The aim of the present work was to develop a method for predicting the phase behaviour of four component systems consisting of oil, water and two surfactants from a limited number of screening experiments. Investigations were conducted to asses the potential of artificial neural networks (ANNs) with back-propagation training algorithm to predict the phase behaviour of four component systems. Three inputs only (percentages of oil and water and HLB of the surfactant blend) and four outputs (oil in water emulsion, water in oil emulsion, microemulsion, and liquid crystals containing regions) were used. Samples used for training represented about 15% of the sampling space within the tetrahedron body. The network was trained by performing optimiz...
Different artificial neural networks architectures have been assayed to predict percolation temperat...
A predictive method based on Artificial networks has been developed for the thermophysical propertie...
This paper presents a novel approach to the problem of characterization of petroleum fractions. An a...
The prediction of the thermodynamic properties of multiphase systems is complex, because, besides eq...
The objective of this study was to develop artificial neural network (ANN) model suitable to predict...
AbstracIn the past decade, artificial neural networks have been used as a powerful tool for modeling...
In this study, an artificial neural network (ANN) tool, which uses the data obtained from a pore net...
Abstract-- This paper presents the development artificial neural network (ANN) models for three stea...
PURPOSE: A genetic neural network (GNN) model was developed to predict the phase behavior of microe...
In this paper artificial neural networks have been constructed to predict different transformers oil...
This research deals with the analysis of the behaviour of artificial neural nets for prediction of r...
The application of artificial neural networks for the modelling of a complex process was examined. A...
The concept of Artificial Neural networks was of McClloch and Pitts in 1943 and since then it has be...
Vapor-liquid phase equilibrium —flash— calculations largely contribute to the total computation tim...
International audienceThe hydrophobicity of oils is a key parameter to design surfactant/oil/water (...
Different artificial neural networks architectures have been assayed to predict percolation temperat...
A predictive method based on Artificial networks has been developed for the thermophysical propertie...
This paper presents a novel approach to the problem of characterization of petroleum fractions. An a...
The prediction of the thermodynamic properties of multiphase systems is complex, because, besides eq...
The objective of this study was to develop artificial neural network (ANN) model suitable to predict...
AbstracIn the past decade, artificial neural networks have been used as a powerful tool for modeling...
In this study, an artificial neural network (ANN) tool, which uses the data obtained from a pore net...
Abstract-- This paper presents the development artificial neural network (ANN) models for three stea...
PURPOSE: A genetic neural network (GNN) model was developed to predict the phase behavior of microe...
In this paper artificial neural networks have been constructed to predict different transformers oil...
This research deals with the analysis of the behaviour of artificial neural nets for prediction of r...
The application of artificial neural networks for the modelling of a complex process was examined. A...
The concept of Artificial Neural networks was of McClloch and Pitts in 1943 and since then it has be...
Vapor-liquid phase equilibrium —flash— calculations largely contribute to the total computation tim...
International audienceThe hydrophobicity of oils is a key parameter to design surfactant/oil/water (...
Different artificial neural networks architectures have been assayed to predict percolation temperat...
A predictive method based on Artificial networks has been developed for the thermophysical propertie...
This paper presents a novel approach to the problem of characterization of petroleum fractions. An a...