A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote Areas

The emissions of pollutants and radioactive gases are the main causes of several environmental disasters that may cause premature deaths. The significant impact of these gases on public health is a major concern, especially in remote and rural regions. In these areas, access to security and health s...

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Main Authors: Edgar F. Ladeira, Bruno M. C. Silva
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10855430/
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author Edgar F. Ladeira
Bruno M. C. Silva
author_facet Edgar F. Ladeira
Bruno M. C. Silva
author_sort Edgar F. Ladeira
collection DOAJ
description The emissions of pollutants and radioactive gases are the main causes of several environmental disasters that may cause premature deaths. The significant impact of these gases on public health is a major concern, especially in remote and rural regions. In these areas, access to security and health services is scarce, and real-time monitoring of citizens and the conditions in which they live is very difficult. Without means to monitor or predict, healthcare and government stakeholders typically act too late when indoor incidents occur. Hence, this paper presents a digital decision support system that uses Machine Learning (ML) for monitoring and prediction of incidents related with indoor hazardous gases. This system is implemented on top of an Internet of Things (IoT) ecosystem named RuraLTHINGS. This project, developed by the University of Beira Interior, Portugal, monitors the quality of air in remote and rural regions in real-time. The platform aims to predict and notify residents and other stakeholders about environmental conditions and prevent the risk of exposure to dangerous gases. The system uses ML techniques to analyze the collected data and provide future predictions using unidirectional Long Short-Term Memory (LSTM) layers overlaid on bidirectional LSTM layers, meaning layers stacked together, which was the model architecture that delivered the best results in this context. This paper presents the validation of the digital platform and the ML model using a real test bed environment. The model successfully predicted future data trends related to indoor monitoring of hazardous gases.
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spelling doaj-art-3acb443574ff4529acf7320c842a0ddf2025-01-31T23:04:40ZengIEEEIEEE Access2169-35362025-01-0113202972031510.1109/ACCESS.2025.353515810855430A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote AreasEdgar F. Ladeira0https://orcid.org/0009-0000-9743-0127Bruno M. C. Silva1https://orcid.org/0000-0002-5939-8370Department of Informatics, University of Beira Interior, Covilhã, PortugalDepartment of Informatics, University of Beira Interior, Covilhã, PortugalThe emissions of pollutants and radioactive gases are the main causes of several environmental disasters that may cause premature deaths. The significant impact of these gases on public health is a major concern, especially in remote and rural regions. In these areas, access to security and health services is scarce, and real-time monitoring of citizens and the conditions in which they live is very difficult. Without means to monitor or predict, healthcare and government stakeholders typically act too late when indoor incidents occur. Hence, this paper presents a digital decision support system that uses Machine Learning (ML) for monitoring and prediction of incidents related with indoor hazardous gases. This system is implemented on top of an Internet of Things (IoT) ecosystem named RuraLTHINGS. This project, developed by the University of Beira Interior, Portugal, monitors the quality of air in remote and rural regions in real-time. The platform aims to predict and notify residents and other stakeholders about environmental conditions and prevent the risk of exposure to dangerous gases. The system uses ML techniques to analyze the collected data and provide future predictions using unidirectional Long Short-Term Memory (LSTM) layers overlaid on bidirectional LSTM layers, meaning layers stacked together, which was the model architecture that delivered the best results in this context. This paper presents the validation of the digital platform and the ML model using a real test bed environment. The model successfully predicted future data trends related to indoor monitoring of hazardous gases.https://ieeexplore.ieee.org/document/10855430/Cloud computingdecision support system (DSS)digital platformenvironmental gasesindoor monitoringInternet of Things (IoT)
spellingShingle Edgar F. Ladeira
Bruno M. C. Silva
A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote Areas
IEEE Access
Cloud computing
decision support system (DSS)
digital platform
environmental gases
indoor monitoring
Internet of Things (IoT)
title A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote Areas
title_full A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote Areas
title_fullStr A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote Areas
title_full_unstemmed A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote Areas
title_short A Machine Learning-Based Platform for Monitoring and Prediction of Hazardous Gases in Rural and Remote Areas
title_sort machine learning based platform for monitoring and prediction of hazardous gases in rural and remote areas
topic Cloud computing
decision support system (DSS)
digital platform
environmental gases
indoor monitoring
Internet of Things (IoT)
url https://ieeexplore.ieee.org/document/10855430/
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