Yield enhancement in photolithography through model-based process control: average mode control
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Grosman:2005:tSM,
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title = "Yield enhancement in photolithography through
model-based process control: average mode control",
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author = "Benyamin Grosman and Sivan Lachman-Shalem and
Raaya Swissa and D. R. Lewin",
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journal = "IEEE Transactions on Semiconductor Manufacturing",
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year = "2005",
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volume = "18",
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number = "1",
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pages = "86--93",
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month = feb,
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keywords = "genetic algorithms, genetic programming, integrated
circuit manufacture, multivariable control systems,
nonlinear control systems, photolithography, predictive
control, process control, scanning electron microscopy,
semiconductor process modelling KLA-Tencor-FINLE
PROLITH package, average mode control, fabrication
facility implementation, genetic programming, model
based process control, multivariable feedback
regulatory strategy, multivariable nonlinear model
predictive controller, nonlinear empirical models,
optimal parameters, optimal structure, scanning
electron microscopy, setpoint values, simulated
photolithography, stepper inputs, yield enhancement",
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DOI = "doi:10.1109/TSM.2004.836654",
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ISSN = "0894-6507",
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abstract = "This work describes the fabrication facility (FAB)
implementation of a multivariable nonlinear model
predictive controller (NMPC) for the regulation of
critical dimensions (CD) in photolithography. The
controller is based on nonlinear empirical models
relating the stepper inputs, exposure dose and focus on
the isolated and dense CDs measured by scanning
electron microscopy. Since the adjustments are made on
the basis of the average value of five measured points
in each wafer, this is referred to as average mode
control. The optimal structure and parameters of these
empirical models were determined by genetic
programming, to closely match FAB data. The tuning and
testing of the NMPC regulator were facilitated by the
use of a simulated photolithography track, using the
KLA-Tencor-FINLE PROLITH package, suitably calibrated
to match FAB conditions. On implementation in the FAB,
the NMPC has been demonstrated to consistently maintain
the CDs close to their setpoint values, despite
unmeasured disturbances such as shifts in uncontrolled
inputs. It was also shown that adopting the
multivariable feedback regulatory strategy to regulate
the CDs results in significant improvements in the die
yield.",
- }
Genetic Programming entries for
Benyamin Grosman
Sivan Lachman-Shalem
Raaya Swissa
Daniel R Lewin
Citations