A neural network has been constructed for prediction of the solubility of analytes in supercritical carbon dioxide. Preliminary studies for the input of molecular structure into the network indicates that connectivity indices are adequate to provide structural information in a condensed form. This allows neural networks, which would otherwise be very extensive, to have reduced training times; it also reduces the possibility of memorization of the training data and over-training of the network
Clear knowledge about the solubility of acid gases such as CO2 in different solvents at different st...
Supercritical carbon dioxide as a working fluid in a closed Brayton cycle is proving to be more effi...
In this communication, carbon dioxide solubility in aqueous solutions of various absorbents (2-amino...
International audienceIn this communication, a feed-forward artificial neural network algorithm has ...
Neural networks have been investigated for predicting mass transfer coefficients from supercritical ...
International audienceApplication of supercritical CO2 for separation of ionic liquids from their or...
A neural network model was used to predict the ternary adsorption equilibria of 2,6- and 2,7-dimethy...
Over the last years, extensive motivation has emerged towards the application of supercritical carbo...
Machine learning has seen increasing implementation as a predictive tool in the chemical and physica...
Understanding drug solubility in various solvents is of great importance to the pharmaceutical indus...
In this short communication, the prediction of the permeability of carbon dioxide through different ...
Material researchers are progressively embracing the utilization of machine learning techniques to f...
Publication Date (Web): February 4, 2011This article is part of the John M. Prausnitz Festschrift sp...
Solubility of CO2 in brine is one of the contributing trapping mechanisms by which the injected CO2 ...
This study highlights the application of radial basis function (RBF) neural networks, adaptive neuro...
Clear knowledge about the solubility of acid gases such as CO2 in different solvents at different st...
Supercritical carbon dioxide as a working fluid in a closed Brayton cycle is proving to be more effi...
In this communication, carbon dioxide solubility in aqueous solutions of various absorbents (2-amino...
International audienceIn this communication, a feed-forward artificial neural network algorithm has ...
Neural networks have been investigated for predicting mass transfer coefficients from supercritical ...
International audienceApplication of supercritical CO2 for separation of ionic liquids from their or...
A neural network model was used to predict the ternary adsorption equilibria of 2,6- and 2,7-dimethy...
Over the last years, extensive motivation has emerged towards the application of supercritical carbo...
Machine learning has seen increasing implementation as a predictive tool in the chemical and physica...
Understanding drug solubility in various solvents is of great importance to the pharmaceutical indus...
In this short communication, the prediction of the permeability of carbon dioxide through different ...
Material researchers are progressively embracing the utilization of machine learning techniques to f...
Publication Date (Web): February 4, 2011This article is part of the John M. Prausnitz Festschrift sp...
Solubility of CO2 in brine is one of the contributing trapping mechanisms by which the injected CO2 ...
This study highlights the application of radial basis function (RBF) neural networks, adaptive neuro...
Clear knowledge about the solubility of acid gases such as CO2 in different solvents at different st...
Supercritical carbon dioxide as a working fluid in a closed Brayton cycle is proving to be more effi...
In this communication, carbon dioxide solubility in aqueous solutions of various absorbents (2-amino...