Title :
Adaptive modelling and long-range prediction of mobile fading channels
Author :
Heidari, Alireza ; Khandani, Amir K. ; McAvoy, D.
Author_Institution :
ECE Dept., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
A key element for many fading-compensation techniques is a (long-range) prediction tool for the fading channel. A linear approach, usually used to model the time evolution of the fading process, does not perform well for long-range prediction applications. An adaptive fading channel prediction algorithm using a sum-sinusoidal-based state-space approach is proposed. This algorithm utilises an improved adaptive Kalman estimator, comprising an acquisition mode and a tracking algorithm. Furthermore, for the sake of a lower computational complexity, an enhanced linear predictor for channel fading is proposed, including a multi-step AR predictor and the respective tracking algorithm. Comparing the two methods in our simulations show that the proposed Kalman-based algorithm can significantly outperform the linear method, for both stationary and non-stationary fading processes, and especially for long-range predictions. The performance and the self-recovering structure, as well as the reasonable computational complexity, makes the algorithm appealing for practical applications.
Keywords :
Kalman filters; computational complexity; fading channels; wireless channels; Kalman-based algorithm; adaptive Kalman estimator; adaptive fading channel prediction algorithm; adaptive modelling; channel fading; computational complexity; fading-compensation techniques; long-range prediction; mobile fading channels; multi-step AR predictor; sum-sinusoidal-based state-space approach; tracking algorithm;
Journal_Title :
Communications, IET
DOI :
10.1049/iet-com.2008.0308