Low-Complexity Interference Cancellation Algorithms for Detection in Media-based Modulated Uplink Massive-MIMO Systems
Manish Mandloi, Devendra Singh Gurjar

TL;DR
This paper introduces low-complexity detection algorithms for media-based modulation in massive MIMO systems, enhancing spectral efficiency and detection performance while reducing computational complexity.
Contribution
It proposes novel mirror activation pattern selection and iterative interference cancellation algorithms for improved detection in MBM-mMIMO systems.
Findings
Proposed algorithms outperform existing methods in performance-complexity trade-off.
Simulation results demonstrate superior detection accuracy.
Algorithms effectively utilize favorable MAPs for interference cancellation.
Abstract
Media-based modulation (MBM) is a novel modulation technique that can improve the spectral efficiency of the existing wireless systems. In MBM, multiple radio frequency (RF) mirrors are placed near the transmit antenna(s) and are switched ON/OFF to create different channel fade realizations. In such systems, additional information is conveyed through the ON/OFF status of RF mirrors along with conventional modulation symbols. A challenging task at the receiver is to detect the transmitted information symbols and extract the additional information from the channel fade realization used for transmission. In this paper, we consider a massive MIMO (mMIMO) system where each user relies on MBM for transmitting information to the base station, and investigate the problem of symbol detection at the base station. First, we propose a mirror activation pattern (MAP) selection based modified…
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