Application of artificial intelligence to forecast hydrocarbon production from shales

Petroleum - Tập 4 - Trang 75-89 - 2018
Palash Panja1, Raul Velasco1, Manas Pathak2, Milind Deo2
1Energy & Geoscience Institute, 432Wakara Way, Suite 300, Salt Lake City, UT 84108, United States
2Department of Chemical Engineering, University of Utah, 50Central Campus Dr., Salt Lake City, UT 84112, United States

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