Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity Monitoring

The recent development of wireless wearable sensor networks offers a spectrum of new applications in fields of healthcare, medicine, activity monitoring, sport, safety, human-machine interfacing, and beyond. Successful use of this technology depends on lifetime of the battery-powered sensor nodes. T...

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Main Authors: Marcin Lewandowski, Bartłomiej Płaczek, Marcin Bernas
Format: Article
Language:English
Published: MDPI AG 2021-12-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/21/1/85
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spelling doaj-b281ff1ef3164d2ab1a9332b97b239092020-12-26T00:01:47ZengMDPI AGSensors1424-82202021-12-0121858510.3390/s21010085Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity MonitoringMarcin Lewandowski0Bartłomiej Płaczek1Marcin Bernas2Institute of Computer Science, University of Silesia, Będzińska 39, 41-200 Sosnowiec, PolandInstitute of Computer Science, University of Silesia, Będzińska 39, 41-200 Sosnowiec, PolandDepartment of Computer Science and Automatics, University of Bielsko-Biała, Willowa 2, 43-309 Bielsko-Biała, PolandThe recent development of wireless wearable sensor networks offers a spectrum of new applications in fields of healthcare, medicine, activity monitoring, sport, safety, human-machine interfacing, and beyond. Successful use of this technology depends on lifetime of the battery-powered sensor nodes. This paper presents a new method for extending the lifetime of the wearable sensor networks by avoiding unnecessary data transmissions. The introduced method is based on embedded classifiers that allow sensor nodes to decide if current sensor readings have to be transmitted to cluster head or not. In order to train the classifiers, a procedure was elaborated, which takes into account the impact of data selection on accuracy of a recognition system. This approach was implemented in a prototype of wearable sensor network for human activity monitoring. Real-world experiments were conducted to evaluate the new method in terms of network lifetime, energy consumption, and accuracy of human activity recognition. Results of the experimental evaluation have confirmed that, the proposed method enables significant prolongation of the network lifetime, while preserving high accuracy of the activity recognition. The experiments have also revealed advantages of the method in comparison with state-of-the-art algorithms for data transmission reduction.https://www.mdpi.com/1424-8220/21/1/85wireless sensor networkwearable sensorsactivity recognitionlifetimeenergy consumptiontransmission suppression
collection DOAJ
language English
format Article
sources DOAJ
author Marcin Lewandowski
Bartłomiej Płaczek
Marcin Bernas
spellingShingle Marcin Lewandowski
Bartłomiej Płaczek
Marcin Bernas
Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity Monitoring
Sensors
wireless sensor network
wearable sensors
activity recognition
lifetime
energy consumption
transmission suppression
author_facet Marcin Lewandowski
Bartłomiej Płaczek
Marcin Bernas
author_sort Marcin Lewandowski
title Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity Monitoring
title_short Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity Monitoring
title_full Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity Monitoring
title_fullStr Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity Monitoring
title_full_unstemmed Classifier-Based Data Transmission Reduction in Wearable Sensor Network for Human Activity Monitoring
title_sort classifier-based data transmission reduction in wearable sensor network for human activity monitoring
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2021-12-01
description The recent development of wireless wearable sensor networks offers a spectrum of new applications in fields of healthcare, medicine, activity monitoring, sport, safety, human-machine interfacing, and beyond. Successful use of this technology depends on lifetime of the battery-powered sensor nodes. This paper presents a new method for extending the lifetime of the wearable sensor networks by avoiding unnecessary data transmissions. The introduced method is based on embedded classifiers that allow sensor nodes to decide if current sensor readings have to be transmitted to cluster head or not. In order to train the classifiers, a procedure was elaborated, which takes into account the impact of data selection on accuracy of a recognition system. This approach was implemented in a prototype of wearable sensor network for human activity monitoring. Real-world experiments were conducted to evaluate the new method in terms of network lifetime, energy consumption, and accuracy of human activity recognition. Results of the experimental evaluation have confirmed that, the proposed method enables significant prolongation of the network lifetime, while preserving high accuracy of the activity recognition. The experiments have also revealed advantages of the method in comparison with state-of-the-art algorithms for data transmission reduction.
topic wireless sensor network
wearable sensors
activity recognition
lifetime
energy consumption
transmission suppression
url https://www.mdpi.com/1424-8220/21/1/85
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