Global warming due to greenhouse effect has been considered as a serious problem for many years around the world. Among the different gases which cause greenhouse gas effect, carbon dioxide is of great difficulty by entering into the surrounding atmosphere. So CO2 capturing and separation especially by adsorption is one of the most interesting approaches because of the low equipment cost, ease of operation, simplicity of design, and low energy consumption. In this study, experimental results are presented for the adsorption equilibria of carbon dioxide on activated carbon. The adsorption equilibrium data for carbon dioxide were predicted with two commonly used isotherm models in order to compare with multi-layer feed-forward neural network (MLFNN) algorithm for a wide range of partial pressure. As a result, the ANN-based algorithm shows much better efficiency and accuracy than the Sips and Langmuir isotherms. In addition, the applicability of the Sips and Langmuir models are limited to isothermal conditions, even though the ANN-based algorithm is not restricted to the constant temperature condition. Consequently, it is proved that MLFNN algorithm is a promising model for calculation of CO2 adsorption density on activated carbon.
Journal article
Accurate estimation of CO2 adsorption on activated carbon withmulti-layer feed-forward neural network (MLFNN) algorithm
Egyptian Journal of Petroleum
2017
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Abstract
Details
- Title
- Accurate estimation of CO2 adsorption on activated carbon withmulti-layer feed-forward neural network (MLFNN) algorithm
- Creators
- Alireza Rostami - Islamic Azad UniversityMohammad Amin Anbaz - Petroleum University of TechnologyHamid RE Gahrooei - Petroleum University of TechnologyMilad Arabloo - Islamic Azad University, IranAlireza Bahadori - Southern Cross University
- Publication Details
- Egyptian Journal of Petroleum
- Identifiers
- 4418; 991012820673002368
- Academic Unit
- School of Environment, Science and Engineering; Faculty of Science and Engineering
- Resource Type
- Journal article