Geostatistics for Large Datasets on Riemannian Manifolds: A Matrix-Free Approach
Journal article, 2022

Large or very large spatial (and spatio-temporal) datasets have become common place in many environmental and climate studies. These data are often collected in non-Euclidean spaces (such as the planet Earth) and they often present nonstationary anisotropies. This paper proposes a generic approach to model Gaussian Random Fields (GRFs) on compact Riemannian manifolds that bridges the gap between existing works on nonstationary GRFs and random fields on manifolds. This approach can be applied to any smooth compact manifolds, and in particular to any compact surface. By defining a Riemannian metric that accounts for the preferential directions of correlation, our approach yields an interpretation of the nonstationary geometric anisotropies as resulting from local deformations of the domain. We provide scalable algorithms for the estimation of the parameters and for optimal prediction by kriging and simulation able to tackle very large grids. Stationary and nonstationary illustrations are provided.

anisotropy

Laplace-Beltrami operator

Gaussian process

finite elements

nonstationarity

Author

Mike Pereira

Chalmers, Electrical Engineering, Systems and control

Mines ParisTech

Nicolas Desassis

Mines ParisTech

Denis Allard

Biostatistique et Processus Spatiaux (BioSP)

Journal of Data Science

1680-743X (ISSN) 1683-8602 (eISSN)

Vol. 20 4 512-532

Areas of Advance

Information and Communication Technology

Subject Categories

Computational Mathematics

Probability Theory and Statistics

Computer Vision and Robotics (Autonomous Systems)

DOI

10.6339/22-JDS1075

More information

Latest update

5/21/2024