Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic Environments

To prevent and mitigate the environmental impact of the transportation and extraction of oil and its derivatives, the conception, design, development, and implementation of an embedded system for wireless sensor networks (WSN) is presented is this paper. The proposed embedded system is a static sens...

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Main Authors: Yan Ferreira Da Silva, Raimundo Carlos Silverio Freire, Joao Viana Da Fonseca Neto
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10287350/
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author Yan Ferreira Da Silva
Raimundo Carlos Silverio Freire
Joao Viana Da Fonseca Neto
author_facet Yan Ferreira Da Silva
Raimundo Carlos Silverio Freire
Joao Viana Da Fonseca Neto
author_sort Yan Ferreira Da Silva
collection DOAJ
description To prevent and mitigate the environmental impact of the transportation and extraction of oil and its derivatives, the conception, design, development, and implementation of an embedded system for wireless sensor networks (WSN) is presented is this paper. The proposed embedded system is a static sensor node that detects and classifies pollutants in aquatic environments using machine learning and IoT (Internet of Things) approaches. The article presents the development of the sensor node, which consists of three phases. In the first phase, the conception and modeling of the embedded system are presented, including mathematical modeling of the node, the node’s power supply system, WSN communication structure, pollutant detection, and classification via machine learning and IoT. The implementation of the static sensor node is presented in the second phase of the project, which includes functional modeling of the measurement, the architecture of the embedded system, and its physical structure. In the last phase, the detection and classification tests of the proposed sensor node are presented, including implementing five sensors. They are evaluated indoors by analyzing seawater samples with gasoline and diesel, pH and turbidity measurements of seawater and freshwater with gasoline, and experiments through direct and indirect measurements of seawater and diesel. Since the initial results of the indoor experiments are satisfactory, the proposed sensor node is regarding as a promising device for detecting and classifying pollutants in real-world aquatic environments.
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spelling doaj.art-872a4e73e71a445883f37383b9ff25a72023-10-26T23:00:59ZengIEEEIEEE Access2169-35362023-01-011111704011705210.1109/ACCESS.2023.332576010287350Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic EnvironmentsYan Ferreira Da Silva0https://orcid.org/0000-0002-2702-9343Raimundo Carlos Silverio Freire1https://orcid.org/0000-0002-5395-7143Joao Viana Da Fonseca Neto2https://orcid.org/0000-0003-4606-7510Coordination of Electrical Engineering, Universidade Federal do Maranhão, São Luís, BrazilDepartment of Electrical Engineering, Federal University of Campina Grande, Campina Grande, BrazilDepartment of Electrical Engineering (DEE), Universidade Federal do Maranhão, São Luís, BrazilTo prevent and mitigate the environmental impact of the transportation and extraction of oil and its derivatives, the conception, design, development, and implementation of an embedded system for wireless sensor networks (WSN) is presented is this paper. The proposed embedded system is a static sensor node that detects and classifies pollutants in aquatic environments using machine learning and IoT (Internet of Things) approaches. The article presents the development of the sensor node, which consists of three phases. In the first phase, the conception and modeling of the embedded system are presented, including mathematical modeling of the node, the node’s power supply system, WSN communication structure, pollutant detection, and classification via machine learning and IoT. The implementation of the static sensor node is presented in the second phase of the project, which includes functional modeling of the measurement, the architecture of the embedded system, and its physical structure. In the last phase, the detection and classification tests of the proposed sensor node are presented, including implementing five sensors. They are evaluated indoors by analyzing seawater samples with gasoline and diesel, pH and turbidity measurements of seawater and freshwater with gasoline, and experiments through direct and indirect measurements of seawater and diesel. Since the initial results of the indoor experiments are satisfactory, the proposed sensor node is regarding as a promising device for detecting and classifying pollutants in real-world aquatic environments.https://ieeexplore.ieee.org/document/10287350/Embedded systemsIoTwireless sensor networkhigh performance computingmachine learning detectiontracking
spellingShingle Yan Ferreira Da Silva
Raimundo Carlos Silverio Freire
Joao Viana Da Fonseca Neto
Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic Environments
IEEE Access
Embedded systems
IoT
wireless sensor network
high performance computing
machine learning detection
tracking
title Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic Environments
title_full Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic Environments
title_fullStr Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic Environments
title_full_unstemmed Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic Environments
title_short Conception and Design of WSN Sensor Nodes Based on Machine Learning, Embedded Systems and IoT Approaches for Pollutant Detection in Aquatic Environments
title_sort conception and design of wsn sensor nodes based on machine learning embedded systems and iot approaches for pollutant detection in aquatic environments
topic Embedded systems
IoT
wireless sensor network
high performance computing
machine learning detection
tracking
url https://ieeexplore.ieee.org/document/10287350/
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