[HTML][HTML] Machine learning-based prediction of air quality

YC Liang, Y Maimury, AHL Chen, JRC Juarez - applied sciences, 2020 - mdpi.com
YC Liang, Y Maimury, AHL Chen, JRC Juarez
applied sciences, 2020mdpi.com
Air, an essential natural resource, has been compromised in terms of quality by economic
activities. Considerable research has been devoted to predicting instances of poor air
quality, but most studies are limited by insufficient longitudinal data, making it difficult to
account for seasonal and other factors. Several prediction models have been developed
using an 11-year dataset collected by Taiwan's Environmental Protection Administration
(EPA). Machine learning methods, including adaptive boosting (AdaBoost), artificial neural …
Air, an essential natural resource, has been compromised in terms of quality by economic activities. Considerable research has been devoted to predicting instances of poor air quality, but most studies are limited by insufficient longitudinal data, making it difficult to account for seasonal and other factors. Several prediction models have been developed using an 11-year dataset collected by Taiwan’s Environmental Protection Administration (EPA). Machine learning methods, including adaptive boosting (AdaBoost), artificial neural network (ANN), random forest, stacking ensemble, and support vector machine (SVM), produce promising results for air quality index (AQI) level predictions. A series of experiments, using datasets for three different regions to obtain the best prediction performance from the stacking ensemble, AdaBoost, and random forest, found the stacking ensemble delivers consistently superior performance for R2 and RMSE, while AdaBoost provides best results for MAE.
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