Estimation of daily PM10 and PM2.5 concentrations in Italy, 2013-2015, using a spatiotemporal land-use random-forest model.
Articolo
Data di Pubblicazione:
2019
Abstract:
Particulate matter (PM) air pollution is one of the major causes of death worldwide, with demonstrated adverse
effects from both short-term and long-term exposure. Most of the epidemiological studies have been conducted
in cities because of the lack of reliable spatiotemporal estimates of particles exposure in nonurban settings. The
objective of this study is to estimate daily PM10 (PM < 10 ?m), fine (PM < 2.5 ?m, PM2.5) and coarse particles
(PM between 2.5 and 10 ?m, PM2.5-10) at 1-km2 grid for 2013-2015 using a machine learning approach, the
Random Forest (RF). Separate RF models were defined to: predict PM2.5 and PM2.5-10 concentrations in monitors
where only PM10 data were available (stage 1); impute missing satellite Aerosol Optical Depth (AOD) data using
estimates from atmospheric ensemble models (stage 2); establish a relationship between measured PM and satellite,
land use and meteorological parameters (stage 3); predict stage 3 model over each 1-km2 grid cell of Italy
(stage 4); and improve stage 3 predictions by using small-scale predictors computed at the monitor locations or
within a small buffer (stage 5). Our models were able to capture most of PM variability, with mean crossvalidation
(CV) R2 of 0.75 and 0.80 (stage 3) and 0.84 and 0.86 (stage 5) for PM10 and PM2.5, respectively. Model
fitting was less optimal for PM2.5-10, in summer months and in southern Italy. Finally, predictions were equally
good in capturing annual and daily PM variability, therefore they can be used as reliable exposure estimates for
investigating long-term and short-term health effects.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
Aerosol optical depth; Exposure assessment; Machine learning; Particulate matter; Random forest; Satellite
Elenco autori:
Viegi, Giovanni
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