Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon

The paper analyses the use of four data mining methods (Support Vector Machines. Cascade Neural Networks. Random Forests and Boosted Trees) to predict sorption on activated carbons. The input data for statistical models included the activated carbon parameters, organic substances and equilibrium con...

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Main Authors: Dąbek Lidia, Szeląg Bartosz, Picheta-Oleś Anna
Format: Article
Language:English
Published: EDP Sciences 2017-01-01
Series:E3S Web of Conferences
Online Access:https://doi.org/10.1051/e3sconf/20172200032
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spelling doaj-36eff030c6d44f389071eff4c2448ae32021-08-11T14:28:28ZengEDP SciencesE3S Web of Conferences2267-12422017-01-01220003210.1051/e3sconf/20172200032e3sconf_asee2017_00032Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbonDąbek LidiaSzeląg BartoszPicheta-Oleś AnnaThe paper analyses the use of four data mining methods (Support Vector Machines. Cascade Neural Networks. Random Forests and Boosted Trees) to predict sorption on activated carbons. The input data for statistical models included the activated carbon parameters, organic substances and equilibrium concentrations in the solution. The assessment of the predictive abilities of the developed models was made with the use of mean absolute error (MAE), mean absolute percentage error (MAPE), and root mean squared error (RMSE). The computations proved that methods of data mining considered in the study can be applied to predict sorption of selected organic compounds 011 activated carbon. The lowest values of sorption prediction errors were obtained with the Cascade Neural Networks method (MAE = 1.23 g/g; MAPE = 7.90% and RMSE = 1.81 g/g), while the highest error values were produced by the Boosted Trees method (MAE=14.31 g/g; MAPE = 39.43% and RMSE = 27.76 g/g).https://doi.org/10.1051/e3sconf/20172200032
collection DOAJ
language English
format Article
sources DOAJ
author Dąbek Lidia
Szeląg Bartosz
Picheta-Oleś Anna
spellingShingle Dąbek Lidia
Szeląg Bartosz
Picheta-Oleś Anna
Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon
E3S Web of Conferences
author_facet Dąbek Lidia
Szeląg Bartosz
Picheta-Oleś Anna
author_sort Dąbek Lidia
title Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon
title_short Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon
title_full Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon
title_fullStr Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon
title_full_unstemmed Assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon
title_sort assessment of the possibility of using data mining methods to predict sorption isotherms of selected organic compounds on activated carbon
publisher EDP Sciences
series E3S Web of Conferences
issn 2267-1242
publishDate 2017-01-01
description The paper analyses the use of four data mining methods (Support Vector Machines. Cascade Neural Networks. Random Forests and Boosted Trees) to predict sorption on activated carbons. The input data for statistical models included the activated carbon parameters, organic substances and equilibrium concentrations in the solution. The assessment of the predictive abilities of the developed models was made with the use of mean absolute error (MAE), mean absolute percentage error (MAPE), and root mean squared error (RMSE). The computations proved that methods of data mining considered in the study can be applied to predict sorption of selected organic compounds 011 activated carbon. The lowest values of sorption prediction errors were obtained with the Cascade Neural Networks method (MAE = 1.23 g/g; MAPE = 7.90% and RMSE = 1.81 g/g), while the highest error values were produced by the Boosted Trees method (MAE=14.31 g/g; MAPE = 39.43% and RMSE = 27.76 g/g).
url https://doi.org/10.1051/e3sconf/20172200032
work_keys_str_mv AT dabeklidia assessmentofthepossibilityofusingdataminingmethodstopredictsorptionisothermsofselectedorganiccompoundsonactivatedcarbon
AT szelagbartosz assessmentofthepossibilityofusingdataminingmethodstopredictsorptionisothermsofselectedorganiccompoundsonactivatedcarbon
AT pichetaolesanna assessmentofthepossibilityofusingdataminingmethodstopredictsorptionisothermsofselectedorganiccompoundsonactivatedcarbon
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