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Keywords: training dataset
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Proceedings Papers
Jiehao Wang, Yunhui Tan, Baosheng Liang, Xinhui Min, Chaoshun Hu, Chao Zhao, Yuyu Wang, Mike Li, Yuguang Chen, Gerardo Jimenez, Shahzad Khan
Paper presented at the SPE/AAPG/SEG Unconventional Resources Technology Conference, June 20–22, 2022
Paper Number: URTEC-3723603-MS
... fracturing process by leveraging a large amount of finished simulation results from full-physics simulations as training dataset. It utilizes a physics-guided U-net model plus inception with inputs being 2D images (slices) averaging 3D key reservoir and geomechanical parameters. The model is trained...
Proceedings Papers
Paper presented at the SPE/AAPG/SEG Unconventional Resources Technology Conference, July 22–24, 2019
Paper Number: URTEC-2019-897-MS
.... The performances from each method are analyzed along with the error analysis. The clustering methods used are k-means clustering, self-organized map (SOM)/ hierarchical clustering combination. We divided the dataset into a training dataset (80%) and a testing dataset (20 Data Numbering Quartz% Feldspar% Clay Group...