This thesis addresses spatial interpolation and temporal prediction using air pollution data by several space-time modelling approaches. Firstly, we implement the dynamic linear modelling (DLM) approach in spatial interpolation and find various potential problems with that approach. We develop software to implement our approach. Secondly, we implement a Bayesian spatial prediction (BSP) approach to model spatio-temporal ground-level ozone fields and compare the accuracy of that approach with that of the DLM. Thirdly, we develop a Bayesian version empirical orthogonal function (EOF) method to incorporate the uncertainties due to temporally varying spatial process, and the spatial variations at broad- and fine- scale. Finally, we extend the B...
We would like to thank Professor Katie St. Clair, our advisor for this project, for her guidance and...
Environmental computer models are deterministic models devoted to predict several environmental phen...
The main topic of this thesis is how to combine model outputs from deterministic models with measure...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
This paper develops and empirically compares two Bayesian and empirical Bayes space-time approaches ...
Ground level ozone is one of the six criteria primary pollutants that is monitored by the United Sta...
Temporal prediction with a Bayesian spatial predictor: an application to ozone fields.
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
Bayesian dynamic process convolution models provide an appealing approach for modeling both univaria...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
This study presents an interdisciplinary approach to an air pollution problem that takes into accoun...
Summary. Short-term forecasts of air pollution levels in big cities are now reported in news-papers ...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...
We model and attempt to forecast low level atmospheric ozone concentration across Minnesota in a Ba...
We would like to thank Professor Katie St. Clair, our advisor for this project, for her guidance and...
Environmental computer models are deterministic models devoted to predict several environmental phen...
The main topic of this thesis is how to combine model outputs from deterministic models with measure...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
This paper develops and empirically compares two Bayesian and empirical Bayes space-time approaches ...
Ground level ozone is one of the six criteria primary pollutants that is monitored by the United Sta...
Temporal prediction with a Bayesian spatial predictor: an application to ozone fields.
Increasingly large volumes of space-time data are collected everywhere by mobile computing applicati...
Bayesian dynamic process convolution models provide an appealing approach for modeling both univaria...
Short-term forecasts of air pollution levels in big cities are now reported in news-papers and other...
This study presents an interdisciplinary approach to an air pollution problem that takes into accoun...
Summary. Short-term forecasts of air pollution levels in big cities are now reported in news-papers ...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...
We model and attempt to forecast low level atmospheric ozone concentration across Minnesota in a Ba...
We would like to thank Professor Katie St. Clair, our advisor for this project, for her guidance and...
Environmental computer models are deterministic models devoted to predict several environmental phen...
The main topic of this thesis is how to combine model outputs from deterministic models with measure...