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OU (A. Ghassemi) Reservoir Geomechanics & Seismicity Research Group
Data on Injection-Induced Shear Slip and Permeability Increase in Granite Fractures. In the plots, we present the results of novel injection-induced shear tests on cylindrical granite samples each containing a single tensile or saw-cut fracture. Flow rate and permeability are sho...
Ghassemi, A. University of Oklahoma
Aug 14, 2018
4 Resources
0 Stars
In curation
4 Resources
0 Stars
In curation
a-ghassemi-data-jgr2
Injection-induced Propagation and Coalescence of Pre-existing Fractures in Granite under Triaxial Stress
Ghassemi, A. University of Oklahoma
Jun 12, 2019
4 Resources
0 Stars
In curation
4 Resources
0 Stars
In curation
Coalbed Methane Resources in the Powder River Basin: Lithologic Data
The USGS investigated coalbed methane (CBM) resources in the Powder River Basin (WY) and adjacent basins in Wyoming and North Dakota. Specifically, the analysis looked at: total gas desorbed, coal quality, and high-pressure methane adsorption isotherm data from 963 cored coal samp...
Hallett, K. and USGS, . National Renewable Energy Laboratory
Sep 29, 2010
2 Resources
0 Stars
In curation
2 Resources
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In curation
Open Energy Information (OpenEI.org)
Open Energy Information (OpenEI) is a knowledge-sharing online community dedicated to connecting people with the latest information and data on energy resources from around the world. Created in partnership with the United States Department of Energy and federal laboratories acros...
Brodt-Giles, D. and (EERE), O. National Renewable Energy Laboratory
Nov 25, 2014
1 Resources
0 Stars
In curation
1 Resources
0 Stars
In curation
BUTTER Empirical Deep Learning Dataset
The BUTTER Empirical Deep Learning Dataset represents an empirical study of the deep learning phenomena on dense fully connected networks, scanning across thirteen datasets, eight network shapes, fourteen depths, twenty-three network sizes (number of trainable parameters), four le...
Tripp, C. et al National Renewable Energy Laboratory
May 20, 2022
4 Resources
0 Stars
Publicly accessible
4 Resources
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Publicly accessible