There has been an increasing demand for describing, predicting, and drawing
inferences for various environmental processes, such as air pollution and precipitation.
Environmental statistics plays an important role in many related applications,
such as weather-related risk assessment for urban design and crop growth. However,
modeling the spatio-temporal dynamics of environmental data is challenging due to
their inherent high variability and nonstationarity. This dissertation is composed of
four signi cant contributions to the modeling, simulation, and prediction of spatiotemporal
processes using statistical techniques and machine learning algorithms.
This dissertation rstly focuses on the Gaussian process emulators of the numerical
climate models over a large spatial region, where the spatial process exhibits nonstationarity.
The proposed method allows for estimating a rich class of nonstationary
Mat ern covariance functions with spatially varying parameters. The e cient estimation
is achieved by local-polynomial tting of the covariance parameters. To extend
the applicability of this method to large-scale computations, the proposed method
is implemented by developing software with high-performance computing architectures
for nonstationary Gaussian process estimation and simulation. The developed
software outperforms existing ones in both computational time and accuracy by a
large margin. The method and software are applied to the statistical emulation of
high-resolution climate models.
The second focus of this dissertation is the development of spatio-temporal stochastic
weather generators for non-Gaussian and nonstationary processes. The proposed multi-site generator uses a left-censored non-Gaussian vector autoregression model,
where the random error follows a skew-symmetric distribution. It not only drives the
occurrence and intensity simultaneously but also possesses nice interpretations both
physically and statistically. The generator is applied to 30-second precipitation data
collected at the University of Lausanne.
Finally, this dissertation investigates the spatial prediction with scalable deep
learning algorithms to overcome the limitations of the classical Kriging predictor in
geostatistics. A novel neural network structure is proposed for spatial prediction by
adding an embedding layer of spatial coordinates with basis functions. The proposed
method, called DeepKriging, has multiple advantages over Kriging and classical neural
networks with spatial coordinates as features. The method is applied to the prediction
of ne particulate matter (PM2:5) concentrations in the United States.
|Date of Award||Nov 4 2020|
|Original language||English (US)|
- Computer, Electrical and Mathematical Science and Engineering
|Supervisor||Ying Sun (Supervisor)|
- deep learning
- environmental statistics
- spatial-temporal statistics
- large-scale geostatistics
- stochastic weather generator