OPC model calibration considerations for data variance
2008
OPC models have been improving their accuracy over the years by modeling more error sources in the
lithographic systems, but model calibration techniques are improving at a slower pace. One area of
modeling calibration that has garnered little interest is the statistical variance of the calibration data
set. OPC models are very susceptible to parameter divergence with statistical variance, but modest caution
is given to the data variance once the calibration sequence has started. Not only should the calibration data
be a good representation of the design intent, but measure redundancy is required to take into consideration
the process and metrology variance. Considering it takes five to nine redundant measurements to generate
a good statistical distribution for averaging and it takes tens of thousands of measurements to mimic the
design intent, the data volume requirements become overwhelming. Typically, the data redundancy is
reduced due to this data explosion, so some level of variance will creep into the model-tuning process.
This is a feasibility study for treatment of data variance during model calibration. This approach was
developed to improve the model fitness for primary out-of-specification features present in the calibration
test pattern by performing small manipulations of the measured data combined with data weighting during
the model calibration process. This data manipulation is executed in image-parameter groups (Imin, Imax,
slope and curvature) to control model convergence. These critical-CD perturbations are typically fractions
of nanometers, which is consistent with the residual variance of the statically valid data set. With this datamanipulation
approach the critical features are pulled into specification without diverging other feature
types.
This paper will detail this model calibration technique and the use of imaging parameters and weights to
converge the model for key feature types. It will also demonstrate its effectiveness on realistic
applications.
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