The present study focused on developing predictive neural networks and response surface methodology (RSM)-based model. In order to develop the predictive model, experimental data of CO2 capture by KOH-modified activated alumina was obtained through laboratory scale adsorption setup. Three independent input variables, including time (t: 0–1800 sec), initial temperature (Tin: 20–80 °C), and initial pressure (Pin:1.651–10.028 bar) of the reactor, were considered in the training process. Furthermore, CO2 adsorption capacity, and final pressure were considered as the output. The multilayer perceptron (MLP) and radial basis function (RBF) networks have been employed. The best corresponding optimized MLP network, out of all the 460 different struc...
This work examines the use of neural networks in modelling the adsorption process of gas mixtures (C...
In this work, response surface methodology (RSM) and artificial neural network (ANN) were used to pr...
Over the last years, extensive motivation has emerged towards the application of supercritical carbo...
Abstract Designing a model to connect CO2 adsorption data with various adsorbents based on graphene ...
Recent concerns about the greenhouse effect and climate change have been prominent worldwide. In thi...
Calcium-looping (CaL) is a promising cyclic process for CO2 capture based on the reversible chemical...
CO2 hydrogenation was optimized by a combination of AANs (Artificial Neuron Networks) with RSM (Resp...
Abstract Residual Oil Zones (ROZs) become potential formations for Carbon Capture, Utilization, and ...
We investigate the graph-based convolutional neural network approach for predicting and ranking gas ...
In the development of solid amine CO2 adsorbents, the CO2 adsorption performance of amine-functional...
The research is conducted to determine the best machine learning models that was developed using AN...
In this communication, carbon dioxide solubility in aqueous solutions of various absorbents (2-amino...
Global warming due to greenhouse effect has been considered as a serious problem for many years arou...
In the paper, we present a review of different types of CO2 capture, storage, transportation, and ut...
Increasing average temperature of the earth has significantly influenced human’s life that many effo...
This work examines the use of neural networks in modelling the adsorption process of gas mixtures (C...
In this work, response surface methodology (RSM) and artificial neural network (ANN) were used to pr...
Over the last years, extensive motivation has emerged towards the application of supercritical carbo...
Abstract Designing a model to connect CO2 adsorption data with various adsorbents based on graphene ...
Recent concerns about the greenhouse effect and climate change have been prominent worldwide. In thi...
Calcium-looping (CaL) is a promising cyclic process for CO2 capture based on the reversible chemical...
CO2 hydrogenation was optimized by a combination of AANs (Artificial Neuron Networks) with RSM (Resp...
Abstract Residual Oil Zones (ROZs) become potential formations for Carbon Capture, Utilization, and ...
We investigate the graph-based convolutional neural network approach for predicting and ranking gas ...
In the development of solid amine CO2 adsorbents, the CO2 adsorption performance of amine-functional...
The research is conducted to determine the best machine learning models that was developed using AN...
In this communication, carbon dioxide solubility in aqueous solutions of various absorbents (2-amino...
Global warming due to greenhouse effect has been considered as a serious problem for many years arou...
In the paper, we present a review of different types of CO2 capture, storage, transportation, and ut...
Increasing average temperature of the earth has significantly influenced human’s life that many effo...
This work examines the use of neural networks in modelling the adsorption process of gas mixtures (C...
In this work, response surface methodology (RSM) and artificial neural network (ANN) were used to pr...
Over the last years, extensive motivation has emerged towards the application of supercritical carbo...