Artigo de Periódico
Kalman Filter-Trained Recurrent Neural Equalizers for Time-Varying Channels
Fecha
2005-03Registro en:
0090-6778
v. 53, n. 3
Autor
Jongsoo, Choi
Lima, Antonio Cezar de Castro
Haykin, Simon
Jongsoo, Choi
Lima, Antonio Cezar de Castro
Haykin, Simon
Institución
Resumen
Recurrent neural networks (RNNs) have been successfully applied to communications channel equalization because of their modeling capability for nonlinear dynamic systems. Major
problems of gradient-descent learning techniques commonly employed
to train RNNs are slow convergence rates and long training sequences required for satisfactory performance. This paper presents decision-feedback equalizers using an RNN trained with Kalman filtering algorithms. The main features of the proposed
recurrent neural equalizers, using the extended Kalman filter(EKF) and unscented Kalman filter (UKF), are fast convergence and good performance using relatively short training symbols. Experimental results for various time-varying channels are presented
to evaluate the performance of the proposed approaches over a conventional recurrent neural equalizer.