Title :
Neural network modeling and identification of nonlinear channels with memory: algorithms, applications, and analytic models
Author :
Ibnkahla, Mohamed ; Bershad, Neil J. ; Sombrin, Jacques ; Castanié, Francis
Author_Institution :
Nat. Polytech. Inst., Toulouse, France
fDate :
5/1/1998 12:00:00 AM
Abstract :
This paper proposes a neural network (NN) approach for modeling nonlinear channels with memory. Two main examples are given: (1) modeling digital satellite channels and (2) modeling solid-state power amplifiers (SSPAs). NN models provide good generalization performance (in terms of output signal-to-error ratio). NN modeling of digital satellite channels allows the characterization of each channel component. Neural net models represent the SSPA as a system composed of a linear complex filter followed by a nonlinear memoryless neural net followed by a linear complex filter. If the new algorithms are to be used in real systems, it is important that the algorithm designer understands their learning behavior and performance capabilities. Some simplified neural net models are analyzed in support of the simulation results. The analysis provides some theoretical basis for the usefulness of NNs for modeling satellite channels and amplifiers. The analysis of the simplified adaptive models explains the simulation results qualitatively but not quantitatively. The analysis proceeds in several steps and involves several novel ideas to avoid solving the more difficult general nonlinear problem
Keywords :
UHF power amplifiers; adaptive filters; digital filters; digital radio; learning (artificial intelligence); neural nets; satellite communication; telecommunication channels; telecommunication computing; travelling wave amplifiers; SSPA; adaptive models; algorithms; analytic models; applications; digital satellite channels; generalization performance; identification; learning behavior; linear complex filter; memory; neural network modeling; nonlinear channels; nonlinear memoryless neural net; output signal-to-error ratio; performance capabilities; solid-state power amplifiers; Algorithm design and analysis; Analytical models; Digital filters; Neural networks; Nonlinear filters; Power system modeling; Satellites; Solid modeling; System identification; Transfer functions;
Journal_Title :
Signal Processing, IEEE Transactions on