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Extrapolation of Load-Pull Data: A Novel Use of GAN Artificial Intelligence Image Completion

Austin Egbert, Charles Baylis, Robert J. Marks

2022IEEE Transactions on Microwave Theory and Techniques16 citationsDOI

Abstract

Amplifier design, both in traditional approaches and real-time circuit optimization, greatly benefits from fast and thorough extraction of information from measurement data. Using only a few performance samples at varying impedances, deep learning image completion techniques can be utilized to extrapolate an entire set of Smith chart load-pull contours. In addition to speeding nonlinear device characterizations, this extrapolation can be performed in an iterative fashion for use as a circuit optimization algorithm with a very low number of measurements. The techniques of this work have been tested in the measurement of a nonlinear, large-signal amplifier. The load impedance can be estimated with a typical error of < 0.1 linear units using as few as seven impedances and yields even better accuracy with larger sample sizes.

Topics & Concepts

ExtrapolationAmplifierSmith chartComputer scienceElectrical impedanceNonlinear systemElectronic engineeringImpedance matchingArtificial intelligenceAlgorithmMathematicsEngineeringElectrical engineeringStatisticsQuantum mechanicsCMOSPhysicsAdvanced Power Amplifier DesignAnalog and Mixed-Signal Circuit DesignRadio Frequency Integrated Circuit Design
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