Abstract
Background: The 5G will lead to a great transformation in the mobile telecommunications
sector.
Objective: The huge challenges being faced by wireless communications such as the increased
number of users have given a chance for 5G systems to be developed and considered as an alternative
solution. The 5G technology will provide a higher data rate, reduced latency, more efficient
power than the previous generations, higher system capacity, and more connected devices.
Method: It will offer new different technologies and enhanced versions of the existing ones, as
well as new features. 5G systems are going to use massive MIMO (mMIMO), which is a promising
technology in the development of these systems. Furthermore, mMIMO will increase the wireless
spectrum efficiency and improve the network coverage.
Result: In this paper we present a brief survey on 5G and its technologies, discuss the mMIMO
technology with its features and advantages, review the mMIMO capacity and energy efficiency
and also presents the recent beamforming techniques.
Conclusion: Finally, simulation of adopting different mMIMO detection algorithms are presented,
which shows the Alternating Direction Method Of Multipliers (ADMM)-based infinity-norm
(ADMIN) detector has the best performance.
Keywords:
5G, massive MIMO, detection algorithms, wireless technologies, ADMM, AD-MIN.
Graphical Abstract
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