Behavior modeling for spectrum sharing in wireless cognitive networks

被引:0
作者
Yinglei Teng
F. Richard Yu
Yifei Wei
Li Wang
Yong Zhang
机构
[1] Beijing University of Posts and Telecommunications,Department of Systems and Computer Engineering
[2] Carleton University,undefined
来源
Wireless Networks | 2012年 / 18卷
关键词
Cognitive network; Spectrum sharing; OODA; Utility Function; Double auction;
D O I
暂无
中图分类号
学科分类号
摘要
Cognitive networks are designed based on the concept of dynamic and intelligent network management, characterizing the feature of self-sensing, self-configuration, self-learning, self-consciousness etc. In this paper, focusing on the spectrum sharing and competition, we propose a novel OODA (Orient-Observe-Decide-Act) based behavior modeling methodology to illustrate spectrum access problem in the heterogenous cognitive network which consists of multiple primary networks (PN, i.e. licensed networks) and multiple secondary networks (SN, i.e. unlicensed networks). Two different utility functions are designed for primary users and secondary users respectively based on marketing mechanism to formulate the decide module mathematically. Also, we adopt expectation and learning process in the utility design which considers the variance of channels, transmission forecasting, afore trading histories and etc. A double auction based spectrum trading scheme is established and implemented in two scenarios assorted from the supply-and-demand relationship i.e. LPMS (Less PNs and More SNs) and MPLS (More PNs and Less SNs). After the discussion of the Bayesian Nash Equilibrium, numerical results with four bidding strategies of SNs are presented to reinforce the effectiveness of the proposed utility evaluation based decision modules under two scenarios. Besides, we prove that the proposed behavior model based spectrum access method maintains frequency efficiency comparable with traditional centralized cognitive access approaches and reduces the network deployment cost.
引用
收藏
页码:929 / 947
页数:18
相关论文
共 70 条
  • [1] Thomas R. W.(2006)Cognitive networks: Adaptation and learning to achieve end-to-end performance objectives IEEE Communications Magazine 44 51-57
  • [2] Friend D. H.(2009)Cooperative communications for cognitive radio networks Proceedings of the IEEE 97 878-893
  • [3] DaSilva L. A.(2010)A distributed consensus-based cooperative spectrum sensing in cognitive radios IEEE Transactions Vehicular Technology 59 383-393
  • [4] MacKenzie A. B.(2009)Performance evaluation of cognitive radios: Metrics, utility functions and methodologys Proceedings of the IEEE 97 642-659
  • [5] Letaief K. B.(2008)Cognitive radio networks IEEE Signal Processing Magazine 125 12-23
  • [6] Zhang W.(2010)Prediction-based topology control and routing in cognitive radio mobile Ad hoc networks IEEE Transactions Vehicular Technology 59 4443-4452
  • [7] Li Z.(2011)Application layer qos optimization for multimedia transmission over cognitive radio networks Wireless Networks 17 371-383
  • [8] Yu F. R.(2010)Cross-layer design for TCP performance improvement in cognitive radio networks IEEE Transactions Vehicular Technology 59 2485-2495
  • [9] Huang M.(2008)Self-configuring applications for heterogeneous systems: Program composition and optimization using cognitive techniques Proceedings of the IEEE 96 849-862
  • [10] Zhao Y.(2005)Cognitive radio: Brain-empowered wireless communications IEEE Journal on Seleted Areas in Communications 23 201-220