Three-Dimensional Structural Geological Modeling Using Graph Neural Networks

被引:0
作者
Michael Hillier
Florian Wellmann
Boyan Brodaric
Eric de Kemp
Ernst Schetselaar
机构
[1] Geological Survey of Canada,
[2] Computational Geoscience and Reservoir Engineering (CGRE) RWTH Aachen University,undefined
来源
Mathematical Geosciences | 2021年 / 53卷
关键词
Graph neural networks; Three-dimensional geomodeling; Structural geology; Implicit modeling; Unstructured meshes;
D O I
暂无
中图分类号
学科分类号
摘要
Three-dimensional structural geomodels are increasingly being used for a wide variety of scientific and societal purposes. Most advanced methods for generating these models are implicit approaches, but they suffer limitations in the types of interpolation constraints permitted, which can lead to poor modeling in structurally complex settings. A geometric deep learning approach, using graph neural networks, is presented in this paper as an alternative to classical implicit interpolation that is driven by a learning through training paradigm. The graph neural network approach consists of a developed architecture utilizing unstructured meshes as graphs on which coupled implicit and discrete geological unit modeling is performed, with the latter treated as a classification problem. The architecture generates three-dimensional structural models constrained by scattered point data, sampling geological units and interfaces as well as planar and linear orientations. The modeling capacity of the architecture for representing geological structures is demonstrated from its application on two diverse case studies. The benefits of the approach are (1) its ability to provide an expressive framework for incorporating interpolation constraints using loss functions and (2) its capacity to deal with both continuous and discrete properties simultaneously. Furthermore, a framework is established for future research for which additional geological constraints can be integrated into the modeling process.
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页码:1725 / 1749
页数:24
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