Throughput and Collision Analysis of Multi-Channel Multi-Stage Spectrum Sensing Algorithms
Wesam Gabran, Przemys{\l}aw Pawe{\l}czak, and Danijela \v{C}abri\'c

TL;DR
This paper develops an analytical framework to evaluate multi-stage spectrum sensing algorithms in Opportunistic Spectrum Access networks, analyzing how various parameters affect throughput and collision probability.
Contribution
It introduces the first comprehensive analytical model for multi-channel multi-stage spectrum sensing, considering multiple parameters and realistic traffic scenarios.
Findings
Multi-stage sensing often outperforms single-stage sensing in throughput and collision reduction.
Prolonged initial channel observation reduces collision probability significantly.
Two-stage sensing balances throughput and collision probability effectively in realistic scenarios.
Abstract
Multi-stage sensing is a novel concept that refers to a general class of spectrum sensing algorithms that divide the sensing process into a number of sequential stages. The number of sensing stages and the sensing technique per stage can be used to optimize performance with respect to secondary user throughput and the collision probability between primary and secondary users. So far, the impact of multi-stage sensing on network throughput and collision probability for a realistic network model is relatively unexplored. Therefore, we present the first analytical framework which enables performance evaluation of different multi-channel multi-stage spectrum sensing algorithms for Opportunistic Spectrum Access networks. The contribution of our work lies in studying the effect of the following parameters on performance: number of sensing stages, physical layer sensing techniques and…
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