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Title
Prediction of Undersaturated Crude Oil Density Using Gaussian Process Regression
Type Article
Keywords
Not Record
Abstract
Gaussian process is a powerful tool to model sophisticated tasks in the machine learning field. On the other side, density of crude oil is an important property in simulation processes and design of equipments. Nevertheless; using laboratory methods to measure crude oil density is costly and time consuming; thus, development of a predictive model to estimate the density of crude oil is very beneficial. The authors develop a Gaussian process–based model to predict the density of undersaturated crude oil. Results were compared with the previous works and it was shown that the new method outperforms them.
Researchers Habib Rostami (First researcher) , Reza Azin (Second researcher) , Reza Dianat (Third researcher)