Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System

Conventional air quality monitoring systems, such as gas analysers, are commonly used in many developed and developing countries to monitor air quality. However, these techniques have high costs associated with both installation and maintenance. One possible solution to complement these techniques i...

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Main Authors: Alhasa, Kemal, Mohd Nadzir, Mohd, Olalekan, Popoola, Latif, Mohd, Yusup, Yusri, Iqbal Faruque, Mohammad, Ahamad, Fatimah, Abd Hamid, Haris, Aiyub, Kadaruddin, Md Ali, Sawal, Khan, Md, Samah, Azizan Abu, Yusuff, Imran, Othman, Murnira, Tengku Hassim, Tengku, Ezani, Nor
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Published: MDPI 2018
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Online Access:http://eprints.um.edu.my/22569/
https://doi.org/10.3390/s18124380
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spelling my.um.eprints.225692019-12-18T07:53:44Z http://eprints.um.edu.my/22569/ Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System Alhasa, Kemal Mohd Nadzir, Mohd Olalekan, Popoola Latif, Mohd Yusup, Yusri Iqbal Faruque, Mohammad Ahamad, Fatimah Abd Hamid, Haris Aiyub, Kadaruddin Md Ali, Sawal Khan, Md Samah, Azizan Abu Yusuff, Imran Othman, Murnira Tengku Hassim, Tengku Ezani, Nor Q Science (General) QC Physics QD Chemistry T Technology (General) TK Electrical engineering. Electronics Nuclear engineering Conventional air quality monitoring systems, such as gas analysers, are commonly used in many developed and developing countries to monitor air quality. However, these techniques have high costs associated with both installation and maintenance. One possible solution to complement these techniques is the application of low-cost air quality sensors (LAQSs), which have the potential to give higher spatial and temporal data of gas pollutants with high precision and accuracy. In this paper, we present DiracSense, a custom-made LAQS that monitors the gas pollutants ozone (O3), nitrogen dioxide (NO2), and carbon monoxide (CO). The aim of this study is to investigate its performance based on laboratory calibration and field experiments. Several model calibrations were developed to improve the accuracy and performance of the LAQS. Laboratory calibrations were carried out to determine the zero offset and sensitivities of each sensor. The results showed that the sensor performed with a highly linear correlation with the reference instrument with a response-time rangefrom 0.5 to 1.7 min. The performance of several calibration models including a calibrated simple equation and supervised learning algorithms (adaptive neuro-fuzzy inference system or ANFIS and the multilayer feed-forward perceptron or MLP) were compared. The field calibration focused on O3 measurements due to the lack of a reference instrument for CO and NO2. Combinations of inputs were evaluated during the development of the supervised learning algorithm. The validation results demonstrated that the ANFIS model with four inputs (WE OX, AE OX, T, and NO2) had the lowest error in terms of statistical performance and the highest correlation coefficients with respect to the reference instrument (0.8 < r < 0.95). These results suggest that the ANFIS model is promising as a calibration tool since it has the capability to improve the accuracy and performance of the low-cost electrochemical sensor. MDPI 2018 Article PeerReviewed Alhasa, Kemal and Mohd Nadzir, Mohd and Olalekan, Popoola and Latif, Mohd and Yusup, Yusri and Iqbal Faruque, Mohammad and Ahamad, Fatimah and Abd Hamid, Haris and Aiyub, Kadaruddin and Md Ali, Sawal and Khan, Md and Samah, Azizan Abu and Yusuff, Imran and Othman, Murnira and Tengku Hassim, Tengku and Ezani, Nor (2018) Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System. Sensors, 18 (12). p. 4380. ISSN 1424-8220 https://doi.org/10.3390/s18124380 doi:10.3390/s18124380
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic Q Science (General)
QC Physics
QD Chemistry
T Technology (General)
TK Electrical engineering. Electronics Nuclear engineering
spellingShingle Q Science (General)
QC Physics
QD Chemistry
T Technology (General)
TK Electrical engineering. Electronics Nuclear engineering
Alhasa, Kemal
Mohd Nadzir, Mohd
Olalekan, Popoola
Latif, Mohd
Yusup, Yusri
Iqbal Faruque, Mohammad
Ahamad, Fatimah
Abd Hamid, Haris
Aiyub, Kadaruddin
Md Ali, Sawal
Khan, Md
Samah, Azizan Abu
Yusuff, Imran
Othman, Murnira
Tengku Hassim, Tengku
Ezani, Nor
Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System
description Conventional air quality monitoring systems, such as gas analysers, are commonly used in many developed and developing countries to monitor air quality. However, these techniques have high costs associated with both installation and maintenance. One possible solution to complement these techniques is the application of low-cost air quality sensors (LAQSs), which have the potential to give higher spatial and temporal data of gas pollutants with high precision and accuracy. In this paper, we present DiracSense, a custom-made LAQS that monitors the gas pollutants ozone (O3), nitrogen dioxide (NO2), and carbon monoxide (CO). The aim of this study is to investigate its performance based on laboratory calibration and field experiments. Several model calibrations were developed to improve the accuracy and performance of the LAQS. Laboratory calibrations were carried out to determine the zero offset and sensitivities of each sensor. The results showed that the sensor performed with a highly linear correlation with the reference instrument with a response-time rangefrom 0.5 to 1.7 min. The performance of several calibration models including a calibrated simple equation and supervised learning algorithms (adaptive neuro-fuzzy inference system or ANFIS and the multilayer feed-forward perceptron or MLP) were compared. The field calibration focused on O3 measurements due to the lack of a reference instrument for CO and NO2. Combinations of inputs were evaluated during the development of the supervised learning algorithm. The validation results demonstrated that the ANFIS model with four inputs (WE OX, AE OX, T, and NO2) had the lowest error in terms of statistical performance and the highest correlation coefficients with respect to the reference instrument (0.8 < r < 0.95). These results suggest that the ANFIS model is promising as a calibration tool since it has the capability to improve the accuracy and performance of the low-cost electrochemical sensor.
format Article
author Alhasa, Kemal
Mohd Nadzir, Mohd
Olalekan, Popoola
Latif, Mohd
Yusup, Yusri
Iqbal Faruque, Mohammad
Ahamad, Fatimah
Abd Hamid, Haris
Aiyub, Kadaruddin
Md Ali, Sawal
Khan, Md
Samah, Azizan Abu
Yusuff, Imran
Othman, Murnira
Tengku Hassim, Tengku
Ezani, Nor
author_facet Alhasa, Kemal
Mohd Nadzir, Mohd
Olalekan, Popoola
Latif, Mohd
Yusup, Yusri
Iqbal Faruque, Mohammad
Ahamad, Fatimah
Abd Hamid, Haris
Aiyub, Kadaruddin
Md Ali, Sawal
Khan, Md
Samah, Azizan Abu
Yusuff, Imran
Othman, Murnira
Tengku Hassim, Tengku
Ezani, Nor
author_sort Alhasa, Kemal
title Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System
title_short Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System
title_full Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System
title_fullStr Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System
title_full_unstemmed Calibration Model of a Low-Cost Air Quality Sensor Using an Adaptive Neuro-Fuzzy Inference System
title_sort calibration model of a low-cost air quality sensor using an adaptive neuro-fuzzy inference system
publisher MDPI
publishDate 2018
url http://eprints.um.edu.my/22569/
https://doi.org/10.3390/s18124380
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score 13.214268