An adaptive neuro-fuzzy inference system white-box model for real-time multiphase flowing bottom-hole pressure prediction in wellbores

Petroleum - Tập 9 - Trang 629-646 - 2023
Chibuzo Cosmas Nwanwe1,2, Ugochukwu Ilozurike Duru2
1Department of Minerals and Petroleum Resources Engineering Technology, Federal Polytechnic Nekede, Owerri, P.M.B., 1036, Owerri, Nigeria
2Department of Petroleum Engineering, Federal University of Technology, Owerri, P.M.B., 1526, Owerri, Nigeria

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