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Technical Content

Industry Article
First Break | Ekaterina Kneller, Ulisses Correia, Laryssa Oliveira, Jean-philippe Coulon (CGG) ; Paulo de Oliveira Maciel Junior, Wilson Lisboa Ramos Filho (Petrobras) ©2021 EAGE | November

The 4D global inversion workflow is a multistage process that includes seismic data preconditioning, wavelet estimation, low-frequency model building, 3D inversion, and finally a 4D global inversion. In this work, focusing on a post-salt turbidite reservoir in the Campos Basin, offshore Brazil, we show ...

Industry Article
GeoExpro | Gustav Aagenes Ersdal, Idar Kjorlaug ©2021 GeoPublishing Ltd | October

Exploration activity in the Barents Sea has fluctuated considerably over the last 40 years, in line with the price of oil and general industry optimism. Today’s high level of activity focused on ongoing and planned field developments and production may spur further exploration as ...

Industry Article
GeoExpro | Gregor Duval, Madhurima Bhattacharya ©2021 GeoPublishing Ltd | October

At first glance, the Western Indian Ocean region may look like a barren oceanic crust with little potential, but there is tantalising evidence to suggest otherwise. CGG geoscientists have been sifting through the evidence to re-evaluate opportunities offshore East Africa and in the Western ...

Flyer
©2021 CGG | October

Preserve the geological and seismic detail in your static model during history matching, assess uncertainty and reduce time spent on manual model updates with this innovative and efficient ensemble-based multi-scale data-driven approach.

Flyer
©2021 CGG | October

Get more geological detail into your static models and assess uncertainty with a full range of stochastic model realizations using this innovative ensemble-based petrophysical inversion workflow

Industry Article
The Leading Edge | Fabien Allo, Jean-philippe Coulon, Jean-Luc Formento, Romain Reboul (CGG) ; Laure Capar, Mathieu Darnet, Benoit Issautier, Stephane Marc, Alexandre Stopin (BRGM) ©2021 SEG | October

Deep neural networks are used to characterize the porosity and permeability of the Dogger formation north-east of Paris, France, that already hosts a number of geothermal plants and is set to become even more important with the transition toward renewable energies. Due to the ...