Data di Pubblicazione:
2024
Abstract:
This study presents a comparative analysis of three predictive models with an increasing degree of flexibility: hidden dynamic geostatistical models (HDGM), generalised additive mixed models (GAMM), and the random forest spatiotemporal kriging models (RFSTK). These models are evaluated for their effectiveness in predicting PM2.5 concentrations in Lombardy (North Italy) from 2016 to 2020. Despite differing methodologies, all models demonstrate proficient capture of spatiotemporal patterns within air pollution data with similar out-of-sample performance. Furthermore, the study delves into station-specific analyses, revealing variable model performance contingent on localised conditions. Model interpretation, facilitated by parametric coefficient analysis and partial dependence plots, unveils consistent associations between predictor variables and PM2.5 concentrations. Despite nuanced variations in modelling spatiotemporal correlations, all models effectively accounted for the underlying ...
Tipologia CRIS:
03A-Articolo su Rivista
Keywords:
Air pollution; Generalised additive mixed model; Geostatistics; Hidden dynamic geostatistical model; Machine learning; Random forest spatiotemporal kriging; Spatiotemporal process;
Elenco autori:
Philipp Otto; Alessandro Fusta Moro; Jacopo Rodeschini; Qendrim Shaboviq; Rosaria Ignaccolo; Natalia Golini; Michela Cameletti; Paolo Maranzano; Francesco Finazzi; Alessandro Fassò
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