Data fusion systems are developed to fill the gap between monitoring networks and CTMs. However, they often do not account for temporal dynamics, leading to potential inaccurate air quality assessment and forecasting. We propose a statistical data assimilation strategy for fusing the CTM output with monitoring data in order to improve air quality assessment and forecasting in the Emilia-Romagna region, Italy. We employ dynamic linear modeling to accommodate dependence across time and obtain air pollution assessment and forecasting for the current and next two days. Finally, air pollution forecast maps are provided at high spatial resolution. We apply our strategy to particulate matter (PM10) concentrations during winter 2013
Air pollution continues to pose significant threats in many regions of the world, including Europe w...
Assimilation of observational data from ground stations and satellites has been identified as a tech...
This report presents a review of data assimilation methods applicable to air quality. In the introdu...
Data fusion systems are developed to fill the gap between monitoring networks and CTMs. However, the...
Deterministic air quality forecasting models play a key role for regional and local authorities, bei...
The CAMS air quality multi-model forecasts have been assessed and calibrated for PM10, PM2.5, O3, NO...
Atmospheric air pollution is one of the main environmental problems that our society is facing. More...
International audienceData assimilation is successfully used for meteorology since many years and is...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
This paper introduces a flexible space-time data fusion model based on latent variables and varying ...
Recently, the interest of many environmental agencies is on short-term air pollution predictions ref...
Particulate air pollution has aggravated cardiovascular and lung diseases. Accurate and constant air...
Environmental pollution in urban areas may be mainly attributed to the rapid industrialization and i...
Air pollution continues to pose significant threats in many regions of the world, including Europe w...
Assimilation of observational data from ground stations and satellites has been identified as a tech...
This report presents a review of data assimilation methods applicable to air quality. In the introdu...
Data fusion systems are developed to fill the gap between monitoring networks and CTMs. However, the...
Deterministic air quality forecasting models play a key role for regional and local authorities, bei...
The CAMS air quality multi-model forecasts have been assessed and calibrated for PM10, PM2.5, O3, NO...
Atmospheric air pollution is one of the main environmental problems that our society is facing. More...
International audienceData assimilation is successfully used for meteorology since many years and is...
Numerical models of chemical transport have been used to simulate the complex processes involved in ...
This paper introduces a flexible space-time data fusion model based on latent variables and varying ...
Recently, the interest of many environmental agencies is on short-term air pollution predictions ref...
Particulate air pollution has aggravated cardiovascular and lung diseases. Accurate and constant air...
Environmental pollution in urban areas may be mainly attributed to the rapid industrialization and i...
Air pollution continues to pose significant threats in many regions of the world, including Europe w...
Assimilation of observational data from ground stations and satellites has been identified as a tech...
This report presents a review of data assimilation methods applicable to air quality. In the introdu...