Predictive model for bottomhole pressure based on machine learning

Journal of Petroleum Science and Engineering - Tập 166 - Trang 825-841 - 2018
Pavel Spesivtsev1, Konstantin Sinkov1, Ivan Sofronov1, Anna Zimina1,2, Alexey Umnov3, Ramil Yarullin3, Dmitry Vetrov3
1Schlumberger Moscow Research Center, 13 Pudovkina Str., Moscow, 119285, Russian Federation
2Moscow Institute of Physics and Technology, 9 Institutskiy per., Dolgoprudny, Moscow Region, 141701, Russian Federation
3National Research University Higher School of Economics, 20 Myasnitskaya str., Moscow, 101000, Russian Federation

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