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Enhancing accuracy of air quality sensors with machine learning to augment large-scale monitoring networks
by
Ravindra, Khaiwal
, Mor, Suman
, Kumar, Sahil
, Kumar, Abhishek
in
704/106/35
/ 704/158/858
/ 704/172/4081
/ Accuracy
/ Air monitoring
/ Air pollution
/ Air quality
/ Atmospheric Protection/Air Quality Control/Air Pollution
/ Atmospheric Sciences
/ Calibration
/ Climate Change/Climate Change Impacts
/ Climatology
/ Decision making
/ Decision trees
/ Earth and Environmental Science
/ Earth Sciences
/ Error correction
/ Humidity
/ Learning algorithms
/ Machine learning
/ Maintenance costs
/ Monitoring systems
/ Outdoor air quality
/ Particulate matter
/ Regression analysis
/ Relative humidity
/ Sensors
2024
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Enhancing accuracy of air quality sensors with machine learning to augment large-scale monitoring networks
by
Ravindra, Khaiwal
, Mor, Suman
, Kumar, Sahil
, Kumar, Abhishek
in
704/106/35
/ 704/158/858
/ 704/172/4081
/ Accuracy
/ Air monitoring
/ Air pollution
/ Air quality
/ Atmospheric Protection/Air Quality Control/Air Pollution
/ Atmospheric Sciences
/ Calibration
/ Climate Change/Climate Change Impacts
/ Climatology
/ Decision making
/ Decision trees
/ Earth and Environmental Science
/ Earth Sciences
/ Error correction
/ Humidity
/ Learning algorithms
/ Machine learning
/ Maintenance costs
/ Monitoring systems
/ Outdoor air quality
/ Particulate matter
/ Regression analysis
/ Relative humidity
/ Sensors
2024
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Do you wish to request the book?
Enhancing accuracy of air quality sensors with machine learning to augment large-scale monitoring networks
by
Ravindra, Khaiwal
, Mor, Suman
, Kumar, Sahil
, Kumar, Abhishek
in
704/106/35
/ 704/158/858
/ 704/172/4081
/ Accuracy
/ Air monitoring
/ Air pollution
/ Air quality
/ Atmospheric Protection/Air Quality Control/Air Pollution
/ Atmospheric Sciences
/ Calibration
/ Climate Change/Climate Change Impacts
/ Climatology
/ Decision making
/ Decision trees
/ Earth and Environmental Science
/ Earth Sciences
/ Error correction
/ Humidity
/ Learning algorithms
/ Machine learning
/ Maintenance costs
/ Monitoring systems
/ Outdoor air quality
/ Particulate matter
/ Regression analysis
/ Relative humidity
/ Sensors
2024
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Enhancing accuracy of air quality sensors with machine learning to augment large-scale monitoring networks
Journal Article
Enhancing accuracy of air quality sensors with machine learning to augment large-scale monitoring networks
2024
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Overview
Low-cost sensors have revolutionized air quality monitoring, however, precision is questioned compared to reference instruments. Hence, the performance of two widely used PM
2.5
Sensors, Purple Air (PA) and ATMOS, were evaluated over a 10-month period in the North Western-Indo Gangetic Plains (NW-IGP). In-field collocation with Beta Attenuation Monitor found low
R
2
values; 0.40 for ATMOS and 0.43 for PA. To calibrate and improve the accuracy of sensors, five Machine Learning (ML) models and an empirical relative humidity correction methodology were used separately for both sensors. Out of these, the Decision Tree outperformed others, and
R
2
values improved to 0.996 for ATMOS and 0.999 for PA. Root mean square error reduced from 34.6 µg/m
3
to 0.731 µg/m
3
for ATMOS and from 77.7 µg/m
3
to 0.61 µg/m
3
for PA, while using DT as a calibrating model. The study reveals the best-performing ML model for correcting PM
2.5
sensor data, enhancing the accuracy of air quality monitoring systems.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
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