| Literature DB >> 35932898 |
Oluwaseyi Olalekan Arowosegbe1, Martin Röösli1, Nino Künzli1, Apolline Saucy1, Temitope C Adebayo-Ojo1, Joel Schwartz2, Moses Kebalepile3, Mohamed Fareed Jeebhay4, Mohamed Aqiel Dalvie4, Kees de Hoogh5.
Abstract
There is a paucity of air quality data in sub-Saharan African countries to inform science driven air quality management and epidemiological studies. We investigated the use of available remote-sensing aerosol optical depth (AOD) data to develop spatially and temporally resolved models to predict daily particulate matter (PM10) concentrations across four provinces of South Africa (Gauteng, Mpumalanga, KwaZulu-Natal and Western Cape) for the year 2016 in a two-staged approach. In stage 1, a Random Forest (RF) model was used to impute Multiangle Implementation of Atmospheric Correction AOD data for days where it was missing. In stage 2, the machine learner algorithms RF, Gradient Boosting and Support Vector Regression were used to model the relationship between ground-monitored PM10 data, AOD and other spatial and temporal predictors. These were subsequently combined in an ensemble model to predict daily PM10 concentrations at 1 km × 1 km spatial resolution across the four provinces. An out-of-bag R2 of 0.96 was achieved for the first stage model. The stage 2 cross-validated (CV) ensemble model captured 0.84 variability in ground-monitored PM10 with a spatial CV R2 of 0.48 and temporal CV R2 of 0.80. The stage 2 model indicated an optimal performance of the daily predictions when aggregated to monthly and annual means. Our results suggest that a combination of remote sensing data, chemical transport model estimates and other spatiotemporal predictors has the potential to improve air quality exposure data in South Africa's major industrial provinces. In particular, the use of a combined ensemble approach was found to be useful for this area with limited availability of air pollution ground monitoring data.Entities:
Keywords: Ensemble averaging; Machine learning; Particulate matter; Satellite observations
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Year: 2022 PMID: 35932898 DOI: 10.1016/j.envpol.2022.119883
Source DB: PubMed Journal: Environ Pollut ISSN: 0269-7491 Impact factor: 9.988