A matrix-free approach to geostatistical filtering
Preprint, 2020

In this paper, we present a novel approach to geostatistical filtering which tackles two challenges encountered when applying this method to complex spatial datasets: modeling the non-stationarity of the data while still being able to work with large datasets. The approach is based on a finite element approximation of Gaussian random fields expressed as an expansion of the eigenfunctions of a Laplace--Beltrami operator defined to account for local anisotropies. The numerical approximation of the resulting random fields using a finite element approach is then leveraged to solve the scalability issue through a matrix-free approach. Finally, two cases of application of this approach, on simulated and real seismic data are presented.

Gen-eralized random field

Filtering

Matrix-free

Riemannian manifold

Factorial kriging

SPDE

Author

Mike Pereira

Chalmers, Electrical Engineering, Systems and control

Nicolas Desassis

Mines ParisTech

Cédric MAGNERON

ESTIMAGES

Nathan PALMER

Central Petroleum Ltd

STOchastic Traffic NEtworks (STONE)

Chalmers AI Research Centre (CHAIR), -- .

Chalmers, 2020-02-01 -- 2022-01-31.

Subject Categories

Computational Mathematics

Probability Theory and Statistics

More information

Latest update

8/11/2022