Title :
On the Feedback Capacity of Power-Constrained Gaussian Noise Channels With Memory
Author :
Shaohua Yang;Aleksandar Kavcic;Sekhar Tatikonda
Author_Institution :
Marvell Semicond. Inc, Santa Clara, CA
Abstract :
For a stationary additive Gaussian-noise channel with a rational noise power spectrum of a finite-order L, we derive two new results for the feedback capacity under an average channel input power constraint. First, we show that a very simple feedback-dependent Gauss-Markov source achieves the feedback capacity, and that Kalman-Bucy filtering is optimal for processing the feedback. Based on these results, we develop a new method for optimizing the channel inputs for achieving the Cover-Pombra block-length- n feedback capacity by using a dynamic programming approach that decomposes the computation into n sequentially identical optimization problems where each stage involves optimizing O(L 2) variables. Second, we derive the explicit maximal information rate for stationary feedback-dependent sources. In general, evaluating the maximal information rate for stationary sources requires solving only a few equations by simple nonlinear programming. For first-order autoregressive and/or moving average (ARMA) noise channels, this optimization admits a closed-form maximal information rate formula. The maximal information rate for stationary sources is a lower bound on the feedback capacity, and it equals the feedback capacity if the long-standing conjecture, that stationary sources achieve the feedback capacity, holds
Keywords :
"Feedback","Gaussian noise","Information rates","Optimization methods","Additive noise","Gaussian channels","Signal to noise ratio","Gaussian processes","Filtering","Dynamic programming"
Journal_Title :
IEEE Transactions on Information Theory
DOI :
10.1109/TIT.2006.890728