Poster (Scientific congresses and symposiums)
1D geological modeling of the subsurface from geophysical data with Bayesian Evidential Learning
Michel, Hadrien; Hermans, Thomas; Nguyen, Frédéric
2019EGU General Assembly 2019
 

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Keywords :
Applied Geophysics; Machine Learning; Inverse problem
Abstract :
[en] Uncertainty appraisal is a key concern to geophysicists when imaging the subsurface. This issue is classically handled by stochastic inversion (costly CPU) or by error propagation (unrealistic uncertainty). However, those methods suffer from an important CPU cost, due to the need for many runs of inversions. Bayesian Evidential Learning (BEL) offers a real shift towards a fully stochastic framework for the optimization of acquisition and the interpretation of data in geophysics. Contrary to inversion methods, interpretation of geophysical data through BEL relies on the constitution of statistical relationships between model parameters (in the prior model space) and the corresponding data, in order to produce statistical distributions of model parameters constrained to the knowledge of field acquired data (the posterior model space). Hence, it does not require any inversion of the data but rather multiple, independent (and thus fully parallelizable) runs of the much more CPU efficient forward model. This new framework has been adapted to static 1D modelling of the subsurface constrained to geophysical data. The developed process has then been applied to both synthetic and field-acquired data, demonstrating the ability of the process to create consistent sets of probable posterior models, provided that the prior model space is defined wisely, even for noisy data sets. The method was tested for surface nuclear magnetic resonance and multi-channel analysis of surface wave. However, the framework and associated software package were developed such that it can be applied to any 1D problem as long as the forward code is available.
Disciplines :
Geological, petroleum & mining engineering
Author, co-author :
Michel, Hadrien  ;  Université de Liège - ULiège > Département ArGEnCo > Géophysique appliquée
Hermans, Thomas;  Ghent University - UGent > Faculty of Sciences > Department of Geology
Nguyen, Frédéric ;  Université de Liège - ULiège > Département ArGEnCo > Géophysique appliquée
Language :
English
Title :
1D geological modeling of the subsurface from geophysical data with Bayesian Evidential Learning
Publication date :
11 April 2019
Number of pages :
A0
Event name :
EGU General Assembly 2019
Event date :
du 7 avril 2019 au 12 avril 2019
Audience :
International
Funders :
FWB - Fédération Wallonie-Bruxelles [BE]
F.R.S.-FNRS - Fonds de la Recherche Scientifique [BE]
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since 19 July 2019

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