Winter Simulation Conference, WSC 2012. Proceedings. Vol.3  
Conference
Winter Simulation Conference (WSC) 2012  
International Conference on Modeling and Analysis of Semiconductor Manufacturing (MASM) 2012  
Open Access
DOI
10.1109/WSC.2012.6465084
Language
English
Fraunhofer-Institut für Integrierte Systeme und Bauelementetechnologie IISB  
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