Energy Efficient Base Station Deployment in Ultra Dense Heterogeneous Networks via Poisson Hole Process

Mine Ardanuc, M. Başaran, L. D. Ata
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引用次数: 3

Abstract

In recent years, stochastic geometry tools have been widely used for the deployment of base stations (BSs) in ultradense multi-tier heterogeneous networks. One of these tools, the independent Poisson point process (PPP), is favored due to its tractability, but in reality, the BSs are not completely independent of each other within tier and across tiers. In this study, a two-tier cellular network model including macro and pico base stations (MBSs and PBSs), is proposed. In this model, MBSs are distributed based on the PPP, while the PBSs are deployed according to the Poisson hole process. Then, the effect of the deployment and the density of BSs on energy efficiency are investigated. The minimum achievable data rate for each layer is formulated and the minimum achievable throughput for the entire cellular network is obtained. Through the optimized BS distribution, it is shown with simulations that energy efficiency can be maximized.
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基于泊松洞过程的超密集异构网络节能基站部署
近年来,随机几何工具被广泛应用于超密集多层异构网络中基站的部署。其中一种工具是独立泊松点过程(PPP),由于其可跟踪性而受到青睐,但实际上,在层内和层间,BSs并非完全相互独立。本文提出了一种包含宏基站和微基站(mbs和PBSs)的双层蜂窝网络模型。在该模型中,基于PPP协议进行mbs分布,根据泊松洞过程进行部署。然后,研究了BSs的分布和密度对能量效率的影响。制定了每层的最小可实现数据速率,并获得了整个蜂窝网络的最小可实现吞吐量。通过优化后的BS分布,仿真表明可以实现能源效率的最大化。
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