Integrating a robust model for predicting surfactant–polymer flooding performance
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Amir H. Mohammadi | Arash Kamari | Amir H. Mohammadi | Farhad Gharagheizi | Amin Shokrollahi | Milad Arabloo | F. Gharagheizi | A. Mohammadi | A. Shokrollahi | A. Kamari | M. Arabloo
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