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SubsurfaceBreaks v. 1.0: A supervised detection of fault-related features on triangulated models of subsurface slopes: Input and Processed Data

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NIAID Data Ecosystem2026-05-02 收录
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https://zenodo.org/record/12209023
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This companion dataset relates to the manuscript "SubsurfaceBreaks v. 1.0: A supervised detection of fault-related features on triangulated models of subsurface slopes", by Michał Michalak, Christian Gerhards and Peter Menzel. There are several groups of files: a file with parameters (params.txt) of the generated slopes (e.g. dip angle, dip direction, level of noise). files 0-999 are generated using the code from GitHub. (https://github.com/michalmichalak997/SubsurfaceBreaks/blob/main/Broken_synthetic_subsurface_slopes) for generating synthetic slopes. Every slope is in a separate file (.txt files) and it is possible to upload the slope to ParaView for further inspection: Delaunay triangulation, normal vectors and dip vectors have their own .vtu files. The .txt files (0-999) can be uploaded for training using the Python script (https://github.com/michalmichalak997/SubsurfaceBreaks/blob/main/Broken_subsurface_slopes_training_testing_evaluating_revision.ipynb). KSH_input.txt corresponds to real data from Kraków-Silesian Homocline. Every row corresponds to a point representing a geological horizon separating Middle Jurassic geological units: Kościeliska sandstones from ore-bearing clays. This data set can be used to calculate geometric attributes using the code from GitHub (https://github.com/michalmichalak997/SubsurfaceBreaks/blob/main/Broken_real_subsurface_slopes). KSH_input_output_0 corresponds to an output file from processing the KSH_input.txt file using the code from GitHub (https://github.com/michalmichalak997/SubsurfaceBreaks/blob/main/Broken_real_subsurface_slopes). This file should be uploaded to the Python script to identify fault-related features on a real subsurface slope.
创建时间:
2025-01-02
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