Optimal Base Station Antenna Downtilt in Downlink Cellular Networks
February 21, 2018 Β· Declared Dead Β· π IEEE Transactions on Wireless Communications
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Authors
Junnan Yang, Ming Ding, Guoqiang Mao, Zihuai Lin, De-gan Zhang, Tom Hao Luan
arXiv ID
1802.07479
Category
cs.NI: Networking & Internet
Cross-listed
cs.IT
Citations
127
Venue
IEEE Transactions on Wireless Communications
Last Checked
4 months ago
Abstract
From very recent studies, the area spectral efficiency (ASE) performance of downlink (DL) cellular networks will continuously decrease and finally to zero with the network densification in a fully loaded ultra-dense network (UDN) when the absolute height difference between a base station (BS) antenna and a user equipment (UE) antenna is larger than zero, which is referred as the ASE Crash. We revisit this issue by considering the impact of the BS antenna downtilt on the downlink network capacity. In general, there exists a height difference between a BS and a UE in practical networks. It is common to utilize antenna downtilt to adjust the direction of the vertical antenna pattern, and thus increase received signal power or reduce inter-cell interference power to improve network performance. This paper focuses on investigating the relationship between the base station antenna downtilt and the downlink network capacity in terms of the coverage probability and the ASE. The analytical results of the coverage probability and the ASE are derived, and we find that there exists an optimal antenna downtilt to achieve the maximal coverage probability for each base station density. Moreover, we derive numerically solvable expressions for the optimal antenna downtilt, which is a function of the base station density. Our theoretical and numerical results show that after applying the optimal antenna downtilt, the network performance can be improved significantly. Specifically, with the optimal antenna downtilt, the ASE crash can be delayed by nearly one order of magnitude in terms of the base station density.
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