M. Myslinski, F. Verbeyst, M. vanden Bossche, D. Schreurs
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S-functions behavioral model order reduction based on narrowband modulated large-signal network analyzer measurements
In this paper we report for the first time on order reduction applied to S-functions behavioral models. The most dominant model parameters are selected based on the relative uncertainty of their estimated values evaluated against a threshold value. The selection procedure is performed on the same measurement data that is used to extract the model and obtained using a large-signal network analyzer. High level of model order reduction, achieved without any substantial loss of the prediction accuracy, is demonstrated on S-functions extracted for a packaged pHEMT device.