Log In Sign Up

D-STEM v2: A Software for Modelling Functional Spatio-Temporal Data

by   Yaqiong Wang, et al.

Functional spatio-temporal data naturally arise in many environmental and climate applications where data are collected in a three-dimensional space over time. The MATLAB D-STEM v1 software package was first introduced for modelling multivariate space-time data and has been recently extended to D-STEM v2 to handle functional data indexed across space and over time. This paper introduces the new modelling capabilities of D-STEM v2 as well as the complexity reduction techniques required when dealing with large data sets. Model estimation, validation and dynamic kriging are demonstrated in two case studies, one related to ground-level air quality data in Beijing, China, and the other one related to atmospheric profile data collected globally through radio sounding.


page 13

page 19

page 20

page 25


Spatio-temporal models with space-time interaction and their applications to air pollution data

It is of utmost importance to have a clear understanding of the status o...

Spatial methods and their applications to environmental and climate data

Environmental and climate processes are often distributed over large spa...

A general theory for preferential sampling in environmental networks

This paper presents a general model framework for detecting the preferen...

Dynamical non-Gaussian modelling of spatial processes

Spatio-temporal processes in environmental applications are often assume...

DeepGraviLens: a Multi-Modal Architecture for Classifying Gravitational Lensing Data

Gravitational lensing is the relativistic effect generated by massive bo...

Spectral Diffusion Processes

Score-based generative modelling (SGM) has proven to be a very effective...