CO2 hydrogenation was optimized by a combination of AANs (Artificial Neuron Networks) with RSM (Response Surface Methodology) in a microchannel reactor using a K-promoted iron-based catalyst. This robust and cost-effective methodology was reliable to extensively analyze the effect of operating conditions i.e. gas ratio, temperature, pressure, and space velocity on product distribution of selective CO2 hydrogenation. With experimental data as training data using ANNs and Box-Behnken design as design of experiment, the obtained model was able to present good results in a nonlinear noisy process with significant changes of critical operation parameters in an experimental design plan during CO2 hydrogenation using K-promoted iron-based catalyst...
This study investigates the applicability of the Leven–Marquardt algorithm, Bayesian regularization,...
The water gas shift reaction was studied in membrane reactors for training an artificial neural netw...
The objective of this research was to design a neural network (ANN) to predict the methanol flux at ...
CO2 hydrogenation was optimized by a combination of AANs (Artificial Neuron Networks) with RSM (Resp...
Hydrogen has diverse industrial applications namely in ammonia synthesis, petroleum refining and met...
A hybrid methodology of using lump kinetic and of AANs (Artificial Neuron Networks)/RSM (Response Su...
Herein, the production of biohydrogen by dark fermentation was optimized using a novel hybrid approa...
In this study, an experimental lab-scale copper-chlorine (Cu–Cl) cycle of hydrogen production is exa...
In this study, the application of artificial neural networks (ANN) for the modeling of hydrogen-rich...
A simple approach using hybrid artificial neural networks (ANNs)-response surface methodology (RSM) ...
This study investigates the feasibility of using artificial neural networks (ANNs) to predict cataly...
Hydrogen (H2) is a clean fuel that can be produced from various resources including biomass. Optimiz...
Abstract The modeling of hydrocarbon selectivity and CO conversion of the Fischer–Tropsch synthesis ...
In this work, we use surrogate models to accelerate the optimization of an adsorption process for H2...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
This study investigates the applicability of the Leven–Marquardt algorithm, Bayesian regularization,...
The water gas shift reaction was studied in membrane reactors for training an artificial neural netw...
The objective of this research was to design a neural network (ANN) to predict the methanol flux at ...
CO2 hydrogenation was optimized by a combination of AANs (Artificial Neuron Networks) with RSM (Resp...
Hydrogen has diverse industrial applications namely in ammonia synthesis, petroleum refining and met...
A hybrid methodology of using lump kinetic and of AANs (Artificial Neuron Networks)/RSM (Response Su...
Herein, the production of biohydrogen by dark fermentation was optimized using a novel hybrid approa...
In this study, an experimental lab-scale copper-chlorine (Cu–Cl) cycle of hydrogen production is exa...
In this study, the application of artificial neural networks (ANN) for the modeling of hydrogen-rich...
A simple approach using hybrid artificial neural networks (ANNs)-response surface methodology (RSM) ...
This study investigates the feasibility of using artificial neural networks (ANNs) to predict cataly...
Hydrogen (H2) is a clean fuel that can be produced from various resources including biomass. Optimiz...
Abstract The modeling of hydrocarbon selectivity and CO conversion of the Fischer–Tropsch synthesis ...
In this work, we use surrogate models to accelerate the optimization of an adsorption process for H2...
The optimal operation of chemical processes provides the foundation for optimization problems to det...
This study investigates the applicability of the Leven–Marquardt algorithm, Bayesian regularization,...
The water gas shift reaction was studied in membrane reactors for training an artificial neural netw...
The objective of this research was to design a neural network (ANN) to predict the methanol flux at ...