Recurrent Fuzzy-Neural MIMO Channel Modeling

Fuzzy systems and artificial neural networks (ANN), as important components of soft-computation, can be applied together to model uncertainty. A composite block of the fuzzy system and the ANN shares a mutually beneficial association resulting in enhanced performance with smaller networks. It makes...

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Main Authors: Sarma Kandarpa Kumar, Mitra Abhijit
Format: Article
Language:English
Published: De Gruyter 2012-07-01
Series:Journal of Intelligent Systems
Subjects:
Online Access:https://doi.org/10.1515/jisys-2012-0006
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spelling doaj-ceca25ae1ab341a49c003ee39c916af92021-09-06T19:40:34ZengDe GruyterJournal of Intelligent Systems0334-18602191-026X2012-07-0121212114210.1515/jisys-2012-0006Recurrent Fuzzy-Neural MIMO Channel ModelingSarma Kandarpa Kumar0Mitra Abhijit1Department of Electronics and Electrical Engineering, Indian Institute of Technology Guwahati, Guwahati 781014, Assam, IndiaDepartment of Electronics and Electrical Engineering, Indian Institute of Technology Guwahati, Guwahati 781014, Assam, IndiaFuzzy systems and artificial neural networks (ANN), as important components of soft-computation, can be applied together to model uncertainty. A composite block of the fuzzy system and the ANN shares a mutually beneficial association resulting in enhanced performance with smaller networks. It makes them suitable for application with time-varying multi-input multi-output (MIMO) channel modeling enabling such a system to track minute variations in propagation conditions. Here we propose a fuzzy neural system (FNS) using a fuzzy time delay fully recurrent neural network (FTDFRNN) that has the capability to tackle time-varying inputs in fuzzified form and is used to model MIMO channels. The inference engine is constituted by novel FTDFRNN blocks which determine the decision boundaries and tracks in-phase and quadrature components of input signals encompassing stochastic behavior of the MIMO channel. The system shows significant improvement in performance compared to statistical and ANN approaches in terms of faster processing time, lower bit error rate (BER) margins and better precision while carrying out symbol recovery of transmitted data through severely faded MIMO channels.https://doi.org/10.1515/jisys-2012-0006mimoestimationartificial neural networkrecurrent neural networkself organizing mapoptimizationfuzzyfuzzy-neural
collection DOAJ
language English
format Article
sources DOAJ
author Sarma Kandarpa Kumar
Mitra Abhijit
spellingShingle Sarma Kandarpa Kumar
Mitra Abhijit
Recurrent Fuzzy-Neural MIMO Channel Modeling
Journal of Intelligent Systems
mimo
estimation
artificial neural network
recurrent neural network
self organizing map
optimization
fuzzy
fuzzy-neural
author_facet Sarma Kandarpa Kumar
Mitra Abhijit
author_sort Sarma Kandarpa Kumar
title Recurrent Fuzzy-Neural MIMO Channel Modeling
title_short Recurrent Fuzzy-Neural MIMO Channel Modeling
title_full Recurrent Fuzzy-Neural MIMO Channel Modeling
title_fullStr Recurrent Fuzzy-Neural MIMO Channel Modeling
title_full_unstemmed Recurrent Fuzzy-Neural MIMO Channel Modeling
title_sort recurrent fuzzy-neural mimo channel modeling
publisher De Gruyter
series Journal of Intelligent Systems
issn 0334-1860
2191-026X
publishDate 2012-07-01
description Fuzzy systems and artificial neural networks (ANN), as important components of soft-computation, can be applied together to model uncertainty. A composite block of the fuzzy system and the ANN shares a mutually beneficial association resulting in enhanced performance with smaller networks. It makes them suitable for application with time-varying multi-input multi-output (MIMO) channel modeling enabling such a system to track minute variations in propagation conditions. Here we propose a fuzzy neural system (FNS) using a fuzzy time delay fully recurrent neural network (FTDFRNN) that has the capability to tackle time-varying inputs in fuzzified form and is used to model MIMO channels. The inference engine is constituted by novel FTDFRNN blocks which determine the decision boundaries and tracks in-phase and quadrature components of input signals encompassing stochastic behavior of the MIMO channel. The system shows significant improvement in performance compared to statistical and ANN approaches in terms of faster processing time, lower bit error rate (BER) margins and better precision while carrying out symbol recovery of transmitted data through severely faded MIMO channels.
topic mimo
estimation
artificial neural network
recurrent neural network
self organizing map
optimization
fuzzy
fuzzy-neural
url https://doi.org/10.1515/jisys-2012-0006
work_keys_str_mv AT sarmakandarpakumar recurrentfuzzyneuralmimochannelmodeling
AT mitraabhijit recurrentfuzzyneuralmimochannelmodeling
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