The ever-increasing number of nodes in current and future wireless communication networks brings unprecedented challenges for the allocation of the available communication resources. This is caused by the combinatorial nature of the resource allocation problems, which limits the performance of state-of-the-art techniques when the network size increases. In this paper, we take a new direction and investigate how methods from statistical physics can be used to address resource allocation problems in large networks. To this aim, we propose a novel model of the wireless network based on a type of disordered physical systems called spin glasses. We show that resource allocation problems have the same structure as the problem of finding specific configurations in spin glasses. Based on this parallel, we investigate the use of the Survey Propagation method from statistical physics in the solution of resource allocation problems in wireless networks. Through numerical simulations we show that the proposed statistical-physics-based resource allocation algorithm is a promising tool for the efficient allocation of communication resources in large wireless communications networks. Given a fixed number of resources, we are able to serve a larger number of nodes, compared to state-of-the-art reference schemes, without introducing more interference into the system
翻译:目前和未来无线通信网络中越来越多的节点给现有通信资源的分配带来了前所未有的挑战。这是由于资源分配问题的组合性质,限制了网络规模扩大时最新技术的性能。在本文件中,我们采取新的方向,调查如何利用统计物理方法解决大型网络的资源分配问题。为此,我们提议了无线网络的新模式,其基础是被称为旋转眼镜的无序物理系统。我们表明,资源分配问题的结构与在旋转眼镜中寻找特定配置的问题相同。基于这一平行情况,我们调查利用统计物理学调查传播方法解决无线网络资源分配问题的情况。我们通过数字模拟表明,拟议的基于统计物理的资源分配算法是大型无线通信网络高效分配通信资源的有利工具。考虑到固定资源数量,我们有能力为更多节点提供服务,而不是为最先进的参考计划服务,同时不对系统造成更多的干扰。