Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide

Solubility of CO2 in brine is one of the contributing trapping mechanisms by which the injected CO2 is sequestrated in aquifers. In the literature, the solubility data on low salinity range are scarce. Thus, in the current study, the CO2 solubility was experimentally obtained in the NaCl brines of l...

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Published in:Environmental Earth Sciences
Main Author: Mohammadian E.; Motamedi S.; Shamshirband S.; Hashim R.; Junin R.; Roy C.; Azdarpour A.
Format: Article
Language:English
Published: Springer Verlag 2016
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-84955498794&doi=10.1007%2fs12665-015-4798-4&partnerID=40&md5=e04c6e0c8434e32cfcf4df49f1d4cfdb
id 2-s2.0-84955498794
spelling 2-s2.0-84955498794
Mohammadian E.; Motamedi S.; Shamshirband S.; Hashim R.; Junin R.; Roy C.; Azdarpour A.
Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
2016
Environmental Earth Sciences
75
3
10.1007/s12665-015-4798-4
https://www.scopus.com/inward/record.uri?eid=2-s2.0-84955498794&doi=10.1007%2fs12665-015-4798-4&partnerID=40&md5=e04c6e0c8434e32cfcf4df49f1d4cfdb
Solubility of CO2 in brine is one of the contributing trapping mechanisms by which the injected CO2 is sequestrated in aquifers. In the literature, the solubility data on low salinity range are scarce. Thus, in the current study, the CO2 solubility was experimentally obtained in the NaCl brines of low salinity (0–1.5 wt%) at temperature of 333–373 K and pressures up to 280 MPa through the potentiometric titration methods. The short-term, multistep ahead predictive models of aqueous solubility of carbon dioxide were created. The models were developed using a novel method based on the extreme learning machine (ELM). Estimation and prediction results of the ELM model were compared with the genetic programming (GP) and artificial neural networks (ANNs) models. The results revealed enhancement of the predictive accuracy and generalization capability through the ELM method in comparison with the GP and ANN. Moreover, the results indicate that the developed ELM models can be used with confidence for further work on formulating a novel model predictive strategy for the aqueous solubility of carbon dioxide. The experimental results hinted that the current algorithm can present good generalization performance in the majority of cases. Moreover, in comparison with the conventional well-known learning algorithms, it can learn thousands of times faster. In conclusion, it is conclusively found that application of the ELM is particularly promising as an alternative method to estimate the aqueous solubility of carbon dioxide. © 2015, Springer-Verlag Berlin Heidelberg.
Springer Verlag
18666280
English
Article

author Mohammadian E.; Motamedi S.; Shamshirband S.; Hashim R.; Junin R.; Roy C.; Azdarpour A.
spellingShingle Mohammadian E.; Motamedi S.; Shamshirband S.; Hashim R.; Junin R.; Roy C.; Azdarpour A.
Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
author_facet Mohammadian E.; Motamedi S.; Shamshirband S.; Hashim R.; Junin R.; Roy C.; Azdarpour A.
author_sort Mohammadian E.; Motamedi S.; Shamshirband S.; Hashim R.; Junin R.; Roy C.; Azdarpour A.
title Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
title_short Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
title_full Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
title_fullStr Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
title_full_unstemmed Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
title_sort Application of extreme learning machine for prediction of aqueous solubility of carbon dioxide
publishDate 2016
container_title Environmental Earth Sciences
container_volume 75
container_issue 3
doi_str_mv 10.1007/s12665-015-4798-4
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-84955498794&doi=10.1007%2fs12665-015-4798-4&partnerID=40&md5=e04c6e0c8434e32cfcf4df49f1d4cfdb
description Solubility of CO2 in brine is one of the contributing trapping mechanisms by which the injected CO2 is sequestrated in aquifers. In the literature, the solubility data on low salinity range are scarce. Thus, in the current study, the CO2 solubility was experimentally obtained in the NaCl brines of low salinity (0–1.5 wt%) at temperature of 333–373 K and pressures up to 280 MPa through the potentiometric titration methods. The short-term, multistep ahead predictive models of aqueous solubility of carbon dioxide were created. The models were developed using a novel method based on the extreme learning machine (ELM). Estimation and prediction results of the ELM model were compared with the genetic programming (GP) and artificial neural networks (ANNs) models. The results revealed enhancement of the predictive accuracy and generalization capability through the ELM method in comparison with the GP and ANN. Moreover, the results indicate that the developed ELM models can be used with confidence for further work on formulating a novel model predictive strategy for the aqueous solubility of carbon dioxide. The experimental results hinted that the current algorithm can present good generalization performance in the majority of cases. Moreover, in comparison with the conventional well-known learning algorithms, it can learn thousands of times faster. In conclusion, it is conclusively found that application of the ELM is particularly promising as an alternative method to estimate the aqueous solubility of carbon dioxide. © 2015, Springer-Verlag Berlin Heidelberg.
publisher Springer Verlag
issn 18666280
language English
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