A linear and an artificial neural network (ANN) statistical model have been developed and validated for shorttermforecasting of PM10 hourly concentrations in the city of Brescia (Italy). PM10 observed concentrations werebiased by less than 1% by each model, though the ANN outperformed the linear model, as exhibiting NRMSE of0.48 vs. 0.53, and r2 of 0.57 vs. 0.48. The self-organizing maps (SOMs) showed that both models predictionsexhibit the same clustering as the observations, with the ANN at worst capable of under-estimating clusteredPM10 peak concentrations by 5.8 ?g/m3.In Brescia, PM10 most critical conditions were detected in wintertime in the early morning or late afternoonunder unfavourable meteorological conditions, i.e. reduced advection enhancing PM10 stagnation, and lack ofprecipitations capable of reducing PM10 resuspension. Under these conditions, PM10 accumulation is driven bylocal anthropogenic emissions ascribing to two main sources: heating plants, responsible of emissions of primaryPM10 (mostly PM2.5, likely resulting from wood and biomass burning); and road traffic (basically diesel vehicles),mainly responsible of emissions of secondary PM10 precursors (mostly NOx), and secondly of primaryPM10 emissions.The SOM analysis clearly indicated that PM10 most critical conditions are driven by the secondary ratherprimary PM10 component.

Forecasting PM10 hourly concentrations in northern Italy: Insights on models performance and PM10 drivers through self-organizing maps

Gualtieri Giovanni
Primo
;
Carotenuto Federico;Toscano Piero;Gioli Beniamino
Ultimo
2018

Abstract

A linear and an artificial neural network (ANN) statistical model have been developed and validated for shorttermforecasting of PM10 hourly concentrations in the city of Brescia (Italy). PM10 observed concentrations werebiased by less than 1% by each model, though the ANN outperformed the linear model, as exhibiting NRMSE of0.48 vs. 0.53, and r2 of 0.57 vs. 0.48. The self-organizing maps (SOMs) showed that both models predictionsexhibit the same clustering as the observations, with the ANN at worst capable of under-estimating clusteredPM10 peak concentrations by 5.8 ?g/m3.In Brescia, PM10 most critical conditions were detected in wintertime in the early morning or late afternoonunder unfavourable meteorological conditions, i.e. reduced advection enhancing PM10 stagnation, and lack ofprecipitations capable of reducing PM10 resuspension. Under these conditions, PM10 accumulation is driven bylocal anthropogenic emissions ascribing to two main sources: heating plants, responsible of emissions of primaryPM10 (mostly PM2.5, likely resulting from wood and biomass burning); and road traffic (basically diesel vehicles),mainly responsible of emissions of secondary PM10 precursors (mostly NOx), and secondly of primaryPM10 emissions.The SOM analysis clearly indicated that PM10 most critical conditions are driven by the secondary ratherprimary PM10 component.
2018
Istituto di Biometeorologia - IBIMET - Sede Firenze
Artificial neural network (ANN)
Emissions
Forecasts
PM hourly concentrations 10
Self-organizing maps (SOMs)
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/375025
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