Multipath clustering and cluster tracking for geometry-based stochastic channel modeling

This paper presents a clustering and tracking method that exploits the geometry of the scattering points (SPs) obtained from the measurement-based ray tracer. The multipath components (MPCs) were categorized into clusters by applying the KPowerMeans (KPM) framework to those SPs. The clusters were tr...

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Main Authors: Hanpinitsak, Panawit, Saito, Kentaro, Takada, JunIchi, Kim, Minseok, Materum, Lawrence
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Published: Animo Repository 2017
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spelling oai:animorepository.dlsu.edu.ph:faculty_research-21562022-07-16T03:31:55Z Multipath clustering and cluster tracking for geometry-based stochastic channel modeling Hanpinitsak, Panawit Saito, Kentaro Takada, JunIchi Kim, Minseok Materum, Lawrence This paper presents a clustering and tracking method that exploits the geometry of the scattering points (SPs) obtained from the measurement-based ray tracer. The multipath components (MPCs) were categorized into clusters by applying the KPowerMeans (KPM) framework to those SPs. The clusters were tracked by comparing the cluster-centroid SPs of the adjacent snapshots. The clusters were estimated based on the indoor environment geometry at 11 GHz, and their physical mechanisms were interpreted. The complexity and performance of this method was assessed and compared with that of conventional KPM by comparing the number of floating point operations (FLOPS) and the channel eigenvalues obtained from the reconstructed channel matrices, which were calculated by superposing the MPCs randomly generated from intracluster parameters. The verification of this method showed that most clusters were estimated and tracked according to the physical location of the scatterers in the environment with acceptable error. Moreover, the eigenvalues reconstructed from the proposed method were closer to the measured ones with less number of FLOPS, which indicates both accuracy and complexity improvement. The results also imply that multiple-input multiple-output performance is highly dependent on the radio propagation channel; therefore, it is imperative that clusters in the channel be determined accurately. © 1963-2012 IEEE. 2017-11-01T07:00:00Z text text/html https://animorepository.dlsu.edu.ph/faculty_research/1157 https://animorepository.dlsu.edu.ph/context/faculty_research/article/2156/type/native/viewcontent Faculty Research Work Animo Repository Radio wave propagation Electrical and Electronics Systems and Communications
institution De La Salle University
building De La Salle University Library
continent Asia
country Philippines
Philippines
content_provider De La Salle University Library
collection DLSU Institutional Repository
topic Radio wave propagation
Electrical and Electronics
Systems and Communications
spellingShingle Radio wave propagation
Electrical and Electronics
Systems and Communications
Hanpinitsak, Panawit
Saito, Kentaro
Takada, JunIchi
Kim, Minseok
Materum, Lawrence
Multipath clustering and cluster tracking for geometry-based stochastic channel modeling
description This paper presents a clustering and tracking method that exploits the geometry of the scattering points (SPs) obtained from the measurement-based ray tracer. The multipath components (MPCs) were categorized into clusters by applying the KPowerMeans (KPM) framework to those SPs. The clusters were tracked by comparing the cluster-centroid SPs of the adjacent snapshots. The clusters were estimated based on the indoor environment geometry at 11 GHz, and their physical mechanisms were interpreted. The complexity and performance of this method was assessed and compared with that of conventional KPM by comparing the number of floating point operations (FLOPS) and the channel eigenvalues obtained from the reconstructed channel matrices, which were calculated by superposing the MPCs randomly generated from intracluster parameters. The verification of this method showed that most clusters were estimated and tracked according to the physical location of the scatterers in the environment with acceptable error. Moreover, the eigenvalues reconstructed from the proposed method were closer to the measured ones with less number of FLOPS, which indicates both accuracy and complexity improvement. The results also imply that multiple-input multiple-output performance is highly dependent on the radio propagation channel; therefore, it is imperative that clusters in the channel be determined accurately. © 1963-2012 IEEE.
format text
author Hanpinitsak, Panawit
Saito, Kentaro
Takada, JunIchi
Kim, Minseok
Materum, Lawrence
author_facet Hanpinitsak, Panawit
Saito, Kentaro
Takada, JunIchi
Kim, Minseok
Materum, Lawrence
author_sort Hanpinitsak, Panawit
title Multipath clustering and cluster tracking for geometry-based stochastic channel modeling
title_short Multipath clustering and cluster tracking for geometry-based stochastic channel modeling
title_full Multipath clustering and cluster tracking for geometry-based stochastic channel modeling
title_fullStr Multipath clustering and cluster tracking for geometry-based stochastic channel modeling
title_full_unstemmed Multipath clustering and cluster tracking for geometry-based stochastic channel modeling
title_sort multipath clustering and cluster tracking for geometry-based stochastic channel modeling
publisher Animo Repository
publishDate 2017
url https://animorepository.dlsu.edu.ph/faculty_research/1157
https://animorepository.dlsu.edu.ph/context/faculty_research/article/2156/type/native/viewcontent
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