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Modelling and Forecasting Temporal PM2.5 Concentration Using Ensemble Machine Learning Methods

Ejohwomu, Obuks Augustine; Shamsideen Oshodi, Olakekan; Oladokun, Majeed; Bukoye, Oyegoke Teslim; Emekwuru, Nwabueze; Sotunbo, Adegboyega; Adenuga, Olumide

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Authors

Obuks Augustine Ejohwomu

Olakekan Shamsideen Oshodi

Majeed Oladokun

Oyegoke Teslim Bukoye

Nwabueze Emekwuru

Adegboyega Sotunbo

Olumide Adenuga



Abstract

Exposure of humans to high concentrations of PM2.5 has adverse effects on their health. Researchers estimate that exposure to particulate matter from fossil fuel emissions accounted for 18% of deaths in 2018—a challenge policymakers argue is being exacerbated by the increase in the number of extreme weather events and rapid urbanization as they tinker with strategies for reducing air pollutants. Drawing on a number of ensemble machine learning methods that have emerged as a result of advancements in data science, this study examines the effectiveness of using ensemble models for forecasting the concentrations of air pollutants, using PM2.5 as a representative case. A comprehensive evaluation of the ensemble methods was carried out by comparing their predictive performance with that of other standalone algorithms. The findings suggest that hybrid models provide useful tools for PM2.5 concentration forecasting. The developed models show that machine learning models are efficient in predicting air particulate concentrations, and can be used for air pollution forecasting. This study also provides insights into how climatic factors influence the concentrations of pollutants found in the air.

Citation

Ejohwomu, O. A., Shamsideen Oshodi, O., Oladokun, M., Bukoye, O. T., Emekwuru, N., Sotunbo, A., & Adenuga, O. (in press). Modelling and Forecasting Temporal PM2.5 Concentration Using Ensemble Machine Learning Methods. Buildings, 12(1), 46. https://doi.org/10.3390/buildings12010046

Journal Article Type Article
Acceptance Date Dec 21, 2021
Online Publication Date Jan 4, 2022
Deposit Date Oct 30, 2024
Publicly Available Date Oct 30, 2024
Journal Buildings
Electronic ISSN 2075-5309
Publisher MDPI
Peer Reviewed Peer Reviewed
Volume 12
Issue 1
Pages 46
DOI https://doi.org/10.3390/buildings12010046

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