Coverage and Rate of Joint Communication and Parameter Estimation in Wireless Networks
Nicholas R. Olson, Jeffrey G. Andrews, and Robert W. Heath Jr

TL;DR
This paper introduces a mathematical framework for analyzing joint communication and sensing in wireless networks, focusing on coverage probability and ergodic rate, with insights into network densification effects.
Contribution
It develops novel bounds and analytical tools for evaluating sensing and communication performance in JCAS networks using stochastic geometry.
Findings
Network densification improves sensing SINR performance.
Derived bounds enable performance analysis under various network densities.
Framework extends to radar parameter estimation using mutual information.
Abstract
From an information theoretic perspective, joint communication and sensing (JCAS) represents a natural generalization of communication network functionality. However, it requires the re-evaluation of network performance from a multi-objective perspective. We develop a novel mathematical framework for characterizing the sensing and communication coverage probability and ergodic rate in JCAS networks. We employ a formulation of sensing parameter estimation based on mutual information to extend the notions of coverage probability and ergodic rate to the radar setting. We define sensing coverage probability as the probability that the rate of information extracted about the parameters of interest associated with a typical radar target exceeds some threshold, and sensing ergodic rate as the spatial average of the aforementioned rate of information. Using this framework, we analyze the…
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Taxonomy
TopicsCooperative Communication and Network Coding · Distributed Sensor Networks and Detection Algorithms
