Distributed learning approach for joint channel and power allocation in underlay D2D networks

Susan Dominic, L. Jacob
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引用次数: 12

Abstract

This paper investigates the problem of distributed joint channel and power allocation using game theoretic learning solutions in an underlay Device-to-Device (D2D) network where device pairs communicate directly with each other by reusing the spectrum that is being used by cellular users. This reuse, in addition to increasing the capacity, results in new cross-tier and co-tier interference cases. In order to garner the advantages of the resource reuse in the form of higher bit rates and increased energy efficiency, efficient and scalable resource allocation schemes are required. In the next generation ultra-dense networks, the focus is on distributed solutions with low computational complexity and signaling requirements. We formulate the joint channel and power allocation problem as a multi-agent learning problem with discrete strategy sets and suggest a fully distributed learning algorithm to determine the channel index and power level to be used by each device pair. The distributed joint channel and power allocation problem is formulated as an interference mitigation game, where the utility of each player is a function of its experienced expected weighted interference. We then propose a completely distributed and uncoupled stochastic learning algorithm which converges to pure strategy NE in a time-varying radio environment.
底层D2D网络中联合信道和功率分配的分布式学习方法
本文利用博弈论学习解决方案研究了底层设备对设备(D2D)网络中的分布式联合信道和功率分配问题,其中设备对通过重用蜂窝用户正在使用的频谱直接相互通信。这种重用除了增加容量之外,还会导致新的跨层和协层干扰情况。为了获得更高的比特率和更高的能源效率等资源重用的优势,需要高效和可扩展的资源分配方案。在下一代超密集网络中,重点是具有低计算复杂度和信令需求的分布式解决方案。我们将联合信道和功率分配问题表述为具有离散策略集的多智能体学习问题,并提出了一种完全分布式的学习算法来确定每个设备对使用的信道索引和功率水平。将分布式联合信道和功率分配问题表述为一个干扰缓解博弈,其中每个参与者的效用是其经历的期望加权干扰的函数。然后,我们提出了一种完全分布和解耦合的随机学习算法,该算法在时变无线电环境下收敛到纯策略NE。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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