Title
A Reliable Energy Efficient Dynamic Spectrum Sensing for Cognitive Radio IoT Networks
Abstract
The Internet of Things (IoT) that allows connectivity of network devices embedded with sensors undergoes severe data exchange interference as the unlicensed spectrum band becomes overcrowded. By applying cognitive radio (CR) capabilities to IoT, a novel cognitive radio IoT (CR-IoT) network arises as a promising solution to tackle the spectrum scarcity problem in conventional IoT network. CR is a form of wireless communication whereby a radio is dynamically programmed and configured to detect available spectrum channels. This enhances the spectrum utilization efficiency of radio frequency while avoiding interference and overcrowding to other users. Energy efficiency in CR-IoT network must be carefully formulated since the sensor nodes consume significant energy to support CR operations, such as in dynamic spectrum sensing and switching. In this paper, we study channel spectrum sensing to boost energy efficiency in clustered CR-IoT networks. We propose a two-way information exchange dynamic spectrum sensing algorithms to improve energy efficiency for data transmission in licensed channels. In addition, the concern of the energy consumption in dynamic spectrum sensing and switching, we propose an energy efficient optimal transmit power allocation technique to enhance the dynamic spectrum sensing and data throughput. Simulation results validate that the proposed dynamic spectrum sensing technique can significantly reduce the energy consumption in CR-IoT networks.
Year
DOI
Venue
2019
10.1109/jiot.2019.2911109
IEEE Internet of Things Journal
Keywords
Field
DocType
Sensors,Heuristic algorithms,Internet of Things,Energy consumption,Frequency modulation,Interference,Throughput
Spectrum management,Transmitter power output,Wireless,Data transmission,Computer science,Efficient energy use,Computer network,Electronic engineering,Throughput,Energy consumption,Cognitive radio
Journal
Volume
Issue
ISSN
6
4
2327-4662
Citations 
PageRank 
References 
8
0.43
0
Authors
5
Name
Order
Citations
PageRank
James Adu Ansere1181.93
Guangjie Han21890172.76
Hao Wang37910.19
Chang Choi426139.04
w u celimuge547949.53