DocumentCode :
872683
Title :
Novel Adaptive Nonlinear Predistorters Based on the Direct Learning Algorithm
Author :
Zhou, Dayong ; DeBrunner, Victor E.
Author_Institution :
Sch. of Electr. & Comput. Eng., Oklahoma Univ., Norman, OK
Volume :
55
Issue :
1
fYear :
2007
Firstpage :
120
Lastpage :
133
Abstract :
The adaptive nonlinear predistorter is an effective technique to compensate for the nonlinear distortion existing in digital communication and control systems. However, available adaptive nonlinear predistorters using indirect learning are sensitive to measurement noise and do not perform optimally. Other available types are either slow to converge, complicated in structure and computationally expensive, or do not consider the memory effects in nonlinear systems such as a high power amplifier (HPA). In this paper, we first propose several novel adaptive nonlinear predistorters based on direct learning algorithms - the nonlinear filtered-x RLS (NFXRLS) algorithm, the nonlinear adjoint LMS (NALMS) algorithm, and the nonlinear adjoint RLS (NARLS) algorithm. Using these new learning algorithms, we design adaptive nonlinear predistorters for an HPA with memory effects or for an HPA following a linear system. Because of the direct learning algorithm, these novel adaptive predistorters outperform nonlinear predistorters that are based on the indirect learning method in the sense of normalized mean square error (NMSE), bit error rate (BER), and spectral regrowth. Moreover, our developed adaptive nonlinear predistorters are computationally efficient and/or converge rapidly when compared to other adaptive nonlinear predistorters that use direct learning, and furthermore can be easily implemented. We further simplify our proposed algorithms by exploring the robustness of our proposed algorithm as well as by examining the statistical properties of what we call the "instantaneous equivalent linear" (IEL) filter. Simulation results confirm the effectiveness of our proposed algorithms
Keywords :
adaptive filters; error statistics; least mean squares methods; nonlinear distortion; nonlinear filters; power amplifiers; BER; adaptive nonlinear predistorters; bit error rate; digital communication system; digital control system; direct learning algorithm; high power amplifier; indirect learning method; instantaneous equivalent filter; memory effects; nonlinear adjoint LMS algorithm; nonlinear adjoint RLS algorithm; nonlinear distortion compensation; nonlinear filtered-x RLS algorithm; normalized mean square error; spectral regrowth; Adaptive control; Bit error rate; Communication system control; Control systems; Digital communication; Digital control; Nonlinear control systems; Nonlinear distortion; Programmable control; Resonance light scattering; Adaptive filters; adaptive nonlinear filter; communication system nonlinearities; nonlinear distortion; power amplifiers; predistortion; spectral regrowth;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2006.882058
Filename :
4034263
Link To Document :
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