In this short communication, the prediction of the permeability of carbon dioxide through different polymers using a neural network is studied. A neural network is a numeric-mathematical construction that can model complex non-linear relationships. Here it is used to correlate the IR spectrum of a polymer to its permeability. The underlying assumption is that the chemical information hidden in the IR spectrum is sufficient for the prediction. The best neural network investigated so far does indeed show predictive capabilities
International audienceIn this communication, a feed-forward artificial neural network algorithm has ...
Reliable data on the properties of the porous medium are necessary for the correct description of th...
The purpose of this study was to develop a simple model for prediction of corneal permeability of st...
(Received July 16,1993; accepted in revised form September 25,1993) In this short communication, the...
The development of polymer resins can benefit from the application of neural networks, using its gre...
A neural network has been constructed for prediction of the solubility of analytes in supercritical ...
Artificial intelligence (AI) and Machine learning (ML), a subfield of AI, are important tools for th...
AIM: To develop an artificial neural network (ANN) model for predicting skin permeability (log K(p))...
In this study, an artificial neural network (ANN) tool, which uses the data obtained from a pore net...
This paper presents a method for predicting permeability as one of the most important parameters in ...
The ability to predict properties of molecules prior to their synthesis can be of great importance i...
In this work convolutional-fully connected neural networks were designed and trained to predict the ...
A neural network modelling technique and its training to diagnose polymer composite materials based ...
© 2017, Pleiades Publishing, Ltd. The paper presents a method of instantaneous construction of relat...
251-255The artificial neural network (ANN) and empirical models have been developed to predict the...
International audienceIn this communication, a feed-forward artificial neural network algorithm has ...
Reliable data on the properties of the porous medium are necessary for the correct description of th...
The purpose of this study was to develop a simple model for prediction of corneal permeability of st...
(Received July 16,1993; accepted in revised form September 25,1993) In this short communication, the...
The development of polymer resins can benefit from the application of neural networks, using its gre...
A neural network has been constructed for prediction of the solubility of analytes in supercritical ...
Artificial intelligence (AI) and Machine learning (ML), a subfield of AI, are important tools for th...
AIM: To develop an artificial neural network (ANN) model for predicting skin permeability (log K(p))...
In this study, an artificial neural network (ANN) tool, which uses the data obtained from a pore net...
This paper presents a method for predicting permeability as one of the most important parameters in ...
The ability to predict properties of molecules prior to their synthesis can be of great importance i...
In this work convolutional-fully connected neural networks were designed and trained to predict the ...
A neural network modelling technique and its training to diagnose polymer composite materials based ...
© 2017, Pleiades Publishing, Ltd. The paper presents a method of instantaneous construction of relat...
251-255The artificial neural network (ANN) and empirical models have been developed to predict the...
International audienceIn this communication, a feed-forward artificial neural network algorithm has ...
Reliable data on the properties of the porous medium are necessary for the correct description of th...
The purpose of this study was to develop a simple model for prediction of corneal permeability of st...