Robust smart schemes for modeling carbon dioxide uptake in metal - organic frameworks
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- @Article{NAITAMAR:2022:Fuel,
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author = "Menad {Nait Amar} and Hocine Ouaer and
Mohammed {Abdelfetah Ghriga}",
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title = "Robust smart schemes for modeling carbon dioxide
uptake in metal - organic frameworks",
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journal = "Fuel",
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volume = "311",
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pages = "122545",
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year = "2022",
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ISSN = "0016-2361",
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DOI = "doi:10.1016/j.fuel.2021.122545",
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URL = "https://www.sciencedirect.com/science/article/pii/S0016236121024145",
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keywords = "genetic algorithms, genetic programming, CO, Carbon
capture, Metal-organic frameworks (MOFs), Modeling,
Machine learning",
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abstract = "The emission of greenhouse gases such as carbon
dioxide (CO2) is considered the most acute issue of the
21st century around the globe. Due to this fact,
significant efforts have been made to develop rigorous
techniques for reducing the amount of CO2 in the
atmosphere. Adsorption of CO2 in metal-organic
frameworks (MOFs) is one of the efficient technologies
for mitigating the high levels of emitted CO2. The main
aim of this study is to examine the aptitudes of four
advanced intelligent models, including multilayer
perceptron (MLP) optimized with Levenberg-Marquardt
(MLP-LMA) and Bayesian Regularization (MLP-BR), extreme
learning machine (ELM), and genetic programming (GP) in
predicting CO2 uptake in MOFs. A sufficiently
widespread source of data was used from literature,
including more than 500 measurements of CO2 uptake in13
MOFs with various pressures at two temperature values.
The results showed that the implemented intelligent
paradigms provide accurate estimations of CO2 uptake in
MOFs. Besides, error analyses and comparison of the
prediction performance revealed that the MLP-LMA model
outperformed the other intelligent models and the prior
paradigms in the literature. Moreover, the MLP-LMA
model yielded an overall coefficient of determination
(R2) of 0.9998 and average absolute relative deviation
(AARD) of 0.9205percent. Finally, the trend analysis
confirmed the high integrity of the MLP-LMA model in
prognosticating CO2 uptake in MOFs, and its predictions
overlapped perfectly the measured values with changes
in pressure and temperature",
- }
Genetic Programming entries for
Menad Nait Amar
Hocine Ouaer
Mohammed Abdelfetah Ghriga
Citations