English

Cognitive Networks Achieve Throughput Scaling of a Homogeneous Network

Information Theory 2016-11-17 v2 math.IT

Abstract

We study two distinct, but overlapping, networks that operate at the same time, space, and frequency. The first network consists of nn randomly distributed \emph{primary users}, which form either an ad hoc network, or an infrastructure-supported ad hoc network with ll additional base stations. The second network consists of mm randomly distributed, ad hoc secondary users or cognitive users. The primary users have priority access to the spectrum and do not need to change their communication protocol in the presence of secondary users. The secondary users, however, need to adjust their protocol based on knowledge about the locations of the primary nodes to bring little loss to the primary network's throughput. By introducing preservation regions around primary receivers and avoidance regions around primary base stations, we propose two modified multihop routing protocols for the cognitive users. Base on percolation theory, we show that when the secondary network is denser than the primary network, both networks can simultaneously achieve the same throughput scaling law as a stand-alone network. Furthermore, the primary network throughput is subject to only a vanishingly fractional loss. Specifically, for the ad hoc and the infrastructure-supported primary models, the primary network achieves sum throughputs of order n1/2n^{1/2} and max{n1/2,l}\max\{n^{1/2},l\}, respectively. For both primary network models, for any δ>0\delta>0, the secondary network can achieve sum throughput of order m1/2δm^{1/2-\delta} with an arbitrarily small fraction of outage. Thus, almost all secondary source-destination pairs can communicate at a rate of order m1/2δm^{-1/2-\delta}.

Keywords

Cite

@article{arxiv.0801.0938,
  title  = {Cognitive Networks Achieve Throughput Scaling of a Homogeneous Network},
  author = {Sang-Woon Jeon and Natasha Devroye and Mai Vu and Sae-Young Chung and Vahid Tarokh},
  journal= {arXiv preprint arXiv:0801.0938},
  year   = {2016}
}

Comments

28 pages, 12 figures, submitted to IEEE Trans. on Information Theory

R2 v1 2026-06-21T10:00:06.773Z