Title :
Neural network modeling of land mobile radio channels with nonlinear transmit amplifiers
Author :
Cherif, S. ; Khélifi, Ch
Author_Institution :
Groupe de Recherche en Commun., SUP´´COM, Ariana, Tunisia
Abstract :
Mobile radio transmission is characterized by the use of a high-power amplifier due to severe channel fading. In addition, it is a nonstationary transmission because of the time-varying channel, since the transmitter is a mobile user. Neuronal systems present the advantage of being nonlinear and have a good ability for apprenticeship. That justifies the approach of neuronal modeling that we propose in this paper. We propose a neuronal structure for the modeling of nonlinear multipath mobile radio channel. The model weights are updated using the backpropagation algorithm; except the time-varying block modeling the multipath effect, which is adapted by the recursive least square algorithm allowing nonstationarity tracking
Keywords :
backpropagation; fading channels; land mobile radio; least squares approximations; multipath channels; neural nets; radio transmitters; time-varying channels; time-varying systems; backpropagation algorithm; channel fading; land mobile radio channels; model weights; neural network modeling; nonlinear multipath channel; nonlinear transmit amplifiers; nonstationarity tracking; nonstationary transmission; recursive least square algorithm; time-varying block; time-varying channel; Backpropagation algorithms; Baseband; Fading; Filters; Land mobile radio; Least squares methods; Mobile communication; Neural networks; Radio transmitters; Receivers;
Conference_Titel :
Electronics, Circuits and Systems, 2000. ICECS 2000. The 7th IEEE International Conference on
Conference_Location :
Jounieh
Print_ISBN :
0-7803-6542-9
DOI :
10.1109/ICECS.2000.913034