A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things.
With bio-medical wearables becoming an essential part of Internet of Medical things (IoMT) for monitoring the health of workers, patients and others in different environments, antenna play a pivotal role in such wearables. In this communication, a novel Horse shoe shaped antenna (HSPA) meant for suc...
Saved in:
Main Authors: | , , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Public Library of Science (PLoS)
2025-01-01
|
Series: | PLoS ONE |
Online Access: | https://doi.org/10.1371/journal.pone.0305203 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
_version_ | 1825206789999689728 |
---|---|
author | Umhara Rasool Khan Javaid A Sheikh Aqib Junaid Shazia Ashraf Altaf A Balkhi |
author_facet | Umhara Rasool Khan Javaid A Sheikh Aqib Junaid Shazia Ashraf Altaf A Balkhi |
author_sort | Umhara Rasool Khan |
collection | DOAJ |
description | With bio-medical wearables becoming an essential part of Internet of Medical things (IoMT) for monitoring the health of workers, patients and others in different environments, antenna play a pivotal role in such wearables. In this communication, a novel Horse shoe shaped antenna (HSPA) meant for such wearables is presented. The vitals of the workers, patients etc. are collected and sent to the IoMT platform for ensuring their safety and monitoring their physical wellbeing. In this article, regression-based Machine learning (ML) techniques are used to facilitate the design of Horse shoe shaped patch antenna to predict the frequency of operation, radiation efficiency and Specific Absorption Rate (SAR) values to accelerate its design process for on-body applications. The HSPA designed resonates at 2.45 GHz in the frequency band of 1.75-2.98 GHz with SAR of 1.89 W/kg for an input power of 16.98 dBm, peak gain of 1.91 dBi and radiation efficiency of 62.07% when mounted on the human body. 1080 samples of data comprising of three EM parameters have been generated using a conventional EM tool by varying the physical and electrical parameters of the design. A detailed comparison of the five regression-based ML algorithms is presented, and it is observed that the ML models help in efficient use of resources while designing an antenna for bio-medical applications. |
format | Article |
id | doaj-art-61338acac1f34320a1d53b9f1e0b1e6a |
institution | Kabale University |
issn | 1932-6203 |
language | English |
publishDate | 2025-01-01 |
publisher | Public Library of Science (PLoS) |
record_format | Article |
series | PLoS ONE |
spelling | doaj-art-61338acac1f34320a1d53b9f1e0b1e6a2025-02-07T05:30:56ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01202e030520310.1371/journal.pone.0305203A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things.Umhara Rasool KhanJavaid A SheikhAqib JunaidShazia AshrafAltaf A BalkhiWith bio-medical wearables becoming an essential part of Internet of Medical things (IoMT) for monitoring the health of workers, patients and others in different environments, antenna play a pivotal role in such wearables. In this communication, a novel Horse shoe shaped antenna (HSPA) meant for such wearables is presented. The vitals of the workers, patients etc. are collected and sent to the IoMT platform for ensuring their safety and monitoring their physical wellbeing. In this article, regression-based Machine learning (ML) techniques are used to facilitate the design of Horse shoe shaped patch antenna to predict the frequency of operation, radiation efficiency and Specific Absorption Rate (SAR) values to accelerate its design process for on-body applications. The HSPA designed resonates at 2.45 GHz in the frequency band of 1.75-2.98 GHz with SAR of 1.89 W/kg for an input power of 16.98 dBm, peak gain of 1.91 dBi and radiation efficiency of 62.07% when mounted on the human body. 1080 samples of data comprising of three EM parameters have been generated using a conventional EM tool by varying the physical and electrical parameters of the design. A detailed comparison of the five regression-based ML algorithms is presented, and it is observed that the ML models help in efficient use of resources while designing an antenna for bio-medical applications.https://doi.org/10.1371/journal.pone.0305203 |
spellingShingle | Umhara Rasool Khan Javaid A Sheikh Aqib Junaid Shazia Ashraf Altaf A Balkhi A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things. PLoS ONE |
title | A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things. |
title_full | A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things. |
title_fullStr | A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things. |
title_full_unstemmed | A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things. |
title_short | A machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things. |
title_sort | machine learning driven computationally efficient horse shoe shaped antenna design for internet of medical things |
url | https://doi.org/10.1371/journal.pone.0305203 |
work_keys_str_mv | AT umhararasoolkhan amachinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT javaidasheikh amachinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT aqibjunaid amachinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT shaziaashraf amachinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT altafabalkhi amachinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT umhararasoolkhan machinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT javaidasheikh machinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT aqibjunaid machinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT shaziaashraf machinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings AT altafabalkhi machinelearningdrivencomputationallyefficienthorseshoeshapedantennadesignforinternetofmedicalthings |