Space-time data analysis and assimilation techniques in atmospheric sciences typically consider input from monitoring measurements. The input is often processed in a manner that acknowledges characteristics of the measurements (e.g., underlying patterns, fluctuation features) under conditions of uncertainty, leads to the derivation of secondary information that serves study-oriented goals, and provides input to space-time prediction techniques. We present a novel approach that blends a rigorous space-time prediction model (Bayesian Maximum Entropy, BME) with a cognitively informed visualization of high-dimensional data (spatialization). The combined BME and spatialization approach (BME-S) is used to study monthly-averaged NO2 and mean annua...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...
Statistical analyses of the health effects of air pollution have increasingly used GIS-based covaria...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Geostatistical methods are widely used in estimating long-term exposures for air pollution epidemiol...
Respirable Suspended Particulate (RSP) time series data sampled in an air quality monitoring network...
The environment and development are major issues of general concern. After much suffering from the h...
States in the USA are required to demonstrate future compliance of criteria air pollutant standards ...
161 pagesReleases of pollutants into the atmosphere pose risks to human health, the environment, and...
The development of models that provide accurate spatio-temporal predictions of ambient air pollution...
Particulate matter (PM10 and PM2.5) is a criteria air pollutant providing a useful indicator to asse...
Recently, many national Environmental Agencies are interested to provide the citizens and public hea...
Understanding the daily changes in ambient air quality concentrations is important to the assessing ...
To support the Women’s Health Initiative (WHI) Memory Study (WHIMS), a nationwide cohort study, accu...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...
Statistical analyses of the health effects of air pollution have increasingly used GIS-based covaria...
We develop spatial statistical methodology to design large-scale air pollution monitoring networks w...
This thesis addresses spatial interpolation and temporal prediction using air pollution data by seve...
Geostatistical methods are widely used in estimating long-term exposures for air pollution epidemiol...
Respirable Suspended Particulate (RSP) time series data sampled in an air quality monitoring network...
The environment and development are major issues of general concern. After much suffering from the h...
States in the USA are required to demonstrate future compliance of criteria air pollutant standards ...
161 pagesReleases of pollutants into the atmosphere pose risks to human health, the environment, and...
The development of models that provide accurate spatio-temporal predictions of ambient air pollution...
Particulate matter (PM10 and PM2.5) is a criteria air pollutant providing a useful indicator to asse...
Recently, many national Environmental Agencies are interested to provide the citizens and public hea...
Understanding the daily changes in ambient air quality concentrations is important to the assessing ...
To support the Women’s Health Initiative (WHI) Memory Study (WHIMS), a nationwide cohort study, accu...
Accurate, instantaneous and high resolution spatial air-quality information can better inform the pu...
Problems of model determination, prediction and statistical learning for space-time data arise in ma...
Statistical analyses of the health effects of air pollution have increasingly used GIS-based covaria...