基于学习自动机的认知中继网络中继选择与离散功率控制

Wei Zhong, Gang Chen, Shi Jin
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引用次数: 1

摘要

本文运用博弈论方法研究了认知中继网络中的联合中继选择和离散功率控制问题。以认知中继网络的速率为共同效用,首先将联合中继选择和离散功率控制问题表述为非合作博弈。然后,我们证明了所提出的博弈是一个具有至少一个纯策略纳什均衡(NE)的潜在博弈,并且使认知中继网络的速率最大化的最优策略轮廓构成了所提出博弈的纯策略纳什均衡。我们证明,在温和的条件下,我们提出的对策可以保证纯策略NE的可行性,而不需要预先知道不可行的策略轮廓。然后设计了一种基于学习自动机的分散随机学习算法,并证明了该算法可以收敛到纯策略NE。数值结果表明,该算法具有良好的收敛性和良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Relay selection and discrete power control in cognitive relay networks using learning automata
This paper investigates the joint relay selection and discrete power control in cognitive relay networks through a game theoretic approach. Using the rate of cognitive relay network as the common utility, we firstly formulate the problem of the joint relay selection and discrete power control as a noncooperative game. Then, we prove that the proposed game is a potential game which possess at least one pure strategy Nash equilibrium (NE) and the optimal strategy profile which maximizes the rate of the cognitive relay network constitutes a pure strategy NE of our proposed game. We prove that, under mild conditions, our proposed game can guarantee the feasibility of the pure strategy NE without the advance knowledge of the infeasible strategy profiles. Then we design a decentralized stochastic learning algorithm based on learning automata and prove that the proposed algorithm can converge to a pure strategy NE. Numerical results show that our proposed algorithm has good convergence and promising performance.
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