Litcius/Paper detail

Adaptive two‐stage spectrum sensing model using energy detection and wavelet denoising for cognitive radio systems

Ahmed Fawzi, Walid El‐Shafai, Mohammed Abd‐Elnaby, Abdelhalim Zekry, Fathi E. Abd El‐Samie

2020International Journal of Communication Systems12 citationsDOI

Abstract

Summary This paper presents an efficient adaptive two‐stage spectrum sensing model for the cognitive radio (CR) systems. The proposed model combines two well‐known techniques: energy detection (ED) and wavelet denoising (WD). The ED technique is employed to identify the existence of the primary user (PU) signal in the case of high signal‐to‐noise ratio ( SNR ) by comparing the received signal with a threshold. In the case of low SNR , the ED technique alone cannot be adopted for decision making about the status of the PU due to the noise impact on the received signals. Hence, the stage of WD is exploited prior to the ED for reducing the noise effect and detecting the PU signal in the presence of noise. The detection performance of the proposed model is compared with those of the ED alone and the previous related two‐stage spectrum sensing methods. Simulation results show that the proposed model improves the false alarm rate compared to the ED alone by 36% and 6%, respectively, at low SNR s of −15 and −20 dB. Also, the proposed model yields the smallest detection time compared to the previous two‐stage spectrum sensing methods. The proposed model can be used to minimize the probability of false alarm, achieve a better probability of detection, and improve the sensing process in CR systems.

Topics & Concepts

Cognitive radioComputer scienceFalse alarmEnergy (signal processing)Noise reductionConstant false alarm rateNoise (video)WaveletSIGNAL (programming language)Detection theorySignal-to-noise ratio (imaging)Reduction (mathematics)AlgorithmPattern recognition (psychology)Artificial intelligenceTelecommunicationsWirelessStatisticsMathematicsDetectorProgramming languageGeometryImage (mathematics)Cognitive Radio Networks and Spectrum SensingAdvanced Adaptive Filtering TechniquesDistributed Sensor Networks and Detection Algorithms