Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis

The paper analyses the capabilities of an information system for improving sleep quality based on the analysis of biometric data using Ambient Intelligence (AmI) technology. In the context of modern stressful realities, in particular the impact of the COVID-19 pandemic and social upheavals that sign...

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Main Authors: M.S. Graf, A.V. Yakoniuk, D.V. Krant, I.I. Golovach
Format: Article
Language:English
Published: Zhytomyr Polytechnic State University 2024-12-01
Series:Технічна інженерія
Subjects:
Online Access:http://ten.ztu.edu.ua/article/view/319158
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author M.S. Graf
A.V. Yakoniuk
D.V. Krant
I.I. Golovach
author_facet M.S. Graf
A.V. Yakoniuk
D.V. Krant
I.I. Golovach
author_sort M.S. Graf
collection DOAJ
description The paper analyses the capabilities of an information system for improving sleep quality based on the analysis of biometric data using Ambient Intelligence (AmI) technology. In the context of modern stressful realities, in particular the impact of the COVID-19 pandemic and social upheavals that significantly worsen the psychophysical state of people, improving sleep quality is of particular relevance. AmI systems allow you to automatically adjust environmental parameters such as temperature, lighting and humidity based on individual biometric parameters of the user, which helps to maintain natural circadian rhythms and improve overall comfort during sleep. The article discusses current research in the field of adaptive sleep management systems that take into account human biorhythms and physiological needs. Particular attention is paid to the capabilities of AmI systems to autonomously adjust environmental parameters according to data collected from sensors, such as body temperature, heart rate, and sleep phases. The study shows that these technologies not only improve sleep conditions, but also have a positive impact on the user's overall health and reduce stress levels. The system is able to function independently thanks to the use of machine learning algorithms, including LSTM for prediction, Kalman filter for data cleaning, Isolation Forest for anomaly detection, and K-means for clustering sleep patterns.
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publishDate 2024-12-01
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spelling doaj-art-81fa1d3eeb254dc9b932c1df52a591c82025-08-20T02:40:31ZengZhytomyr Polytechnic State UniversityТехнічна інженерія2706-58472707-96192024-12-01942113120doi.org/10.26642/ten-2024-2(94)-113-120Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysisM.S. Graf0https://orcid.org/0000-0003-4873-548XA.V. Yakoniuk1https://orcid.org/0009-0005-2461-8651D.V. Krant2https://orcid.org/0000-0003-4601-2827I.I. Golovach3https://orcid.org/0000-0001-9872-8144Zhytomyr Polytechnic State University, UkraineZhytomyr Polytechnic State University, UkraineState University "Kyiv Aviation Institute", UkraineState University "Kyiv Aviation Institute", UkraineThe paper analyses the capabilities of an information system for improving sleep quality based on the analysis of biometric data using Ambient Intelligence (AmI) technology. In the context of modern stressful realities, in particular the impact of the COVID-19 pandemic and social upheavals that significantly worsen the psychophysical state of people, improving sleep quality is of particular relevance. AmI systems allow you to automatically adjust environmental parameters such as temperature, lighting and humidity based on individual biometric parameters of the user, which helps to maintain natural circadian rhythms and improve overall comfort during sleep. The article discusses current research in the field of adaptive sleep management systems that take into account human biorhythms and physiological needs. Particular attention is paid to the capabilities of AmI systems to autonomously adjust environmental parameters according to data collected from sensors, such as body temperature, heart rate, and sleep phases. The study shows that these technologies not only improve sleep conditions, but also have a positive impact on the user's overall health and reduce stress levels. The system is able to function independently thanks to the use of machine learning algorithms, including LSTM for prediction, Kalman filter for data cleaning, Isolation Forest for anomaly detection, and K-means for clustering sleep patterns.http://ten.ztu.edu.ua/article/view/319158complex systemsystem analysisstructural synthesissituation centresystem approachcybernetic modelquality indicatorefficiency criterion
spellingShingle M.S. Graf
A.V. Yakoniuk
D.V. Krant
I.I. Golovach
Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis
Технічна інженерія
complex system
system analysis
structural synthesis
situation centre
system approach
cybernetic model
quality indicator
efficiency criterion
title Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis
title_full Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis
title_fullStr Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis
title_full_unstemmed Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis
title_short Analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis
title_sort analysis of the capabilities of an information system for improving sleep quality based on biometric data analysis
topic complex system
system analysis
structural synthesis
situation centre
system approach
cybernetic model
quality indicator
efficiency criterion
url http://ten.ztu.edu.ua/article/view/319158
work_keys_str_mv AT msgraf analysisofthecapabilitiesofaninformationsystemforimprovingsleepqualitybasedonbiometricdataanalysis
AT avyakoniuk analysisofthecapabilitiesofaninformationsystemforimprovingsleepqualitybasedonbiometricdataanalysis
AT dvkrant analysisofthecapabilitiesofaninformationsystemforimprovingsleepqualitybasedonbiometricdataanalysis
AT iigolovach analysisofthecapabilitiesofaninformationsystemforimprovingsleepqualitybasedonbiometricdataanalysis