DocumentCode :
2040670
Title :
Direct learning adaptation of power amplifier pre-distortion based on Wirtinger calculus
Author :
Lashkarian, Navid ; Jun Shi ; Forbes, Marcellus
fYear :
2013
fDate :
3-6 Nov. 2013
Firstpage :
1286
Lastpage :
1290
Abstract :
To improve efficiency of power amplifier (PA), linearity characteristics is often compromised when targeting lower power consumption (class B). Moreover, sophisticated PA efficiency improvement schemes such as envelope tracking tend to further boost the nonlinear characteristics of the PA. Digital pre-distortion (DPD) is a technique to improve the linearity of a power amplifier (PA) at expense of extra processing in the base-band. Derivation of optimal DPD adaptive learning involves optimization of real-valued objective functions of complex variables, whose derivative or gradient does not exist in the standard complex-analysis sense, due to non-holomorphic nature of the function. This is often overlooked in the literature and results in erroneous results. For instance, the methodology presented in [8] computes the gradient with respect to the variable to compute the updates. However, as discussed in [3] and [1], it is the gradient with respect to the conjugate of the variable (and not the variable) that leads to the nonpositive increment of the objective function. We resort to the theory of Wirtinger calculus to derive the proper first-and second-order derivatives (gradient and Hessian operators) of the non-holomorphic objective function and extend the results to optimization methodologies such as Newton, Gauss-Newton, and their quasi-variants. Results are assessed through experimental validation of the proposed methods on WLAN PAs.
Keywords :
Hessian matrices; calculus; distortion; gradient methods; optimisation; power amplifiers; Hessian operators; PA efficiency improvement schemes; WLAN PAs; Wirtinger calculus theory; digital pre-distortion technique; direct learning adaptation; envelope tracking; first-order derivatives; gradient operators; linearity characteristics; lower power consumption; non-holomorphic nature; non-holomorphic objective function; nonlinear characteristics; optimal DPD adaptive learning; power amplifier pre-distortion; real-valued objective functions; second-order derivatives; Calculus; Equations; Kernel; Optimization; Predistortion; Vectors; Zirconium;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Signals, Systems and Computers, 2013 Asilomar Conference on
Conference_Location :
Pacific Grove, CA
Print_ISBN :
978-1-4799-2388-5
Type :
conf
DOI :
10.1109/ACSSC.2013.6810501
Filename :
6810501
Link To Document :
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