Distributed RAN and backhaul optimization for energy efficient wireless networks

Daniyal Amir Awan, R. Cavalcante, S. Stańczak
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引用次数: 3

Abstract

In this study, we address the problem of minimizing the energy consumption in future 5G networks by means of a joint optimization of radio access network (RAN) and multi-hop wireless backhaul network. The objective of the optimization is to operate the network with the smallest set of base stations while meeting the quality of service (QoS) requirements of users. We first pose the optimization problem as a convex optimization problem. We use a Lagrangian decomposition method to separate the problem in smaller subproblems, which are then solved using minimax primal-dual optimization in a distributed manner. By using the proposed method both the primal and dual problems can be solved at each base station with minimal information exchange between the neighboring base stations. Therefore, the solution proposed is suitable for solving the problems of similar nature in a completely distributed manner in large-scale ultra-dense networks (UDNs) with wireless backhaul infrastructure, which are extensively discussed in the context of 5G.
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高效节能无线网络的分布式RAN和回程优化
在本研究中,我们通过无线接入网(RAN)和多跳无线回程网络的联合优化,解决了未来5G网络中能耗最小化的问题。优化的目标是以最少的基站集运行网络,同时满足用户对服务质量(QoS)的要求。我们首先将优化问题作为一个凸优化问题。我们使用拉格朗日分解方法将问题分解成更小的子问题,然后以分布式的方式使用极小极大原对偶优化来解决问题。利用该方法可以在每个基站上以最小的信息交换来解决原始问题和对偶问题。因此,本文提出的解决方案适用于在5G背景下广泛讨论的具有无线回程基础设施的大规模超密集网络(udn)中以完全分布式的方式解决类似性质的问题。
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