Title :
Performance of joint data and channel estimation using tap variable step-size (TVSS) LMS for multipath fast fading channel
Author_Institution :
ASCOM Tech. Ltd., Magenwil, Switzerland
fDate :
28 Nov- 2 Dec 1994
Abstract :
Maximum-likelihood joint data and channel estimation with the so-called tap-variable step-size least mean square (TVSS-LMS) algorithm is proposed for the emerging Trans European Trunked RAdio (TETRA). It is shown that the TVSS-LMS is suggested by a simplification of the more sophisticated Kalman channel predictor. The different step sizes can be coarsely determined depending on the respective average channel tap power. Simulation results of a 16-state joint estimator show that for comparable complexity the TVSS-LMS considerably outperforms the conventional LMS in frequency-selective fast fading. Also in flat fading, where differential demodulation is near optimum for TETRA, the TVSS-LMS achieves almost the same bit error rate as a differential demodulation, while the conventional LMS experiences severe degradation
Keywords :
demodulation; fading; land mobile radio; least mean squares methods; maximum likelihood estimation; multipath channels; prediction theory; radiowave propagation; 16-state joint estimator; Kalman channel predictor; LMS algorithm; TETRA; Trans European Trunked Radio; average channel tap power; bit error rate; differential demodulation; frequency-selective fast fading; joint data-channel estimation; least mean square algorithm; maximum-likelihood estimation; multipath fast fading channel; private mobile radio systems; simulation results; tap variable step-size; Channel estimation; Degradation; Demodulation; Fading; Frequency estimation; Kalman filters; Land mobile radio; Least squares approximation; Maximum likelihood estimation; Resonance light scattering;
Conference_Titel :
Global Telecommunications Conference, 1994. GLOBECOM '94. Communications: The Global Bridge., IEEE
Conference_Location :
San Francisco, CA
Print_ISBN :
0-7803-1820-X
DOI :
10.1109/GLOCOM.1994.512803