A machine learning model for predicting the minimum miscibility pressure of CO2 and crude oil system based on a support vector machine algorithm approach
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Title
A machine learning model for predicting the minimum miscibility pressure of CO2 and crude oil system based on a support vector machine algorithm approach
Authors
Keywords
Machine learning, Minimum miscible pressure, Prediction model, Support vector machine, The impure CO, 2
Journal
FUEL
Volume 290, Issue -, Pages 120048
Publisher
Elsevier BV
Online
2020-12-31
DOI
10.1016/j.fuel.2020.120048
References
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