Downscaling FWI models for fault system characterization
ABG-129821 | Thesis topic | |
2025-03-21 | Public funding alone (i.e. government, region, European, international organization research grant) |
- Earth, universe, space sciences
Topic description
Mapping faults in the subsurface and understanding fault properties (i.e., geometry, dimensions, seal behaviour, fault growth) is fundamental to drive decision-making in subsurface earth resources applications. Nowadays, fault interpretations at depth are mainly derived from high-resolution models obtained by full waveform inversion (FWI), in addition to migrated images. Although the ease and accuracy of seismic imaging and interpretation are continually increasing, issues such as limited data bandwidth, noise, approximation of the physical model, and incomplete data coverage, are still sources of challenges in the detailed imaging of faults (e.g. faults with throws that fall below vertical seismic resolution) (DIMMEN, ROTEVATN & LECOMTE, 2023). Under-estimating the associated uncertainties can lead to overly optimistic model-based forecasts and increase the financial risk associated with subsurface projects. In a recent work, (RUGGIERO, CUPILLARD & CAUMON, 2024) propose a two-scale approach which combines FWI with a downscaling inversion to estimate fault parameters (e.g., length, dip, throw) in a probabilistic way. The approach builds on previous studies (HEDJAZIAN, CAPDEVILLE & BODIN, 2021; SANTOS ET AL., 2024), and is called inverse homogenization. Assuming that FWI provides a smooth representation of the real structures, it aims at recovering all the finer scale fault models compatible with the FWI solution. In the present project, we propose to apply this approach to a fault system, i.e., to not only one but multiple, possibly connected faults. After testing the method in a 2D synthetic case, a real data case and/or an extension to 3D will be considered.
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Presentation of host institution and host laboratory
RING Team, a pluridisciplinary and diverse group of 12-15 researchers and graduate students working at the interface of geoscience, computer science and applied mathematics. The team is part of École Nationale Supérieure de Géologie in the GeoRessources laboratory, a research lab of Université de Lorraine and CNRS.
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Candidate's profile
The candidate should hold a MSc in quantitative Earth Sciences, Geophysics, Physics, Geomechanics, Applied Mathematics or Computer Science. He/she is passionate about science and has solid scientific writing skills. An experience in computer programming and a strong command of English language are required. French language is preferable, but not necessary.
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