In this paper we report results for the prediction of thermodynamic properties based on neural networks, evolutionary algorithms and a combination of them. We compare backpropagation trained networks and evolution strategy trained networks with two physical models. Experimental data for the enthalpy of vaporization were taken from the literature in our investigation. The input information for both neural network and physical models consists of parameters describing the molecular structure of the molecules and the temperature. The results show the good ability of the neural networks to correlate and to predict the thermodynamic property. We also conclude that backpropagation training outperforms evolutionary training as well as simple hybrid...
The neural network correction approach that was previously proposed to achieve the chemical accuracy...
Vapor-liquid phase equilibrium (flash) calculations largely contribute to the total computation time...
This paper presents a new approach using artificial neural networks (ANN) to determine the thermodyn...
In this paper we report results for the prediction of thermodynamic properties based on neural netwo...
A neural-network-based approach was applied to correct the systematic deviations of the calculated h...
In the development and optimization of chemical processes involving the selection of organic fluids,...
The neural network model is employed to predict the vapor-liquid equilibrium (VLE) data for six diff...
This article considers the questions connected with creation of optimum algorithms using the laws of...
Vapor-liquid phase equilibrium —flash— calculations largely contribute to the total computation tim...
Recently, we proposed the XI method which combines the B3LYP/6-311+G(3df,2p)//B3LYP/6-311+G(d,p) met...
A methodology for predicting the standard enthalpy of formation of gas-phase molecules with high spe...
Machine learning provides promising new methods for accurate yet rapid prediction of molecular prope...
ARCAKLIOGLU, Erol/0000-0001-8073-5207WOS: 000183082500002Thermodynamic analysis of absorption therma...
Accurate thermochemistry estimation of polycyclic molecules is crucial for kinetic modeling of chemi...
Artificial neural networks (ANNs) are a method of machine learning (ML) that is now widely used in p...
The neural network correction approach that was previously proposed to achieve the chemical accuracy...
Vapor-liquid phase equilibrium (flash) calculations largely contribute to the total computation time...
This paper presents a new approach using artificial neural networks (ANN) to determine the thermodyn...
In this paper we report results for the prediction of thermodynamic properties based on neural netwo...
A neural-network-based approach was applied to correct the systematic deviations of the calculated h...
In the development and optimization of chemical processes involving the selection of organic fluids,...
The neural network model is employed to predict the vapor-liquid equilibrium (VLE) data for six diff...
This article considers the questions connected with creation of optimum algorithms using the laws of...
Vapor-liquid phase equilibrium —flash— calculations largely contribute to the total computation tim...
Recently, we proposed the XI method which combines the B3LYP/6-311+G(3df,2p)//B3LYP/6-311+G(d,p) met...
A methodology for predicting the standard enthalpy of formation of gas-phase molecules with high spe...
Machine learning provides promising new methods for accurate yet rapid prediction of molecular prope...
ARCAKLIOGLU, Erol/0000-0001-8073-5207WOS: 000183082500002Thermodynamic analysis of absorption therma...
Accurate thermochemistry estimation of polycyclic molecules is crucial for kinetic modeling of chemi...
Artificial neural networks (ANNs) are a method of machine learning (ML) that is now widely used in p...
The neural network correction approach that was previously proposed to achieve the chemical accuracy...
Vapor-liquid phase equilibrium (flash) calculations largely contribute to the total computation time...
This paper presents a new approach using artificial neural networks (ANN) to determine the thermodyn...