4.7 Article

Stochastic Geometry Modeling and Analysis of Single- and Multi-Cluster Wireless Networks

期刊

IEEE TRANSACTIONS ON COMMUNICATIONS
卷 66, 期 10, 页码 4981-4996

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2018.2841366

关键词

Stochastic geometry; clustered wireless networks; Poisson point process; Matern cluster process

资金

  1. Research Office of Sharif University of Technology [QB960605]
  2. VR Research Link Project Green Communications
  3. U.S. National Science Foundation [CCF 1525904]

向作者/读者索取更多资源

This paper develops a stochastic geometry-based approach for the modeling and analysis of single- and multicluster wireless networks. We first define finite homogeneous Poisson point processes to model the number and locations of the transmitters in a confined region as a single-cluster wireless network. We study the coverage probability for a reference receiver for two strategies; closest-selection, where the receiver is served by the closest transmitter among all transmitters, and uniform-selection, where the serving transmitter is selected randomly with uniform distribution. Second, using Matern cluster processes, we extend our model and analysis to multi-cluster wireless networks. Here, two types of receivers are modeled, namely, closed- and open-access receivers. Closed-access receivers are distributed around the cluster centers of the transmitters according to a symmetric normal distribution and can he served only by the transmitters of their corresponding clusters. Open-access receivers, on the other hand, are placed independently of the transmitters and can he served by all transmitters. In all cases, the link distance distribution and the Laplace transform (LT) of the interference are derived. We also derive cliksed-form lower bounds on the LT of the interference for single-cluster wireless networks. The impact of different parameters on the performance is also investigated.

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