The PM10 concentrations are often measured by different instruments situated in different sites. As some of these instruments are more precise than others we utilize the data from the former ones to correct the less precise data, obtaining an homogeneus dataset. To do this we propose a Geostatistical Dynamical Calibration model (GDC) based on the state - space approach of the spatio temporal modelling. This approach is a geostatistical extension of the DDC model (?). We assume that the observed data are random fields composed by a linear function of the “true” levels and error components, where the “true” concentrations are unobservable processes and represent the state equations of the model.Considering the TEOM and LVG data of the Piemont...
Particulate matter (PM10 and PM2.5) is a criteria air pollutant providing a useful indicator to asse...
Epidemiological studies of the health effects of air pollution require estimation of individual expo...
The satellites from NASA's Earth Science Project Division, like AURA, produce data for the concentra...
In this paper our objective is to propose a flexible model able to integrate different environmental...
In this paper, we discuss the dynamic coregionalization model and its capability for model selection...
In this work we propose the multivariate extension of a spatio-temporal model known in the literatur...
Particulate matter (PM) air quality in Europe has improved substantially over the past decades, but ...
Multivariate spatio-temporal statistical models are deserving for increasing attention for environme...
AURA, produce data for the concentration of various airborne pollutants. Calibrat-ing satellite data...
Abstract: PM10 monitoring networks are equipped with heterogeneous samplers. Some of these samplers ...
In this paper, hierarchical models are proposed as a general approach for spatio-temporal problems, ...
Particulate matter (PM) is one of the most critical air pollutants because of its effects on the hum...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
PM10 monitoring networks are equipped with heterogeneous samplers. Some of these samplers are known ...
Chemistry-transport models for air quality forecasting are affected by the uncertainty on the input ...
Particulate matter (PM10 and PM2.5) is a criteria air pollutant providing a useful indicator to asse...
Epidemiological studies of the health effects of air pollution require estimation of individual expo...
The satellites from NASA's Earth Science Project Division, like AURA, produce data for the concentra...
In this paper our objective is to propose a flexible model able to integrate different environmental...
In this paper, we discuss the dynamic coregionalization model and its capability for model selection...
In this work we propose the multivariate extension of a spatio-temporal model known in the literatur...
Particulate matter (PM) air quality in Europe has improved substantially over the past decades, but ...
Multivariate spatio-temporal statistical models are deserving for increasing attention for environme...
AURA, produce data for the concentration of various airborne pollutants. Calibrat-ing satellite data...
Abstract: PM10 monitoring networks are equipped with heterogeneous samplers. Some of these samplers ...
In this paper, hierarchical models are proposed as a general approach for spatio-temporal problems, ...
Particulate matter (PM) is one of the most critical air pollutants because of its effects on the hum...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
PM10 monitoring networks are equipped with heterogeneous samplers. Some of these samplers are known ...
Chemistry-transport models for air quality forecasting are affected by the uncertainty on the input ...
Particulate matter (PM10 and PM2.5) is a criteria air pollutant providing a useful indicator to asse...
Epidemiological studies of the health effects of air pollution require estimation of individual expo...
The satellites from NASA's Earth Science Project Division, like AURA, produce data for the concentra...