Deep basin conductor characterization using machine learning-assisted magnetotelluric Bayesian inversion in the SW Barents Sea

Author:

Corseri Romain12ORCID,Seillé Hoël3,Faleide Jan Inge1,Planke Sverre12,Senger Kim4,Abdelmalak Mohamed Mansour12,Gelius Leiv Jacob1,Mohn Geoffroy5,Visser Gerhard3ORCID

Affiliation:

1. Department of Geosciences , University of Oslo, 0371 Oslo , Norway

2. Volcanic Basin Energy Research AS , 0361 Oslo , Norway

3. CSIRO, Deep Earth Imaging FSP, Australian Resource Research Centre , Kensington, WA6151 , Australia

4. Department of Arctic Geology , The University Centre in Svalbard (UNIS), 9171 Longyearbyen , Norway

5. Département Géosciences et Environnement (GEC) , Université de Cergy Pontoise, Neuville-sur-Oise, F-95000 , France

Abstract

SUMMARY In this paper, we use a new workflow to substantiate the characterization of a prominent, deep sediment conductor in the hyperextended Bjørnøya Basin (SW Barents Sea) previously identified in smooth resistivity models from 3-D deterministic inversion of magnetotelluric data. In low-dimensionality environments like layered sedimentary basin, 1-D Bayesian inversion can be advantageous for a thorough exploration of the solution space, but the violation of the 1-D assumption has to be efficiently handled. The primary geological objectives of this work is therefore preceded by a secondary task: the application of a new machine learning approach for handling the 1-D violation assumption for 21 MT field stations in the Barents Sea. We find that a decision tree can adequately learn the relationship between MT dimensionality parameters and the 1-D–3-D residual response for a training set of synthetic models, mimicking typical resistivity structures of the SW Barents Sea. The machine learning model is then used to predict the dimensionality compensation error for MT signal periods ranging of 1–3000 s for 21 receivers located over the Bjørnøya Basin and Veslemøy High. After running 1-D Bayesian inversion, we generated a posterior resistivity distribution for an ensemble of 6000 1-D models fitting the compensated MT data for each 21 field stations. The proportion of 1-D models showing ρ < 1 Ω·m is consistently beyond 80 per cent and systemically reaches a maximum of 100 per cent in the Early Aptian–Albian interval in the Bjørnøya Basin. In hyperextended basins of the SW Barents Sea, the dimensionality compensation workflow has permitted to refine the characterization of the deep basin conductor by leveraging the increased vertical resolution and optimal used of MT data. In comparison, the smooth 3-D deterministic models only poorly constrained depth and lateral extent of the basin anomaly. The highest probability of finding ρ < 1 Ω·m is robustly assigned to the syn-tectonic Early Aptian–Albian marine shales, now buried at 6–8 km depth. Based on a theoretical two phase fluid-rock model, we show that the pore fluid of these marine shales must have a higher salinity than seawater to explain the anomaly ρ < 1 Ω·m. Therefore, the primary pore fluid underwent mixing with a secondary brine during rifting. Using analogue rift systems in palaeomargins, we argue that two possible secondary brine reservoir may contribute to deep saline fluid circulation in the hyperextended basin: (1) Permian salt-derived fluid and, (2) mantle-reacted fluid from serpentinization.

Funder

Norges Forskningsråd

Centre of Excellence for Environmental Decisions, Australian Research Council

Commonwealth Scientific and Industrial Research Organisation

Publisher

Oxford University Press (OUP)

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