Wireless Sensor Network Combined with Cloud Computing for Air Quality Monitoring

Low-cost air pollution wireless sensors are emerging in densely distributed networks that provide more spatial resolution than typical traditional systems for monitoring ambient air quality. This paper presents an air quality measurement system that is composed of a distributed sensor network connec...

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Main Authors: Patricia Arroyo, José Luis Herrero, José Ignacio Suárez, Jesús Lozano
Format: Article
Language:English
Published: MDPI AG 2019-02-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/19/3/691
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author Patricia Arroyo
José Luis Herrero
José Ignacio Suárez
Jesús Lozano
author_facet Patricia Arroyo
José Luis Herrero
José Ignacio Suárez
Jesús Lozano
author_sort Patricia Arroyo
collection DOAJ
description Low-cost air pollution wireless sensors are emerging in densely distributed networks that provide more spatial resolution than typical traditional systems for monitoring ambient air quality. This paper presents an air quality measurement system that is composed of a distributed sensor network connected to a cloud system forming a wireless sensor network (WSN). Sensor nodes are based on low-power ZigBee motes, and transmit field measurement data to the cloud through a gateway. An optimized cloud computing system has been implemented to store, monitor, process, and visualize the data received from the sensor network. Data processing and analysis is performed in the cloud by applying artificial intelligence techniques to optimize the detection of compounds and contaminants. This proposed system is a low-cost, low-size, and low-power consumption method that can greatly enhance the efficiency of air quality measurements, since a great number of nodes could be deployed and provide relevant information for air quality distribution in different areas. Finally, a laboratory case study demonstrates the applicability of the proposed system for the detection of some common volatile organic compounds, including: benzene, toluene, ethylbenzene, and xylene. Principal component analysis, a multilayer perceptron with backpropagation learning algorithm, and support vector machine have been applied for data processing. The results obtained suggest good performance in discriminating and quantifying the concentration of the volatile organic compounds.
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spelling doaj.art-e50ca59f2e3742a8a220cd7a7d3da0e52022-12-22T02:10:24ZengMDPI AGSensors1424-82202019-02-0119369110.3390/s19030691s19030691Wireless Sensor Network Combined with Cloud Computing for Air Quality MonitoringPatricia Arroyo0José Luis Herrero1José Ignacio Suárez2Jesús Lozano3Industrial Engineering School, University of Extremadura, 06071 Badajoz, SpainIndustrial Engineering School, University of Extremadura, 06071 Badajoz, SpainIndustrial Engineering School, University of Extremadura, 06071 Badajoz, SpainIndustrial Engineering School, University of Extremadura, 06071 Badajoz, SpainLow-cost air pollution wireless sensors are emerging in densely distributed networks that provide more spatial resolution than typical traditional systems for monitoring ambient air quality. This paper presents an air quality measurement system that is composed of a distributed sensor network connected to a cloud system forming a wireless sensor network (WSN). Sensor nodes are based on low-power ZigBee motes, and transmit field measurement data to the cloud through a gateway. An optimized cloud computing system has been implemented to store, monitor, process, and visualize the data received from the sensor network. Data processing and analysis is performed in the cloud by applying artificial intelligence techniques to optimize the detection of compounds and contaminants. This proposed system is a low-cost, low-size, and low-power consumption method that can greatly enhance the efficiency of air quality measurements, since a great number of nodes could be deployed and provide relevant information for air quality distribution in different areas. Finally, a laboratory case study demonstrates the applicability of the proposed system for the detection of some common volatile organic compounds, including: benzene, toluene, ethylbenzene, and xylene. Principal component analysis, a multilayer perceptron with backpropagation learning algorithm, and support vector machine have been applied for data processing. The results obtained suggest good performance in discriminating and quantifying the concentration of the volatile organic compounds.https://www.mdpi.com/1424-8220/19/3/691chemical sensorswireless sensor networkcloud computingair quality
spellingShingle Patricia Arroyo
José Luis Herrero
José Ignacio Suárez
Jesús Lozano
Wireless Sensor Network Combined with Cloud Computing for Air Quality Monitoring
Sensors
chemical sensors
wireless sensor network
cloud computing
air quality
title Wireless Sensor Network Combined with Cloud Computing for Air Quality Monitoring
title_full Wireless Sensor Network Combined with Cloud Computing for Air Quality Monitoring
title_fullStr Wireless Sensor Network Combined with Cloud Computing for Air Quality Monitoring
title_full_unstemmed Wireless Sensor Network Combined with Cloud Computing for Air Quality Monitoring
title_short Wireless Sensor Network Combined with Cloud Computing for Air Quality Monitoring
title_sort wireless sensor network combined with cloud computing for air quality monitoring
topic chemical sensors
wireless sensor network
cloud computing
air quality
url https://www.mdpi.com/1424-8220/19/3/691
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