Massive database generation for 2.5D borehole electromagnetic measurements using refined isogeometric analysis

Type of publication
Article de presse
Auteurs

Ali Hashemian, Daniel Garcia, Jon Ander Rivera, David Pardo

Abstract

Borehole resistivity measurements are routinely inverted in real-time during geosteering operations. The inversion process can be efficiently performed with the help of advanced artificial intelligence algorithms such as deep learning. These methods require a massive dataset that relates multiple Earth models with the corresponding borehole resistivity measurements. In here, we propose to use an advanced numerical method — refined isogeometric analysis (rIGA) — to perform rapid and accurate 2.5D simulations and generate databases when considering arbitrary 2D Earth models. Numerical results show that we can generate a meaningful synthetic database composed of 100,000 Earth models with the corresponding measurements in 56 h using a workstation equipped with two CPUs.

Conférence / Magazine
Computers & Geosciences
Éditeur
Elsevier
Année de publication
2021
Citation bibliographique

Ali Hashemian, Daniel Garcia, Jon Ander Rivera, David Pardo,
Massive database generation for 2.5D borehole electromagnetic measurements using refined isogeometric analysis,
Computers & Geosciences,
Volume 155,
2021,
104808,
ISSN 0098-3004,
https://doi.org/10.1016/j.cageo.2021.104808

DOI
https://doi.org/10.1016/j.cageo.2021.104808