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A Distributed Power Allocation Scheme in Green Cognitive Radio Ad Hoc Networks

A Distributed Power Allocation Scheme in Green Cognitive Radio Ad Hoc Networks
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摘要 For the realization of green communications in cognitive radio ad hoc networks(CRAHNs), selfadaptive and efficient power allocation for secondary users(SUs) is essential. With the distributed and timevarying network topology, it needs to consider how to optimize the throughput and power consuming, avoid the interference to primary users(PUs) and other SUs, and pay attention to the convergence and fairness of the algorithm. In this study, this problem is modeled as a constraint optimization problem. Each SU would adjust its power and corresponding strategy with the goal of maximizing its throughput. By studying the interactions between SUs in power allocation and strategy selection, we introduce best-response dynamics game theory and prove the existence of Nash equilibrium(NE) point for performance analysis. We further design a fully distributed algorithm to make the SUs formulate their strategy based on their utility functions, the strategy and number of neighbors in local area. Compared with the water-filling(WF) algorithm, the proposed scheme can significantly increase convergent speed and average throughput, and decrease the power consuming of SUs. For the realization of green communications in cognitive radio ad hoc networks(CRAHNs), selfadaptive and efficient power allocation for secondary users(SUs) is essential. With the distributed and timevarying network topology, it needs to consider how to optimize the throughput and power consuming, avoid the interference to primary users(PUs) and other SUs, and pay attention to the convergence and fairness of the algorithm. In this study, this problem is modeled as a constraint optimization problem. Each SU would adjust its power and corresponding strategy with the goal of maximizing its throughput. By studying the interactions between SUs in power allocation and strategy selection, we introduce best-response dynamics game theory and prove the existence of Nash equilibrium(NE) point for performance analysis. We further design a fully distributed algorithm to make the SUs formulate their strategy based on their utility functions, the strategy and number of neighbors in local area. Compared with the water-filling(WF) algorithm, the proposed scheme can significantly increase convergent speed and average throughput, and decrease the power consuming of SUs.
出处 《Journal of Shanghai Jiaotong university(Science)》 EI 2015年第2期195-201,共7页 上海交通大学学报(英文版)
基金 the National Natural Science Foundation of China(No.61271182) the Specialized Research Fund for the Doctoral Program of Higher Education(No.20120005120010)
关键词 cognitive radio ad hoc networks(CRAHNs) best-response dynamics power allocation cognitive radio ad hoc networks(CRAHNs),best-response dynamics,power allocation
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参考文献16

  • 1Cheng W C, Zhang X, Zhang H L, et al. Ondemand based wireless resources trading for Green communications [C]//Proceedings of IEEE Workshop on Green Communications and Networking (INFOCOM 2011). Shanghai, China: IEEE, 2011: 283-288.
  • 2Akyildiz I F, LeeWY, Chowdhury K R. Spectrum management in cognitive radio ad hoc networks [J].IEEE Network, 2009, 23(4): 6-12.
  • 3Akyildiz I F, Lee W Y, Chowdhury K R.CRAHNs: Cognitive radio ad hoc networks [J]. Ad Hoc Networks, 2009, 7(5): 810-836.
  • 4Jayasinghe L K S, Rajatheva N, Latva-aho M.Optimal power allocation for PNC relay based communications in cognitive radio [C]// Proceedings of IEEE International Conference on Communications(ICC 2011). Kyoto, Japan: IEEE, 2011: 1-5.
  • 5Peh E C Y, Liang Y C, Guan Y L, et al.Power control in opportunistic spectrum access cognitive radio with sensing information at transmitter[C]//Proceedings of IEEE International Conference on Communications (ICC 2011). Kyoto, Japan: IEEE,2011:6-10.
  • 6Li F Z, Yang F, Zhang, X F. An optimal power allocation algorithm in distributed sensor networks[C]//Proceedings of the 2nd IEEE International Conference on Information Management and Engineering(ICIME). Chengdu, China: IEEE, 2010: 414-418.
  • 7Marcille S, Ciblat P, Le Martret C J. Optimal resource allocation in HARQ-based OFDMA wireless networks [C]//Proceedings of IEEE Military Communications Conference (MILCOM 2012). Orlando, FL:IEEE, 2012: 1-6.
  • 8Lu Q X, Peng T, Wang W, et al. Optimal subcarrier and power allocation under interference temperature constraints [C]//Proceedings of IEEE Wireless Communications and Networking Conference (WCNC 2009). Budapest, Hungarian: IEEE, 2009: 1-5.
  • 9Xie R C, Ji H, Si P B, et al. Dynamic channel and power allocation in cognitive radio networks supporting heterogeneous services [C]// Proceedings of IEEE Global Telecommunications Conference (GLOBECOM 2010). Miami, FL: IEEE, 2010: 1-5.
  • 10Wang T Y, Song L Y, Han Z. Coalitional graph games for popular content distribution in cognitive radio VANETs [J]. IEEE Transactions on Vehicular Technology, 2013, 62(8): 4010-4019.

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