A case study of petrophysical rock typing and permeability prediction using machine learning in a heterogenous carbonate reservoir in Iran
Erfan Mohammadian(Northeast Petroleum University), Maziyar Sabet(Universiti Teknologi Brunei), Mahdi Kheirollahi(University of Tehran), Mehdi Ostadhassan(Christian-Albrechts-Universität zu Kiel), Bo Liu(Northeast Petroleum University)
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