Title :
Fault detection for a via etch process using adaptive multivariate methods
Author :
Spitzlsperger, Gerhard ; Schmidt, Carsten ; Ernst, Guenther ; Strasser, Hans ; Speil, Michaela
Author_Institution :
Renesas Semicond. Eur. GmbH, Landshut, Germany
Abstract :
Multivariate process control charts like Hotelling T2 and squared prediction error are gaining acceptance in the semiconductor industry to monitor the increasing amount of data available by modern process tools. These methods require models built based on the covariance matrix of a trainings data set. Slowly drifting manufacturing processes degrade this estimation for the covariance matrix creating false alarms. To overcome the problem, adaptive modeling schemes are considered. The tradeoff between sensitivity and false alarms for static and adaptive models applied to a via etching process is demonstrated. Possible improvements by incorporating domain knowledge are shown.
Keywords :
adaptive control; covariance analysis; covariance matrices; fault diagnosis; multivariable control systems; process control; process monitoring; sputter etching; adaptive control; adaptive modeling; adaptive multivariate methods; covariance analysis; covariance matrix; fault detection; fault diagnosis; multivariable control systems; multivariate process control charts; semiconductor industry; sputter etching; squared prediction error; Covariance matrix; Degradation; Electronics industry; Error correction; Etching; Fault detection; Manufacturing processes; Monitoring; Process control; Training data; Fault detection; hotelling; knowledge-based methods; plasma etching;
Journal_Title :
Semiconductor Manufacturing, IEEE Transactions on
DOI :
10.1109/TSM.2005.858495