Smart models for predicting under-saturated crude oil viscosity: a comparative study

Volume: 41, Issue: 19, Pages: 2326 - 2333
Published: Dec 20, 2018
Abstract
In this study, radial basis function (RBF) and multilayer perceptron (MLP) neural networks were proposed for accurate prediction of under-saturated oil viscosity. To this end, more than 600 viscosity data were collected from various geological locations worldwide which cover oil API gravity from 6.5 (extra heavy crude oils) to 53 (very light crude oils), reservoir temperature from 300.15 to 445.15 K, and reservoir pressure from 1.68 to 105.52...
Paper Details
Title
Smart models for predicting under-saturated crude oil viscosity: a comparative study
Published Date
Dec 20, 2018
Volume
41
Issue
19
Pages
2326 - 2333
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