Artificial neural network-based prediction and geomechanical analysis of lost circulation in naturally fractured reservoirs: a case study
Jahanbakhshi, R.; Keshavarzi, R.; Jalili, S.
European Journal of Environmental and Civil Engineering 18(3-4): 320-335
2014
ISSN/ISBN: 1964-8189
Accession: 074141814
PDF emailed within 1 workday: $29.90
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