Summary. Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other media outlets. Studies indicate that even short-term exposure to high levels of an air pollutant called atmospheric particulate matter can lead to long-term health effects. Data are typically observed at fixed monitoring stations throughout a study region of interest at different time points. Statistical spatiotemporal models are appropriate for modelling these data. We consider short-term forecasting of these spatiotemporal processes by using a Bayes-ian kriged Kalman filtering model. The spatial prediction surface of the model is built by using the well-known method of kriging for optimum spatial prediction and the temporal effect...
Recent literature on long-range spatial exposure assessment focused on Kriging or atmospheric pollut...
Real-time prediction of air pollution means forecast of future ground-level concentrations on the ba...
The development of models that provide accurate spatio-temporal predictions of ambient air pollution...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
Summary: Studies indicate that even short-term exposure to high concentrations of fine atmospheric p...
Studies indicate that even short-term exposure to high concentrations of fine atmospheric particulat...
Studies indicate that even short-term exposure to high concentrations of fine atmospheric particulat...
Spatial prediction of exposure to air pollution in a large city such as Santiago de Chile is a chall...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
This paper describes a Bayesian hierarchical approach to predict short-term concentrations of partic...
International audienceThe national PREV'AIR system (www2.prevair.org) delivers daily analyses and fo...
Abstract − This work proposes the development of an air pollution model based on a joined applicatio...
Estimation of long-term exposure to air pollution levels over a large spatial domain, such as the ma...
Recent literature on long-range spatial exposure assessment focused on Kriging or atmospheric pollut...
Real-time prediction of air pollution means forecast of future ground-level concentrations on the ba...
The development of models that provide accurate spatio-temporal predictions of ambient air pollution...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
Summary: Studies indicate that even short-term exposure to high concentrations of fine atmospheric p...
Studies indicate that even short-term exposure to high concentrations of fine atmospheric particulat...
Studies indicate that even short-term exposure to high concentrations of fine atmospheric particulat...
Spatial prediction of exposure to air pollution in a large city such as Santiago de Chile is a chall...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
This paper describes a Bayesian hierarchical approach to predict short-term concentrations of partic...
International audienceThe national PREV'AIR system (www2.prevair.org) delivers daily analyses and fo...
Abstract − This work proposes the development of an air pollution model based on a joined applicatio...
Estimation of long-term exposure to air pollution levels over a large spatial domain, such as the ma...
Recent literature on long-range spatial exposure assessment focused on Kriging or atmospheric pollut...
Real-time prediction of air pollution means forecast of future ground-level concentrations on the ba...
The development of models that provide accurate spatio-temporal predictions of ambient air pollution...