Ph. D. ThesisWe develop a spatio-temporal model to analyse pairs of observations on temperature and humidity. The data consist of six months of observations at five locations collected from a sensor network deployed in North East England. The model for the temporal component takes the form of two coupled dynamic linear models (DLMs), specified marginally for temperature and conditionally for humidity given temperature. To account for dependence at nearby locations, the governing system equations include spatial e ects, specified using a Gaussian process. To understand the stochastic nature of the data, we perform fully Bayesian estimation for the model parameters and check the model fit via posterior distributions. The intractability...
PhD ThesisSpatio-temporal models provide a mechanism for analysing data that occurs naturally in sp...
The principled statistical application of Gaussian random field models used in geostatistics has his...
Estimation of static (or time constant)parameters in a general class of nonlinear, non-Gaussian, par...
Ph. D. ThesisUbiquitous cheap processing power and reduced storage costs have led to increased deplo...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
We consider online prediction of a latent dynamic spatiotemporal process and estimation of the assoc...
Temperature fluctuations can be described by a persistent correlation structure known as long-range ...
The standard approach when studying atmospheric circulation regimes and their dynamics is to use a h...
A methodology is developed for making inference about parameters of a possible covert chemical or bi...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
We discuss a range of Bayesian modelling approaches for spatial data and investigate some of the ass...
The influence of uncertainty in land surface temperature, air temperature, and wind speed on the est...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
With extreme weather events becoming more common, the risk posed by surface water flooding is ever i...
PhD ThesisSpatio-temporal models provide a mechanism for analysing data that occurs naturally in sp...
The principled statistical application of Gaussian random field models used in geostatistics has his...
Estimation of static (or time constant)parameters in a general class of nonlinear, non-Gaussian, par...
Ph. D. ThesisUbiquitous cheap processing power and reduced storage costs have led to increased deplo...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
We consider online prediction of a latent dynamic spatiotemporal process and estimation of the assoc...
Temperature fluctuations can be described by a persistent correlation structure known as long-range ...
The standard approach when studying atmospheric circulation regimes and their dynamics is to use a h...
A methodology is developed for making inference about parameters of a possible covert chemical or bi...
In this article, we consider the problem faced by a sensor network operator who must infer, in real ...
Part 1 presented a hierarchical Bayesian approach to reconstructing the spa-tial pattern of a climat...
We discuss a range of Bayesian modelling approaches for spatial data and investigate some of the ass...
The influence of uncertainty in land surface temperature, air temperature, and wind speed on the est...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
With extreme weather events becoming more common, the risk posed by surface water flooding is ever i...
PhD ThesisSpatio-temporal models provide a mechanism for analysing data that occurs naturally in sp...
The principled statistical application of Gaussian random field models used in geostatistics has his...
Estimation of static (or time constant)parameters in a general class of nonlinear, non-Gaussian, par...