6533b839fe1ef96bd12a6544
RESEARCH PRODUCT
A Sparsity-Aware Approach for NBI Estimation and Mitigation in Large Cognitive Radio Networks
Naofal Al-dhahirSebti FoufouRidha HamilaAla GouissemAla Gouissemsubject
EngineeringOrthogonal frequency-division multiplexingComputer system recoveryCognitive radio02 engineering and technologyInterference (wave propagation)SubcarrierFrequency-division multiplexingRecovery0502 economics and business0202 electrical engineering electronic engineering information engineeringElectronic engineeringCost constraintsUnderlaySignal reconstructionOrthogonal frequency division multiplexingbusiness.industry05 social sciences020206 networking & telecommunicationsCompressive sensingWave interferenceCognitive networkNarrow band interferenceCognitive radioCompressed sensingSecondary recoverySignal interferenceFrequency estimationbusinessCognitive networkSparsity050203 business & managementdescription
Underlay cognitive networks should follow strict interference thresholds to operate in parallel with primary networks. This constraint limits their transmission power and eventually the coverage area. Therefore, in this paper, we first design a new approach for asynchronous narrow-band interference (NBI) estimation and mitigation in orthogonal frequency-division multiplexing cognitive radio networks that does not require prior knowledge of the NBI characteristics. Our proposed approach allows the primary user to exploit the sparsity of the secondary users' interference signal to recover it and cancel it based on sparse signal recovery theory. We also propose two subcarrier selection schemes that allow the primary user to further reduce the effect of the secondary users' interference based on sparse signal recovery algorithms. We show that although the primary and secondary transmissions are performed at the same time, the performance of our proposed techniques approach the interference-free limit over practical ranges of NBI power levels. Scopus
year | journal | country | edition | language |
---|---|---|---|---|
2016-09-01 | 2016 IEEE 84th Vehicular Technology Conference (VTC-Fall) |