Wideband Sensing and Optimization for Cognitive Radio Networks with Noise Variance Uncertainty
Tadilo Endeshaw Bogale, Luc Vandendorpe, Long Bao Le

TL;DR
This paper introduces novel wideband spectrum sensing techniques for cognitive radio networks that effectively handle noise variance uncertainty, improving detection accuracy and throughput optimization.
Contribution
It proposes new ratio-based test statistics and a generalized energy detector that outperform existing detectors under noise uncertainty conditions.
Findings
GED does not suffer from SNR wall
Optimal sensing time depends on noise variance information
Significant throughput gains with proposed methods
Abstract
This paper considers wide-band spectrum sensing and optimization for cognitive radio (CR) networks with noise variance uncertainty. It is assumed that the considered wide-band contains one or more white sub-bands. Under this assumption, we consider throughput maximization of the CR network while appropriately protecting the primary network. We address this problem as follows. First, we propose novel ratio based test statistics for detecting the edges of each sub-band. Second, we employ simple energy comparison approach to choose one reference white sub-band. Third, we propose novel generalized energy detector (GED) for examining each of the remaining sub-bands by exploiting the noise information of the reference white sub-band. Finally, we optimize the sensing time () to maximize the CR network throughput using the detection and false alarm probabilities of the GED. The proposed…
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Taxonomy
TopicsCognitive Radio Networks and Spectrum Sensing · Distributed Sensor Networks and Detection Algorithms · Advanced MIMO Systems Optimization
