The Capacity Region of the Wireless Ergodic Fading Interference Channel with Partial CSIT to Within One Bit
Reza K. Farsani

TL;DR
This paper establishes a new capacity outer bound for the two-user wireless ergodic fading interference channel with partial CSIT, showing it is within one bit of the achievable rate region and generalizes static channel results.
Contribution
It introduces a novel capacity outer bound for the ergodic fading interference channel with partial CSIT, combining broadcast channel and genie-aided techniques, and proves near-optimality within one bit.
Findings
Outer bound is optimal for uniformly strong interference.
Outer bound is sum-rate optimal for mixed interference.
Outer bound is within one bit of the Han-Kobayashi achievable region.
Abstract
Fundamental capacity limits are studied for the two-user wireless ergodic fading IC with partial Channel State Information at the Transmitters (CSIT) where each transmitter is equipped with an arbitrary deterministic function of the channel state (this model yields a full control over how much state information is available). One of the main challenges in the analysis of fading networks, specifically multi-receiver networks including fading ICs, is to obtain efficient capacity outer bounds. In this paper, a novel capacity outer bound is established for the two-user ergodic fading IC. For this purpose, by a subtle combination of broadcast channel techniques (i.e., manipulating mutual information functions composed of vector random variables by Csiszar-Korner identity) and genie-aided techniques, first a single-letter outer bound characterized by mutual information functions including…
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Taxonomy
TopicsWireless Communication Security Techniques · Cooperative Communication and Network Coding · Advanced MIMO Systems Optimization
