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Research article
2 July 2013

Building Bayesian networks from basin-modelling scenarios for improved geological decision making

Publication: Petroleum Geoscience
Volume 19
Pages 289 - 304

Abstract

Basin models are used to gain insights about a petroleum system, and to simulate geological processes required to form oil and gas accumulations. The focus of such simulations is usually on charge and timing-related issues, although uncertainty analysis about a wider range of parameters is becoming more common. Bayesian networks (BNs) are useful for decision making in geological prospect analysis and exploration. In this paper we propose a framework for merging these two methodologies: by doing so, we explicitly account for dependencies between the geological elements. The probabilistic description of the BN is trained by using multiple scenarios of Basin and Petroleum Systems Modelling (BPSM). A range of different input parameters are used for total organic content, heat flow, porosity and faulting to span a full categorical design for the BPSM scenarios. Given the consistent BN for trap, reservoir and source attributes, we demonstrate important decision-making applications, such as evidence propagation and the value of information.
Supplementary material: Tables and figures of analyses and data are available at: www.geolsoc.org.uk/SUP18607.

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Published In

cover image Petroleum Geoscience
Petroleum Geoscience
Volume 19Number 3August 2013
Pages: 289 - 304

History

Received: 31 July 2012
Accepted: 17 March 2013
Published online: 2 July 2013
Published: August 2013

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Gabriele Martinelli* [email protected]
Department of Mathematical Sciences, Norwegian University of Science and Technology, Trondheim, Norway
Jo Eidsvik
Department of Mathematical Sciences, Norwegian University of Science and Technology, Trondheim, Norway
Richard Sinding-Larsen
Deparment of Geology and Mineral Resources Engineering, Norwegian University of Science and Technology, Trondheim, Norway
Sara Rekstad
Deparment of Geology and Mineral Resources Engineering, Norwegian University of Science and Technology, Trondheim, Norway
Tapan Mukerji
Deparment of Energy Resources Engineering, School of Earth Sciences, Stanford University, Stanford, California, USA

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