Queuing Analysis of Opportunistic Cognitive Radio IoT Network with Imperfect Sensing
Asif Ahmed Sardar, Dibbendu Roy, Washim Uddin Mondal, Goutam Das

TL;DR
This paper models a CR-IoT network with imperfect spectrum sensing, analyzing the trade-offs between interference, energy transfer, and QoS using a DTMC approach that accounts for overlapping activities.
Contribution
It introduces a realistic DTMC-based model for CR-IoT networks considering overlapping primary and IoT activities, and analyzes the sustainability region under imperfect sensing.
Findings
The model accurately predicts interference and QoS trade-offs.
Overlapping activities significantly impact network performance.
Simulation validates the analytical results.
Abstract
In this paper, we analyze a Cognitive Radio-based Internet-of-Things (CR-IoT) network comprising a Primary Network Provider (PNP) and an IoT operator. The PNP uses its licensed spectrum to serve its users. The IoT operator identifies the white-space in the licensed band at regular intervals and opportunistically exploits them to serve the IoT nodes under its coverage. IoT nodes are battery-operated devices that require periodical energy replenishment. We employ the Microwave Power Transfer (MPT) technique for its superior energy transfer efficiency over long-distance. The white-space detection process is not always perfect and the IoT operator may jeopardize the PNP's transmissions due to misdetection. To reduce the possibility of such interferences, some of the spectrum holes must remain unutilized, even when the IoT nodes have data to transmit. The IoT operator needs to decide what…
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Taxonomy
TopicsEnergy Harvesting in Wireless Networks · Cognitive Radio Networks and Spectrum Sensing · Advanced MIMO Systems Optimization
