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Machine learning for air quality prediction using meteorological and traffic related features

TitreMachine learning for air quality prediction using meteorological and traffic related features
Publication TypeJournal Article
Year of Publication2020
AuthorsGryech, I, Ghogho, M, Elhammouti, H, Sbihi, N, Kobbane, A
JournalJournal of Ambient Intelligence and Smart Environments
Volume12
Pagination379-391
Mots-clésAccurate prediction, Air quality, Air quality monitoring, Air quality prediction, Data-driven model, Decision trees, Forecasting, Machine learning, Non-linear model, Nonlinear systems, Pollution sensors, Predictive analytics, Spatial resolution, Support vector regression, Support vector regression (SVR)
Abstract

The presence of pollutants in the air has a direct impact on our health and causes detrimental changes to our environment. Air quality monitoring is therefore of paramount importance. The high cost of the acquisition and maintenance of accurate air quality stations implies that only a small number of these stations can be deployed in a country. To improve the spatial resolution of the air monitoring process, an interesting idea is to develop data-driven models to predict air quality based on readily available data. In this paper, we investigate the correlations between air pollutants concentrations and meteorological and road traffic data. Using machine learning, regression models are developed to predict pollutants concentration. Both linear and non-linear models are investigated in this paper. It is shown that non-linear models, namely Random Forest (RF) and Support Vector Regression (SVR), better describe the impact of traffic flows and meteorology on the concentrations of pollutants in the atmosphere. It is also shown that more accurate prediction models can be obtained when including some pollutants' concentration as predictors. This may be used to infer the concentrations of some pollutants using those of other pollutants, thereby reducing the number of air pollution sensors. © 2020 - IOS Press and the authors. All rights reserved.

URLhttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85093821240&doi=10.3233%2fAIS-200572&partnerID=40&md5=f8b7d726f054f01a2be432560d359fc5
DOI10.3233/AIS-200572
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