Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching Pursuit

Massive Multiple-Input Multiple-Output (MIMO) is envisioned to be a strong candidate technology for the upcoming 5th generation (5G) of wireless communication networks. This research work presents a novel Compressed Sensing (CS) and Superimposed Training (SiT) based technique for estimating the spar...

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Main Authors: Babar Mansoor, Moazzam Islam Tiwana, Syed Junaid Nawaz, Abrar Ahmed, Abdul Haseeb, Ataul Aziz Ikram
Format: Article
Language:English
Published: Kaunas University of Technology 2019-08-01
Series:Elektronika ir Elektrotechnika
Subjects:
Online Access:http://eejournal.ktu.lt/index.php/elt/article/view/23975
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spelling doaj-cba52a7cd0e44f87adb2f685c0d5af652020-11-25T02:49:20ZengKaunas University of TechnologyElektronika ir Elektrotechnika1392-12152029-57312019-08-01254818710.5755/j01.eie.25.4.2397523975Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching PursuitBabar MansoorMoazzam Islam TiwanaSyed Junaid NawazAbrar AhmedAbdul HaseebAtaul Aziz IkramMassive Multiple-Input Multiple-Output (MIMO) is envisioned to be a strong candidate technology for the upcoming 5th generation (5G) of wireless communication networks. This research work presents a novel Compressed Sensing (CS) and Superimposed Training (SiT) based technique for estimating the sparse uplink channels in massive MIMO systems. The proposed technique involves arithmetic addition of a periodic, but low powered training sequence with each user’s information sequence. Consequently, separately dedicated resources for the pilot symbols are not needed. Moreover, to attain the estimates of the Channel State Information (CSI) in the uplink, the sparsity exhibited by the MIMO channels is exploited by incorporating CS based Orthogonal Matching Pursuit (OMP) algorithm. For decoding the transmitted information symbols of each user, a Linear Minimum Mean Square Error (LMMSE) based equalizer is incorporated at the receiving Base Station (BS). Based on the obtained simulation results, the proposed SiT-OMP technique outperforms the existing Least Squares (SiT) channel estimation technique. The comparison is done using performance metrics of the Bit Error Rate (BER) and the Normalized Channel Mean Square Error (NCMSE).http://eejournal.ktu.lt/index.php/elt/article/view/23975channel estimationcompressed sensingmatching pursuit algorithmsmassive multiple-input multiple-output
collection DOAJ
language English
format Article
sources DOAJ
author Babar Mansoor
Moazzam Islam Tiwana
Syed Junaid Nawaz
Abrar Ahmed
Abdul Haseeb
Ataul Aziz Ikram
spellingShingle Babar Mansoor
Moazzam Islam Tiwana
Syed Junaid Nawaz
Abrar Ahmed
Abdul Haseeb
Ataul Aziz Ikram
Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching Pursuit
Elektronika ir Elektrotechnika
channel estimation
compressed sensing
matching pursuit algorithms
massive multiple-input multiple-output
author_facet Babar Mansoor
Moazzam Islam Tiwana
Syed Junaid Nawaz
Abrar Ahmed
Abdul Haseeb
Ataul Aziz Ikram
author_sort Babar Mansoor
title Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching Pursuit
title_short Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching Pursuit
title_full Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching Pursuit
title_fullStr Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching Pursuit
title_full_unstemmed Data Ridden Pilots Based Estimation of Sparse Multipath Massive MIMO Channels Using Orthogonal Matching Pursuit
title_sort data ridden pilots based estimation of sparse multipath massive mimo channels using orthogonal matching pursuit
publisher Kaunas University of Technology
series Elektronika ir Elektrotechnika
issn 1392-1215
2029-5731
publishDate 2019-08-01
description Massive Multiple-Input Multiple-Output (MIMO) is envisioned to be a strong candidate technology for the upcoming 5th generation (5G) of wireless communication networks. This research work presents a novel Compressed Sensing (CS) and Superimposed Training (SiT) based technique for estimating the sparse uplink channels in massive MIMO systems. The proposed technique involves arithmetic addition of a periodic, but low powered training sequence with each user’s information sequence. Consequently, separately dedicated resources for the pilot symbols are not needed. Moreover, to attain the estimates of the Channel State Information (CSI) in the uplink, the sparsity exhibited by the MIMO channels is exploited by incorporating CS based Orthogonal Matching Pursuit (OMP) algorithm. For decoding the transmitted information symbols of each user, a Linear Minimum Mean Square Error (LMMSE) based equalizer is incorporated at the receiving Base Station (BS). Based on the obtained simulation results, the proposed SiT-OMP technique outperforms the existing Least Squares (SiT) channel estimation technique. The comparison is done using performance metrics of the Bit Error Rate (BER) and the Normalized Channel Mean Square Error (NCMSE).
topic channel estimation
compressed sensing
matching pursuit algorithms
massive multiple-input multiple-output
url http://eejournal.ktu.lt/index.php/elt/article/view/23975
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