Capacity Bounds for Dense Massive MIMO in a Line-of-Sight Propagation Environment

The use of large-scale antenna arrays grants considerable benefits in energy and spectral efficiency to wireless systems due to spatial resolution and array gain techniques. By assuming a dominant line-of-sight environment in a massive multiple-input multiple-output scenario, we derive analytical ex...

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Published inSensors (Basel, Switzerland) Vol. 20; no. 2; p. 520
Main Authors de Figueiredo, Felipe A P, Dias, Claudio F, de Lima, Eduardo R, Fraidenraich, Gustavo
Format Journal Article
LanguageEnglish
Published Switzerland MDPI AG 17.01.2020
MDPI
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Summary:The use of large-scale antenna arrays grants considerable benefits in energy and spectral efficiency to wireless systems due to spatial resolution and array gain techniques. By assuming a dominant line-of-sight environment in a massive multiple-input multiple-output scenario, we derive analytical expressions for the sum-capacity. Then, we show that convenient simplifications on the sum-capacity expressions are possible when working at low and high signal-to-noise ratio regimes. Furthermore, in the case of low and high signal-to-noise ratio regimes, it is demonstrated that the Gamma probability density function can approximate the probability density function of the instantaneous channel sum-capacity as the number of served devices and base station antennas grows, respectively. A second important demonstration presented in this work is that a Gamma probability density function can also be used to approximate the probability density function of the summation of the channel's singular values as the number of devices increases. Finally, it is important to highlight that the presented framework is useful for a massive number of Internet of Things devices as we show that the transmit power of each device can be made inversely proportional to the number of base station antennas.
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ISSN:1424-8220
1424-8220
DOI:10.3390/s20020520