1,051 to 1,060 of 1,436 Results
MS Excel Spreadsheet - 31.1 KB -
MD5: 7a3f2c5c25930b8a4747bc65076dac14
|
Plain Text - 56.4 KB -
MD5: f4a64f38abf40c596e5703a47444d762
|
Comma Separated Values - 3.0 MB -
MD5: ca7d6cf886675c8053e55134ff7b3c41
|
Plain Text - 3.5 MB -
MD5: bf15082a4f8b254c3ecc7a82c2f51025
|
MS Excel Spreadsheet - 1.0 MB -
MD5: d9ba00472acffe52fb7fa8e82e458486
|
Adobe PDF - 171.9 KB -
MD5: 2df1ddd0781a2abb2d76938c8735e7e3
|
May 20, 2022
Alyaev, Sergey, 2022, "Supporting Data for: Direct multi-modal inversion of geophysical logs using deep learning", https://doi.org/10.18710/1F9GYH, DataverseNO, V1
The dataset contains realizations of geological stratigraphic curves which were generated using the included script. This data is required to replicate results in Sergey Alyaev and Ahmed H. Elsheikh. "Direct multi-modal inversion of geophysical logs using deep learning." arXiv pr... |
May 20, 2022 -
Supporting Data for: Direct multi-modal inversion of geophysical logs using deep learning
Markdown Text - 4.7 KB -
MD5: 44eb6bf27b67c4aab0e24989a3231e50
Readme file |
May 20, 2022 -
Supporting Data for: Direct multi-modal inversion of geophysical logs using deep learning
Plain Text - 4.7 KB -
MD5: 44eb6bf27b67c4aab0e24989a3231e50
readme file |
May 20, 2022 -
Supporting Data for: Direct multi-modal inversion of geophysical logs using deep learning
Python Source Code - 5.1 KB -
MD5: 8f59527c03a6460aae2a377812b9ca64
Python code that can be used for generation of realizations |