On Continuous-Time Gaussian Channels
Xianming Liu, Guangyue Han

TL;DR
This paper establishes a rigorous link between continuous-time Gaussian channels with feedback and memory and their discrete-time counterparts, enabling better analysis and understanding of such channels using sampling and approximation theorems.
Contribution
It introduces causality-preserving sampling and approximation theorems for continuous-time Gaussian channels under the Brownian motion formulation, filling a key theoretical gap.
Findings
Established causality-preserving sampling and approximation theorems
Provided an approximation approach for analyzing continuous-time Gaussian channels
Reinterpreted long-standing results and derived new insights using stochastic calculus
Abstract
A continuous-time white Gaussian channel can be formulated using a white Gaussian noise, and a conventional way for examining such a channel is the sampling approach based on the Shannon-Nyquist sampling theorem, where the original continuous-time channel is converted to an equivalent discrete-time channel, to which a great variety of established tools and methodology can be applied. However, one of the key issues of this scheme is that continuous-time feedback and memory cannot be incorporated into the channel model. It turns out that this issue can be circumvented by considering the Brownian motion formulation of a continuous-time white Gaussian channel. Nevertheless, as opposed to the white Gaussian noise formulation, a link that establishes the information-theoretic connection between a continuous-time channel under the Brownian motion formulation and its discrete-time counterparts…
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Taxonomy
TopicsWireless Communication Security Techniques · stochastic dynamics and bifurcation · Statistical Mechanics and Entropy
