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Performance evaluation of massive MIMO Systems for future wireless access systems

The vision for 5G is predicated on three main cornerstones. These are massive Machine Type Communication (mMTC) technologies, Ultlra Reliable Low Latency Communications (uRLLC) and enhanced Mobile Broadband (eMBB). In order to achieve the high capacity needed for enhanced Mobile Broadband (eMBB) to...

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Main Author: Gahadza, Mutsawashe
Other Authors: Winberg, Simon
Format: Thesis
Language:English
Published: Department of Electrical Engineering 2020
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access_status_str Open Access
author Gahadza, Mutsawashe
author2 Winberg, Simon
author_browse Gahadza, Mutsawashe
Winberg, Simon
author_facet Winberg, Simon
Gahadza, Mutsawashe
author_sort Gahadza, Mutsawashe
collection Thesis
description The vision for 5G is predicated on three main cornerstones. These are massive Machine Type Communication (mMTC) technologies, Ultlra Reliable Low Latency Communications (uRLLC) and enhanced Mobile Broadband (eMBB). In order to achieve the high capacity needed for enhanced Mobile Broadband (eMBB) to be a reality, a number of technologies have been proposed in various research forums. These include use of spectrum bands like 26GHz which are called the mmWave spectra. Although the use of mmWave spectra brings in a lot of capacity because of increased bandwidth, the signal attenuates quickly as it suffers a lot of diffraction losses at such high frequencies. In order to mitigate this the use of massive MIMO technology has been proposed. Massive MIMO improves both spectral efficiency and energy efficiency and is therefore also proposed for spectra below 6GHz. This study focuses on assessing the potential of massive MIMO through evaluation of linear precoding and receive combining methods that may be applicable to massive MIMO. Linear signal detection and precoding for MIMO is generally not optimal. Optimal methods such as Maximal Likelihood (ML) signal processing methods have high computational complexity such that their practical implementation is difficult. The complexity for ML is O(MN ) for an M−ary modulated signal and N antennas. This is compared to a linear signal processing method called Zero Forcing (ZF) with a complexity of the order of O(N3 ). Assessing the performance of linear signal processing methods is therefore invaluable for the success of massive MIMO in general and 5G in particular. Simulations to evaluate spectral efficiency for massive MIMO were done in MATLAB. Linear and sub-optimal signal processing methods like minimum mean square error (MMSE), zero forcing (ZF), regularized zero forcing (RZF) and maximal ratio combining (MRC) detection and precoding algorithms with relatively less complexity were evaluated. The spectral efficiency (SE) of these signal processing methods were evaluated through a Monte Carlo simulation method in a massive MIMO single base station cell, a 16 cell grid network and a 64 cell grid network. SE values of up to 200 kbps/Hz/cell were obtained with 100 antenna elements and 10 users per cell. The effect of pilot reuse factor for both detection and precoding signal processing systems was also evaluated. A pilot reuse factor of 8 seemed optimal for 64 cell grid network modeled. The overall results obtained from this study show that the Spectral Efficiency (SE) improves as the number of antenna elements to users ratio increased. MMSE and RZF had the best performance under all simulation conditions while for Maximal Ratio Combining (MR) a much larger number of antenna elements was needed in order to approach the performance of MMSE and RZF. An evaluation of the effect of the iii dominant propagation channel conditions was also done by evaluating the spectral efficiency performance of the four detection methods in correlated and uncorrelated channels. Lastly the effect of pilot contamination was investigated. The results showed that an optimal value that maximizes the obtainable spectral efficiency for a massive MIMO network can be obtained.
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institution University of Cape Town (South Africa)
language eng
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license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2020
publishDateRange 2020
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source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/31566 Performance evaluation of massive MIMO Systems for future wireless access systems Gahadza, Mutsawashe Winberg, Simon Electrical Engineering The vision for 5G is predicated on three main cornerstones. These are massive Machine Type Communication (mMTC) technologies, Ultlra Reliable Low Latency Communications (uRLLC) and enhanced Mobile Broadband (eMBB). In order to achieve the high capacity needed for enhanced Mobile Broadband (eMBB) to be a reality, a number of technologies have been proposed in various research forums. These include use of spectrum bands like 26GHz which are called the mmWave spectra. Although the use of mmWave spectra brings in a lot of capacity because of increased bandwidth, the signal attenuates quickly as it suffers a lot of diffraction losses at such high frequencies. In order to mitigate this the use of massive MIMO technology has been proposed. Massive MIMO improves both spectral efficiency and energy efficiency and is therefore also proposed for spectra below 6GHz. This study focuses on assessing the potential of massive MIMO through evaluation of linear precoding and receive combining methods that may be applicable to massive MIMO. Linear signal detection and precoding for MIMO is generally not optimal. Optimal methods such as Maximal Likelihood (ML) signal processing methods have high computational complexity such that their practical implementation is difficult. The complexity for ML is O(MN ) for an M−ary modulated signal and N antennas. This is compared to a linear signal processing method called Zero Forcing (ZF) with a complexity of the order of O(N3 ). Assessing the performance of linear signal processing methods is therefore invaluable for the success of massive MIMO in general and 5G in particular. Simulations to evaluate spectral efficiency for massive MIMO were done in MATLAB. Linear and sub-optimal signal processing methods like minimum mean square error (MMSE), zero forcing (ZF), regularized zero forcing (RZF) and maximal ratio combining (MRC) detection and precoding algorithms with relatively less complexity were evaluated. The spectral efficiency (SE) of these signal processing methods were evaluated through a Monte Carlo simulation method in a massive MIMO single base station cell, a 16 cell grid network and a 64 cell grid network. SE values of up to 200 kbps/Hz/cell were obtained with 100 antenna elements and 10 users per cell. The effect of pilot reuse factor for both detection and precoding signal processing systems was also evaluated. A pilot reuse factor of 8 seemed optimal for 64 cell grid network modeled. The overall results obtained from this study show that the Spectral Efficiency (SE) improves as the number of antenna elements to users ratio increased. MMSE and RZF had the best performance under all simulation conditions while for Maximal Ratio Combining (MR) a much larger number of antenna elements was needed in order to approach the performance of MMSE and RZF. An evaluation of the effect of the iii dominant propagation channel conditions was also done by evaluating the spectral efficiency performance of the four detection methods in correlated and uncorrelated channels. Lastly the effect of pilot contamination was investigated. The results showed that an optimal value that maximizes the obtainable spectral efficiency for a massive MIMO network can be obtained. 2020-03-12T13:15:23Z 2020-03-12T13:15:23Z 2019 2020-03-12T07:13:24Z Master Thesis Masters MSc (Eng) http://hdl.handle.net/11427/31566 eng application/pdf Department of Electrical Engineering Faculty of Engineering and the Built Environment
spellingShingle Electrical Engineering
Gahadza, Mutsawashe
Performance evaluation of massive MIMO Systems for future wireless access systems
thesis_degree_str Master's
title Performance evaluation of massive MIMO Systems for future wireless access systems
title_full Performance evaluation of massive MIMO Systems for future wireless access systems
title_fullStr Performance evaluation of massive MIMO Systems for future wireless access systems
title_full_unstemmed Performance evaluation of massive MIMO Systems for future wireless access systems
title_short Performance evaluation of massive MIMO Systems for future wireless access systems
title_sort performance evaluation of massive mimo systems for future wireless access systems
topic Electrical Engineering
url http://hdl.handle.net/11427/31566
work_keys_str_mv AT gahadzamutsawashe performanceevaluationofmassivemimosystemsforfuturewirelessaccesssystems