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2,293
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Prediction of permeability from well logs using a new hybrid machine learning algorithm
Author(s):
Morteza Matinkia
,
Romina Hashami
,
Mohammad Mehrad
,
Mohammad Reza Hajsaeedi
,
Arian Velayati
Publication date
Created:
March 2022
Publication date
(Print):
March 2022
Journal:
Petroleum
Publisher:
Elsevier BV
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Genome Engineering using CRISPR
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Comparison of machine learning methods for estimating permeability and porosity of oil reservoirs via petro-physical logs
Mohammad Ahmadi
,
Zhangxing Chen
(2018)
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Permeability estimation: The various sources and their interrelationships
U Ahmed
,
S. Crary
,
G Coates
…
(1991)
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Prediction of Shear Wave Velocity Using Artificial Neural Network Technique, Multiple Regression and Petrophysical Data: A Case Study in Asmari Reservoir (SW Iran)
Habib Akhundi
,
Mohammad Ghafoori
,
Gholam-Reza Lashkaripour
(2014)
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Author and article information
Contributors
Mohammad Mehrad:
(View ORCID Profile)
Mohammad Reza Hajsaeedi:
(View ORCID Profile)
Journal
Title:
Petroleum
Abbreviated Title:
Petroleum
Publisher:
Elsevier BV
ISSN (Print):
24056561
Publication date Created:
March 2022
Publication date (Print):
March 2022
Article
DOI:
10.1016/j.petlm.2022.03.003
SO-VID:
85577fe1-115e-4361-9f43-531c620fdf34
Copyright ©
© 2022
License:
https://www.elsevier.com/tdm/userlicense/1.0/
http://creativecommons.org/licenses/by-nc-nd/4.0/
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