Predicting Fracture Network Development in Crystalline Rocks

被引:0
|
作者
Jessica McBeck
J. M. Aiken
B. Cordonnier
Y. Ben-Zion
F. Renard
机构
[1] University of Oslo,Department of Geosciences, Njord Centre
[2] University of Oslo,Department of Physics, Center for Computing in Science Education
[3] University of Southern California,Department of Earth Sciences and Southern California Earthquake Center
[4] University Grenoble Alpes,undefined
[5] University Savoie Mont Blanc,undefined
[6] CNRS,undefined
[7] IRD,undefined
[8] IFSTTAR,undefined
[9] ISTerre,undefined
来源
Pure and Applied Geophysics | 2022年 / 179卷
关键词
Fracture; machine learning; X-ray tomography; triaxial compression; granite; marble;
D O I
暂无
中图分类号
学科分类号
摘要
The geometric properties of fractures influence whether they propagate, arrest, or coalesce with other fractures. Thus, quantifying the relationship between fracture network characteristics may help predict fracture network development, and perhaps precursors to catastrophic failure. To constrain the relationship and predictability of fracture characteristics, we deform eight one centimeter tall rock cores under triaxial compression while acquiring in situ X-ray tomograms. The tomograms reveal precise measurements of the fracture network characteristics above the spatial resolution of 6.5 µm. We develop machine learning models to predict the value of each characteristic using the other characteristics, and excluding the macroscopic stress or strain imposed on the rock. The models predict fracture development more accurately in the experiments performed on granite and monzonite, than the experiments on marble. Fracture network development may be more predictable in these igneous rocks because their microstructure is more mechanically homogeneous than the marble, producing more systematic fracture development that is not strongly impeded by grain contacts and cleavage planes. The varying performance of the models suggest that fracture volume, length, and aperture are the most predictable of the characteristics, while fracture orientation is the least predictable. Orientation does not correlate with length, as suggested by the idea that the orientation evolves with increasing differential stress and thus fracture length. This difference between the observed and expected relationship between orientation and length highlights the influence of mechanical heterogeneities and local stress perturbations on fracture growth as fractures propagate, link, and coalesce.
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页码:275 / 299
页数:24
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