Title :
Distributed Consensus-Based Weight Design for Cooperative Spectrum Sensing
Author :
Wenlin Zhang ; Yi Guo ; Hongbo Liu ; Yingying Chen ; Zheng Wang ; Mitola, J.
Author_Institution :
Western Digital Corp., Irvine, CA, USA
Abstract :
In this paper, we study the distributed spectrum sensing in cognitive radio networks. Existing distributed consensus-based fusion algorithms only ensure equal gain combining of local measurements, whose performance may be incomparable to various centralized soft combining schemes. Motivated by this fact, we consider practical channel conditions and link failures, and develop new weighted soft measurement combining without a centralized fusion center. Following the measurement by its energy detector, each secondary user exchanges its own measurement statistics with its local one-hop neighbors, and chooses the information exchanging rate according to the measurement channel condition, e.g., the signal-to-noise ratio (SNR). We rigorously prove the convergence of the new consensus algorithm, and show all secondary users hold the same global decision statistics from the weighted soft measurement combining throughout the network. We also provide distributed optimal weight design under uncorrelated measurement channels. The convergence rate of the consensus iteration is given under the assumption that each communication link has an independent probability to fail, and the upper bound of the iteration number of the ε-convergence is explicitly given as a function of system parameters. Simulation results show significant improvement of the sensing performance compared to existing consensus-based approaches, and the performance of the distributed weighted design is comparable to the centralized weighted combining scheme.
Keywords :
cognitive radio; cooperative communication; iterative methods; radio spectrum management; signal detection; cognitive radio networks; communication link; consensus iteration; cooperative spectrum sensing; distributed consensus-based fusion algorithm; distributed consensus-based weight design; distributed spectrum sensing; global decision statistics; information exchanging rate; local one-hop neighbor; signal-to-noise ratio; soft combining scheme; weighted soft measurement; Algorithm design and analysis; Convergence; Diversity reception; Heuristic algorithms; Sensors; Signal to noise ratio; Weight measurement; Cognitive radio networks; Cooperative spectrum sensing; Weighted average consensus; cognitive radio networks; weighted average consensus;
Journal_Title :
Parallel and Distributed Systems, IEEE Transactions on
DOI :
10.1109/TPDS.2014.2307951