Complex-Chebyshev Functional Link Neural Network Behavioral Model for Broadband Wireless Power Amplifiers

Microwave Theory and Techniques, IEEE Transactions(2012)

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摘要
The Neural Network (NN) based models are commonly used in power amplifier modeling and predistorter design, and seen as a potential alternative to model and compensate broadband power amplifiers (PAs) having medium- to-strong memory effects along with high-order nonlinearity. In this paper, we propose a novel computationally efficient behavior model based on complex-Chebyshev functional link neural network (CCFLNN) suitable for dynamic modeling of wireless PAs. The CCFLNN exhibits a simpler compact structure than the previously reported NNs and can require less computational burden during the learning process since it uses the complex-valued topology and does not need the hidden layers, which exist in most of the conventional neural-network-based models. The proposed approach utilizes the complex-valued inverse QR-decomposition-based recursive least square algorithm to update the weighting coefficients of the CCFLNN model. The proposed model is comparatively compared with a real-valued focused time-delay NN model and a conventional memory polynomial model with respect to computation complexities and modeling performance. The accurate modeling capacity of the CCFLNN model is demonstrated through a full characteristic (working in the strongly nonlinear region) 170-W class AB amplifier driven by a multicarrier WCDMA signal. Furthermore, the proposed model has been applied for linearizing a real PA in multicarrier application. Results obtained from the measurement clearly show that the proposed digital predistorter can eliminate various intensity in-band and out-of band distortions.
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high-order nonlinearity,neural network,memory effect,memory effects,complex-valued topology,inverse qr-decomposition-based recursive least square,recursive least square algorithm,behavioral modeling,power amplifiers,class ab amplifier,broadband wireless power amplifiers,chebyshev approximation,multicarrier wcdma signal,complex-chebyshev functional link neural network (ccflnn),computational complexity,least squares approximations,predistorter design,computation complexity,code division multiple access,power amplifier (pa),complex-chebyshev functional link,digital predistortion,neural nets,power 170 w,inverse qr-decomposition,artificial neural network,power amplifier,qr decomposition,computational modeling,artificial neural networks,computer model,vectors,behavior modeling,mathematical model,out of band
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