Antenna Selection for Improving Energy Efficiency in XL-MIMO Systems
Jos\'e Carlos Marinello, Taufik Abr\~ao, Abolfazl Amiri, Elisabeth de, Carvalho, Petar Popovski

TL;DR
This paper introduces four antenna selection methods for XL-MIMO systems to enhance energy efficiency by choosing antennas based on long-term fading, balancing power consumption and system performance.
Contribution
It proposes novel antenna selection schemes based on long-term fading parameters and derives a closed-form expression for energy efficiency in XL-MIMO systems.
Findings
Genetic algorithm-based antenna selection yields the highest energy efficiency.
The proposed schemes are computationally simple and effective.
A closed-form expression for XL-MIMO energy efficiency is derived.
Abstract
We consider the recently proposed extra-large scale massive multiple-input multiple-output (XL-MIMO) systems, with some hundreds of antennas serving a smaller number of users. Since the array length is of the same order as the distance to the users, the long-term fading coefficients of a given user vary with the different antennas at the base station (BS). Thus, the signal transmitted by some antennas might reach the user with much more power than that transmitted by some others. From a green perspective, it is not effective to simultaneously activate hundreds or even thousands of antennas, since the power-hungry radio frequency (RF) chains of the active antennas increase significantly the total energy consumption. Besides, a larger number of selected antennas increases the power required by linear processing, such as precoding matrix computation, and short-term channel estimation. In…
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