DocumentCode
2833
Title
A Direct Learning Adaptive Scheme for Power-Amplifier Linearization Based on Wirtinger Calculus
Author
Lashkarian, Navid ; Jun Shi ; Forbes, Marcellus
Author_Institution
Broadcom Corp., Sunnyvale, CA, USA
Volume
61
Issue
12
fYear
2014
fDate
Dec. 2014
Firstpage
3496
Lastpage
3505
Abstract
Performance of radio frequency power amplifiers is often significantly degraded by nonlinearity and memory effects. We study the applicability of complex-domain adaptive filtering to the problem of predistortion kernel learning for power-amplifier linearization. The least-squares error function that arises while deriving the optimal predistortion function is often real with complex-valued arguments, therefore, nonanalytic in the Cauchy-Riemann sense. To avoid the strict Cauchy-Riemann differentiability condition for non-holomorphic functions (e.g. mean-square error), we resort to the theory of Wirtinger calculus, which allows construction of differential operators in a way that is analogous to functions of real variables. By deploying the new differential operators, digital pre-distortion coefficient optimization is carried out in a space isomorphic to the real vector space, at a computational complexity that is significantly lower than that of the real space. We also derive proper Hessian forms for minimization of the objective function and propose a variety of descent-update algorithms, namely Newton, Gauss-Newton, and their quasi-equivalent variants for this problem. Performance assessments and experimental validation of the proposed methodologies are also addressed.
Keywords
Hessian matrices; adaptive filters; differentiation; distortion; electronic engineering computing; learning (artificial intelligence); least squares approximations; linearisation techniques; radiofrequency power amplifiers; vectors; Cauchy-Riemann differentiability condition; Gauss-Newton; Hessian forms; Wirtinger calculus; complex-domain adaptive filtering; complex-valued arguments; descent-update algorithms; differential operators; digital predistortion coefficient optimization; least-squares error function; memory effects; nonholomorphic functions; nonlinearity; optimal predistortion function; power-amplifier linearization; predistortion kernel learning; quasi-equivalent variants; radio frequency power amplifiers; real vector space; Baseband; Calculus; Kernel; Nonlinear distortion; Optimization; Predistortion; Vectors; Direct learning; Wirtinger calculus; linearization; power amplifier; predistortion;
fLanguage
English
Journal_Title
Circuits and Systems I: Regular Papers, IEEE Transactions on
Publisher
ieee
ISSN
1549-8328
Type
jour
DOI
10.1109/TCSI.2014.2337252
Filename
6928509
Link To Document