Throughput Analysis of Cognitive Wireless Networks with Poisson Distributed Nodes Based on Location Information
Pedro H. J. Nardelli, Carlos H. Morais de Lima, Hirley Alves, Paulo, Cardieri, Matti Latva-aho

TL;DR
This paper analyzes the spatial throughput of cognitive wireless networks with Poisson distributed nodes, deriving formulas for achievable rates and showing cognitive ability improves throughput over non-cognitive methods.
Contribution
It provides the first closed-form expressions for achievable rates in cognitive Poisson networks considering different decoding strategies.
Findings
Cognitive ability always outperforms non-cognitive in spatial throughput.
Joint detection decoding yields the best performance.
Closed-form rate distributions are derived for different decoding rules.
Abstract
This paper provides a statistical characterization of the individual achievable rates in bits/s/Hz and the spatial throughput of bipolar Poisson wireless networks in bits/s/Hz/m. We assume that all transmitters have a cognitive ability to know the distance to their receiver's closest interferers so they can individually tune their coding rates to avoid outage events for each spatial realization. Considering that the closest interferer approximates the aggregate interference of all transmitters treated as noise, we derive closed-form expressions for the probability density function of the achievable rates under two decoding rules: treating interference as noise, and jointly detecting the strongest interfering signals treating the others as noise. Based on these rules and the bipolar model, we approximate the expected maximum spatial throughput, showing the best performance of the…
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