基于平均场理论的绿色认知无线网络联合功率控制分配

H. Tembine, S. Lasaulce, M. Jungers
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引用次数: 20

摘要

本文的目的是展示如何利用控制论、博弈论和平均场理论中的关键概念来设计认知无线网络中的联合控制分配策略。该方法的关键特征之一是发射机(假设其具有认知和自主决策能力)对信道演化规律有一定的了解,并希望达到一定的传输速率目标,同时最大限度地减少电源消耗的能量,而不是与射频信号相对应的能量(这对于设计绿色无线网络非常重要)。为了使分散系统的性能有一个上界,导出了最优集中策略。然后,利用平均场理论(MFT)的最新成果确定认知网络的纳什均衡。为了评估分散和集中策略之间的性能差距,我们引入并评估了基于mft的无政府状态渐近价格(APoA)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint power control-allocation for green cognitive wireless networks using mean field theory
The purpose of this paper is to show how key concepts from control theory, game theory, and mean field theory can be exploited to design joint control-allocation policies in cognitive wireless networks. One of the key features of the proposed approach is that transmitters (which are assumed to be cognitive and autonomous decisionnally speaking) have a certain knowledge of the channel evolution law and want to reach a certain transmission rate target while minimizing the energy consumed by the power supply and not the one corresponding to radio-frequency signals (which is known to be important to design green wireless networks). The optimal centralized policy is derived in order to have an upper bound on the performance of the decentralized system. Then, the Nash equilibrium of the cognitive network is determined by using recent results from mean field theory (MFT). In order to evaluate the performance gap between decentralized and centralized policies we introduce and evaluate the MFT-based asymptotic price of anarchy (APoA).
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