A Connected Dominating Set Based Fast Decentralized Cooperative Sensing Algorithm for Cognitive Radio Networks
スポンサーリンク
概要
- 論文の詳細を見る
This letter proposes a novel connected dominanting set based decentralized cooperative spectrum sensing algorithm for cognitive radio networks. It is analytically shown that the proposed algorithm distributively converges to the average consensus as that of traditional distributed consensus algorithm, while reducing both the convergence time and message complexity significantly.
- The Institute of Electronics, Information and Communication Engineersの論文
- 2012-04-01
著者
-
WU Qihui
Institute of Communications Engineering, PLA University of Science and Technology
-
Wu Qihui
Institute Of Communications Engineering Pla University Of Science And Technology
-
Wang Jinlong
Institute Of Communication Engineering Pla University Of Science And Technology
-
Wu Qihui
Institute Of Communication Engineering Pla University Of Science And Technology
-
XU Yuhua
Institute of Communications Engineering, PLA University of Science and Technology
-
ANPALAGAN Alagan
Department of Electrical and Computer Engineering, Ryerson University
-
Xu Yuhua
Institute Of Communications Engineering Pla University Of Science And Technology
-
Anpalagan Alagan
Department Of Electrical And Computer Engineering Ryerson University
-
Du Zhiyong
Institute Of Communications Engineering Pla University Of Science And Technology
関連論文
- State Transition Probability Based Sensing Duration Optimization Algorithm in Cognitive Radio
- Joint Frequency and Power Allocation in Wireless Mesh Networks : A Self-Pricing Game Model
- Outage Capacity Analysis for SIMO Cognitive Fading Channel in Spectrum Sharing Environment
- Opportunistic Cooperative Multicast Based on Coded Cooperation
- Distributed Channel Selection in CRAHNs with Heterogeneous Spectrum Opportunities : A Local Congestion Game Approach
- A Connected Dominating Set Based Fast Decentralized Cooperative Sensing Algorithm for Cognitive Radio Networks
- Attacker Detection Based on Dissimilarity of Local Reports in Collaborative Spectrum Sensing