Quantitative geological modeling based on probabilistic integration of geological and geophysical data

In order to obtain an adequate geological model of any kind, proper integration of geophysical data, borehole logs and geological expert knowledge is important. Geophysical data provide indirect information about geology, borehole logs provide sparse point wise direct information about geology, and...

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Main Author: Gulbrandsen, Mats Lundh
Format: Book
Language:English
Published: The Niels Bohr Institute, Faculty of Science, University of Copenhagen 2016
Subjects:
Online Access:https://curis.ku.dk/portal/da/publications/quantitative-geological-modeling-based-on-probabilistic-integration-of-geological-and-geophysical-data(bc53ddce-dbde-4829-9c5f-b9e11636d8cb).html
https://soeg.kb.dk/permalink/45KBDK_KGL/fbp0ps/alma99122536784105763
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spelling ftcopenhagenunip:oai:pure.atira.dk:publications/bc53ddce-dbde-4829-9c5f-b9e11636d8cb 2023-05-15T17:58:21+02:00 Quantitative geological modeling based on probabilistic integration of geological and geophysical data Gulbrandsen, Mats Lundh 2016 https://curis.ku.dk/portal/da/publications/quantitative-geological-modeling-based-on-probabilistic-integration-of-geological-and-geophysical-data(bc53ddce-dbde-4829-9c5f-b9e11636d8cb).html https://soeg.kb.dk/permalink/45KBDK_KGL/fbp0ps/alma99122536784105763 eng eng The Niels Bohr Institute, Faculty of Science, University of Copenhagen info:eu-repo/semantics/closedAccess Gulbrandsen , M L 2016 , Quantitative geological modeling based on probabilistic integration of geological and geophysical data . The Niels Bohr Institute, Faculty of Science, University of Copenhagen . < https://soeg.kb.dk/permalink/45KBDK_KGL/fbp0ps/alma99122536784105763 > book 2016 ftcopenhagenunip 2021-09-23T17:57:22Z In order to obtain an adequate geological model of any kind, proper integration of geophysical data, borehole logs and geological expert knowledge is important. Geophysical data provide indirect information about geology, borehole logs provide sparse point wise direct information about geology, and the geologist’s job is to combine these sources of information with his or her own knowledge about lithology and geological structures and develop geological models. Large and data-rich geophysical surveys make this job extremely difficult. With a manual interpretation approach it is extremely time demanding and practically impossible to develop geological models that are consistent with all available data in an objective fashion. This thesis addresses these issues, and presents new methodologies and workflows, which are developed to assist the geologists in their work on developing plausible and reliable geological models. The work is manifested in two main directions. One direction focuses on how to fast and reliably be able to map geological boundary layers that uses all available geophysical data, treat all data consistently and at the same time treasure geological knowledge. For this purpose a methodology entitled Smart Interpretation is developed. This semi-automatic method learns the relation between a set of data attributes extracted from deterministically inverted airborne electromagnetic data and a set of interpretations of a geological layer that is manually picked by a geological expert. This relation can then be used to predict the interpreted geological layer, throughout the whole geophysical survey. Two applications of this method are presented. In one study, the distribution of permafrost in the Yukon Flats, Alaska is mapped, and in the other study, Smart Interpretation is using well-log data to automatically interpret the base of aquifer in Morrill, Nebraska. The other direction of the thesis is related to seismic inversion. The aspects of a probabilistic inversion of a seismic trace are presented, with the focus on how to properly integrate the geological information when defining the prior distribution. Finally a study addressing the problems of how to interpret and visualize results from a probabilistically defined inverse problem in a way that is meaningful in a geological point of view is presented. Book permafrost Alaska Yukon University of Copenhagen: Research Yukon
institution Open Polar
collection University of Copenhagen: Research
op_collection_id ftcopenhagenunip
language English
description In order to obtain an adequate geological model of any kind, proper integration of geophysical data, borehole logs and geological expert knowledge is important. Geophysical data provide indirect information about geology, borehole logs provide sparse point wise direct information about geology, and the geologist’s job is to combine these sources of information with his or her own knowledge about lithology and geological structures and develop geological models. Large and data-rich geophysical surveys make this job extremely difficult. With a manual interpretation approach it is extremely time demanding and practically impossible to develop geological models that are consistent with all available data in an objective fashion. This thesis addresses these issues, and presents new methodologies and workflows, which are developed to assist the geologists in their work on developing plausible and reliable geological models. The work is manifested in two main directions. One direction focuses on how to fast and reliably be able to map geological boundary layers that uses all available geophysical data, treat all data consistently and at the same time treasure geological knowledge. For this purpose a methodology entitled Smart Interpretation is developed. This semi-automatic method learns the relation between a set of data attributes extracted from deterministically inverted airborne electromagnetic data and a set of interpretations of a geological layer that is manually picked by a geological expert. This relation can then be used to predict the interpreted geological layer, throughout the whole geophysical survey. Two applications of this method are presented. In one study, the distribution of permafrost in the Yukon Flats, Alaska is mapped, and in the other study, Smart Interpretation is using well-log data to automatically interpret the base of aquifer in Morrill, Nebraska. The other direction of the thesis is related to seismic inversion. The aspects of a probabilistic inversion of a seismic trace are presented, with the focus on how to properly integrate the geological information when defining the prior distribution. Finally a study addressing the problems of how to interpret and visualize results from a probabilistically defined inverse problem in a way that is meaningful in a geological point of view is presented.
format Book
author Gulbrandsen, Mats Lundh
spellingShingle Gulbrandsen, Mats Lundh
Quantitative geological modeling based on probabilistic integration of geological and geophysical data
author_facet Gulbrandsen, Mats Lundh
author_sort Gulbrandsen, Mats Lundh
title Quantitative geological modeling based on probabilistic integration of geological and geophysical data
title_short Quantitative geological modeling based on probabilistic integration of geological and geophysical data
title_full Quantitative geological modeling based on probabilistic integration of geological and geophysical data
title_fullStr Quantitative geological modeling based on probabilistic integration of geological and geophysical data
title_full_unstemmed Quantitative geological modeling based on probabilistic integration of geological and geophysical data
title_sort quantitative geological modeling based on probabilistic integration of geological and geophysical data
publisher The Niels Bohr Institute, Faculty of Science, University of Copenhagen
publishDate 2016
url https://curis.ku.dk/portal/da/publications/quantitative-geological-modeling-based-on-probabilistic-integration-of-geological-and-geophysical-data(bc53ddce-dbde-4829-9c5f-b9e11636d8cb).html
https://soeg.kb.dk/permalink/45KBDK_KGL/fbp0ps/alma99122536784105763
geographic Yukon
geographic_facet Yukon
genre permafrost
Alaska
Yukon
genre_facet permafrost
Alaska
Yukon
op_source Gulbrandsen , M L 2016 , Quantitative geological modeling based on probabilistic integration of geological and geophysical data . The Niels Bohr Institute, Faculty of Science, University of Copenhagen . < https://soeg.kb.dk/permalink/45KBDK_KGL/fbp0ps/alma99122536784105763 >
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