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Hybrid model of inter-stage spectrum trading in multistage game-theoretic framework

Hybrid model of inter-stage spectrum trading in multistage game-theoretic framework
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摘要 Dynamic spectrum access(DSA),consisting of spectrum sharing and spectrum trading stage,becomes a promising approach to increase the efficiency of spectrum usage and system performance.In this paper,from the perspective of individual interest optimization,we focus on strategy adaptation of network users and their interaction in spectrum trading process.Considering adverse effects on decision-making accuracy and the fairness among network users via local information acquirement,a hybrid game model based on global information of relevant spectrum is proposed to formulate intelligent behaviors of both primary and secondary users.Specifically,by using the evolutionary game theory,a spectrum-selection approach for the evolution process of secondary users is designed to converge to the evolutionary equilibrium gradually.Moreover,competition among primary users is modeled as a non-cooperative game and an iterative algorithm is employed to achieve the Nash equilibrium.The simulation results show that the proposed hybrid game model investigates network dynamics under different network parameter settings. Dynamic spectrum access(DSA),consisting of spectrum sharing and spectrum trading stage,becomes a promising approach to increase the efficiency of spectrum usage and system performance.In this paper,from the perspective of individual interest optimization,we focus on strategy adaptation of network users and their interaction in spectrum trading process.Considering adverse effects on decision-making accuracy and the fairness among network users via local information acquirement,a hybrid game model based on global information of relevant spectrum is proposed to formulate intelligent behaviors of both primary and secondary users.Specifically,by using the evolutionary game theory,a spectrum-selection approach for the evolution process of secondary users is designed to converge to the evolutionary equilibrium gradually.Moreover,competition among primary users is modeled as a non-cooperative game and an iterative algorithm is employed to achieve the Nash equilibrium.The simulation results show that the proposed hybrid game model investigates network dynamics under different network parameter settings.
出处 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2011年第2期78-85,共8页 中国邮电高校学报(英文版)
基金 supported by the National Basic Research Program of China (2009CB320406) the Hi-Tech Research and Development Program of China (2009AA01Z262) the National Natural Science Foundation of China (60971125, 60832009) the National Key Program of New Generation of Broadband Wireless Mobile Communication Network (2011ZX03005-004-02)
关键词 multistage game-theoretic framework cognitive radio spectrum trading evolutionary game theory Nash equilibrium multistage game-theoretic framework, cognitive radio, spectrum trading, evolutionary game theory, Nash equilibrium
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参考文献12

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