Nonlinear Behavioral Modeling Dependent on Load Reflection Coefficient Magnitude
A new frequency-domain nonlinear behavioral modeling technique is presented and validated in this paper. This technique extends existing Padé and poly-harmonic distortion models by including the load reflection magnitude, |Γ L |, as a parameter. Although a rigorous approach requires a full 2-D load...
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Veröffentlicht in: | IEEE transactions on microwave theory and techniques 2015-05, Vol.63 (5), p.1518-1529 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | A new frequency-domain nonlinear behavioral modeling technique is presented and validated in this paper. This technique extends existing Padé and poly-harmonic distortion models by including the load reflection magnitude, |Γ L |, as a parameter. Although a rigorous approach requires a full 2-D load-pull model to cover the entire Smith chart, simulation and experimental evidence have shown that such a 1-D model-that retains only amplitude information of the load reflection coefficient-can give accuracy close to that of a full 2-D load-pull model. Consequently, neglecting the phase constitutes an approximation that provides large benefits without appearing to lead to a severe compromise in accuracy. Furthermore, compared with traditional load-independent models, the new |Γ L |-dependent models provide a major improvement in model accuracy. After a discussion of the model extraction methodology, examples are provided comparing traditional load-pull X-parameter models with the model presented in this paper. The new model not only provides consistently good accuracy, but also has a much smaller model file size. Along with the examples that display the ability of the new modeling technique to predict fundamental frequency behavioral, a second harmonic example is also provided. The modeling approach is also validated using measurements results. |
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ISSN: | 0018-9480 1557-9670 |
DOI: | 10.1109/TMTT.2015.2416232 |