Spectrum Sensing: Enhanced Energy Detection Technique Based on Noise Measurement
Youness Arjoune

TL;DR
This paper proposes a dynamic threshold energy detection method for spectrum sensing in cognitive radio, which measures noise power to improve detection accuracy at low SNRs.
Contribution
It introduces a noise measurement-based dynamic threshold technique that enhances energy detection performance without prior signal information.
Findings
Increased probability of detection
Reduced false alarm rate
Effective at low SNR conditions
Abstract
Spectrum sensing enables cognitive radio systems to detect unused portions of the radio spectrum and then use them while avoiding interferences to the primary users. Energy detection is one of the most used techniques for spectrum sensing because it does not require any prior information about the characteristics of the primary user signal. However, this technique does not distinguish between the signal and the noise. It has a low performance at low SNR, and the selection of the threshold becomes an issue because the noise is uncertain. The detection performance of this technique can be further improved using a dynamic selection of the sensing threshold. In this work, we investigate a dynamic selection of this threshold by measuring the power of noise present in the received signal using a blind technique. The proposed model was implemented and tested using GNU Radio software and USRP…
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