Prediction of wafer state after plasma processing using real-timetool data
Lee, S.F.; Spanos, C.J.
Semiconductor Manufacturing, IEEE Transactions on
Volume 8, Issue 3, Aug 1995 Page(s):252 - 261
Digital Object Identifier 10.1109/66.400999
Summary:Empirical models based on real-time equipment signals are used to
predict the outcome (e.g., etch rates and uniformity) of each wafer
during and after plasma processing. Three regression and one neural
network modeling methods were investigated. The models are verified on
data collected several weeks after the initial experiment, demonstrating
that the models built with real-time data survive small changes in the
machine due to normal operation and maintenance. The predictive
capability can be used to assess the quality of the wafers after
processing, thereby ensuring that only wafers worth processing continue
down the fabrication line. Future applications include real-time
evaluation of wafer features and economical run-to-run control
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