Millimeter wave QR based frequency selective surface (FSS)

In this work, a mmWave - QR based Frequency Selective Surface (FSS) for IoT Sensing Applications with a variety of configuration is proposed. The QR based FSS has a variety of resonant values and can be used as a filter due to very small band stop. Discovered the following FSS with unique S11 charac...

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Main Author: Krishna, Sandeep
Other Authors: Muhammad Faeyz Karim
Format: Theses and Dissertations
Language:English
Published: 2019
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Online Access:http://hdl.handle.net/10356/78718
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-787182023-07-04T16:23:14Z Millimeter wave QR based frequency selective surface (FSS) Krishna, Sandeep Muhammad Faeyz Karim School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering In this work, a mmWave - QR based Frequency Selective Surface (FSS) for IoT Sensing Applications with a variety of configuration is proposed. The QR based FSS has a variety of resonant values and can be used as a filter due to very small band stop. Discovered the following FSS with unique S11 characteristics that can be used for various applications. M model - ports kept at 5 mm it is found that at 54.5GHz with a -13dB power drop as per time domain solver. Extended dipole model - ports kept at 10 mm it is found that at 49GHz with a -14dB power drop as per time domain solver. full QR code model - ports kept at 10 mm it is found that at 13GHz and 15GHz with a -22dB power drop as per time domain solver. QR code which is a link to the site: https://ntulearn.ntu.edu.sg/ - ports kept at 10 mm it is found that at 47.5GHz with a -20dB power drop as per time domain solver. It is proposed that these FSS can be suitably used for sensing and filtering applications in the unlicensed 57-63 GHZ spectrum and from 45GHz – 57GHz frequency band. The fabrication of the proposed structures was done to validate results. Different settings of the receiver readings are noted and used to train the machine learning model to recognize the different responses that can be received for the same FSS. One such model Ensemble – Subspace discriminant has been trained to retrieve label with an accuracy of 84.2% for correct classification of data. This accuracy is observed for a data set of 5 models at different reader distance each with 1000 data points with 9 identified features. Master of Science (Communications Engineering) 2019-06-26T03:07:11Z 2019-06-26T03:07:11Z 2019 Thesis http://hdl.handle.net/10356/78718 en 52 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering
spellingShingle Engineering::Electrical and electronic engineering
Krishna, Sandeep
Millimeter wave QR based frequency selective surface (FSS)
description In this work, a mmWave - QR based Frequency Selective Surface (FSS) for IoT Sensing Applications with a variety of configuration is proposed. The QR based FSS has a variety of resonant values and can be used as a filter due to very small band stop. Discovered the following FSS with unique S11 characteristics that can be used for various applications. M model - ports kept at 5 mm it is found that at 54.5GHz with a -13dB power drop as per time domain solver. Extended dipole model - ports kept at 10 mm it is found that at 49GHz with a -14dB power drop as per time domain solver. full QR code model - ports kept at 10 mm it is found that at 13GHz and 15GHz with a -22dB power drop as per time domain solver. QR code which is a link to the site: https://ntulearn.ntu.edu.sg/ - ports kept at 10 mm it is found that at 47.5GHz with a -20dB power drop as per time domain solver. It is proposed that these FSS can be suitably used for sensing and filtering applications in the unlicensed 57-63 GHZ spectrum and from 45GHz – 57GHz frequency band. The fabrication of the proposed structures was done to validate results. Different settings of the receiver readings are noted and used to train the machine learning model to recognize the different responses that can be received for the same FSS. One such model Ensemble – Subspace discriminant has been trained to retrieve label with an accuracy of 84.2% for correct classification of data. This accuracy is observed for a data set of 5 models at different reader distance each with 1000 data points with 9 identified features.
author2 Muhammad Faeyz Karim
author_facet Muhammad Faeyz Karim
Krishna, Sandeep
format Theses and Dissertations
author Krishna, Sandeep
author_sort Krishna, Sandeep
title Millimeter wave QR based frequency selective surface (FSS)
title_short Millimeter wave QR based frequency selective surface (FSS)
title_full Millimeter wave QR based frequency selective surface (FSS)
title_fullStr Millimeter wave QR based frequency selective surface (FSS)
title_full_unstemmed Millimeter wave QR based frequency selective surface (FSS)
title_sort millimeter wave qr based frequency selective surface (fss)
publishDate 2019
url http://hdl.handle.net/10356/78718
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