Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna

In this study, we present our findings from investigating the use of a machine learning (ML) technique to improve the performance of Quasi-Yagi�Uda antennas operating in the n78 band for 5G applications. This research study investigates several techniques, such as simulation, measurement, and an R...

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Main Authors: Haque, M.A., Rahman, M.A., Al-Bawri, S.S., Yusoff, Z., Sharker, A.H., Abdulkawi, W.M., Saha, D., Paul, L.C., Zakariya, M.A.
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Published: Nature Research 2023
Online Access:http://scholars.utp.edu.my/id/eprint/37277/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85166595533&doi=10.1038%2fs41598-023-39730-1&partnerID=40&md5=25f2fedeac46bc2fbd9d7b974e1f77c8
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spelling oai:scholars.utp.edu.my:372772023-10-04T08:36:50Z http://scholars.utp.edu.my/id/eprint/37277/ Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna Haque, M.A. Rahman, M.A. Al-Bawri, S.S. Yusoff, Z. Sharker, A.H. Abdulkawi, W.M. Saha, D. Paul, L.C. Zakariya, M.A. In this study, we present our findings from investigating the use of a machine learning (ML) technique to improve the performance of Quasi-Yagi�Uda antennas operating in the n78 band for 5G applications. This research study investigates several techniques, such as simulation, measurement, and an RLC equivalent circuit model, to evaluate the performance of an antenna. In this investigation, the CST modelling tools are used to develop a high-gain, low-return-loss Yagi�Uda antenna for the 5G communication system. When considering the antenna�s operating frequency, its dimensions are 0.642 λ� 0.583 λ . The antenna has an operating frequency of 3.5 GHz, a return loss of - 43.45 dB, a bandwidth of 520 MHz, a maximum gain of 6.57 dB, and an efficiency of almost 97. The impedance analysis tools in CST Studio�s simulation and circuit design tools in Agilent ADS software are used to derive the antenna�s equivalent circuit (RLC). We use supervised regression ML method to create an accurate prediction of the frequency and gain of the antenna. Machine learning models can be evaluated using a variety of measures, including variance score, R square, mean square error, mean absolute error, root mean square error, and mean squared logarithmic error. Among the nine ML models, the prediction result of Linear Regression is superior to other ML models for resonant frequency prediction, and Gaussian Process Regression shows an extraordinary performance for gain prediction. R-square and var score represents the accuracy of the prediction, which is close to 99 for both frequency and gain prediction. Considering these factors, the antenna can be deemed an excellent choice for the n78 band of a 5G communication system. © 2023, Springer Nature Limited. Nature Research 2023 Article NonPeerReviewed Haque, M.A. and Rahman, M.A. and Al-Bawri, S.S. and Yusoff, Z. and Sharker, A.H. and Abdulkawi, W.M. and Saha, D. and Paul, L.C. and Zakariya, M.A. (2023) Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna. Scientific Reports, 13 (1). ISSN 20452322 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85166595533&doi=10.1038%2fs41598-023-39730-1&partnerID=40&md5=25f2fedeac46bc2fbd9d7b974e1f77c8 10.1038/s41598-023-39730-1 10.1038/s41598-023-39730-1 10.1038/s41598-023-39730-1
institution Universiti Teknologi Petronas
building UTP Resource Centre
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Petronas
content_source UTP Institutional Repository
url_provider http://eprints.utp.edu.my/
description In this study, we present our findings from investigating the use of a machine learning (ML) technique to improve the performance of Quasi-Yagi�Uda antennas operating in the n78 band for 5G applications. This research study investigates several techniques, such as simulation, measurement, and an RLC equivalent circuit model, to evaluate the performance of an antenna. In this investigation, the CST modelling tools are used to develop a high-gain, low-return-loss Yagi�Uda antenna for the 5G communication system. When considering the antenna�s operating frequency, its dimensions are 0.642 λ� 0.583 λ . The antenna has an operating frequency of 3.5 GHz, a return loss of - 43.45 dB, a bandwidth of 520 MHz, a maximum gain of 6.57 dB, and an efficiency of almost 97. The impedance analysis tools in CST Studio�s simulation and circuit design tools in Agilent ADS software are used to derive the antenna�s equivalent circuit (RLC). We use supervised regression ML method to create an accurate prediction of the frequency and gain of the antenna. Machine learning models can be evaluated using a variety of measures, including variance score, R square, mean square error, mean absolute error, root mean square error, and mean squared logarithmic error. Among the nine ML models, the prediction result of Linear Regression is superior to other ML models for resonant frequency prediction, and Gaussian Process Regression shows an extraordinary performance for gain prediction. R-square and var score represents the accuracy of the prediction, which is close to 99 for both frequency and gain prediction. Considering these factors, the antenna can be deemed an excellent choice for the n78 band of a 5G communication system. © 2023, Springer Nature Limited.
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author Haque, M.A.
Rahman, M.A.
Al-Bawri, S.S.
Yusoff, Z.
Sharker, A.H.
Abdulkawi, W.M.
Saha, D.
Paul, L.C.
Zakariya, M.A.
spellingShingle Haque, M.A.
Rahman, M.A.
Al-Bawri, S.S.
Yusoff, Z.
Sharker, A.H.
Abdulkawi, W.M.
Saha, D.
Paul, L.C.
Zakariya, M.A.
Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna
author_facet Haque, M.A.
Rahman, M.A.
Al-Bawri, S.S.
Yusoff, Z.
Sharker, A.H.
Abdulkawi, W.M.
Saha, D.
Paul, L.C.
Zakariya, M.A.
author_sort Haque, M.A.
title Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna
title_short Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna
title_full Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna
title_fullStr Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna
title_full_unstemmed Machine learning-based technique for gain and resonance prediction of mid band 5G Yagi antenna
title_sort machine learning-based technique for gain and resonance prediction of mid band 5g yagi antenna
publisher Nature Research
publishDate 2023
url http://scholars.utp.edu.my/id/eprint/37277/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85166595533&doi=10.1038%2fs41598-023-39730-1&partnerID=40&md5=25f2fedeac46bc2fbd9d7b974e1f77c8
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score 13.211869