Neural networks and differential evolution algorithm applied for modelling the depollution process of some gaseous streams

The depollution of some gaseous streams containing n-hexane is studied by adsorption in a fixed bed column, under dynamic conditions, using granular activated carbon and two types of non-functionalized hypercross-linked polymeric resins. In order to model the process, a new neuro-evolutionary approa...

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Published inEnvironmental science and pollution research international Vol. 21; no. 22; pp. 12856 - 12867
Main Authors Curteanu, Silvia, Suditu, Gabriel Dan, Buburuzan, Adela Marina, Dragoi, Elena Niculina
Format Journal Article
LanguageEnglish
Published Berlin/Heidelberg Springer-Verlag 01.11.2014
Springer Berlin Heidelberg
Springer Nature B.V
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ISSN0944-1344
1614-7499
1614-7499
DOI10.1007/s11356-014-3232-x

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Summary:The depollution of some gaseous streams containing n-hexane is studied by adsorption in a fixed bed column, under dynamic conditions, using granular activated carbon and two types of non-functionalized hypercross-linked polymeric resins. In order to model the process, a new neuro-evolutionary approach is proposed. It is a combination of a modified differential evolution (DE) with neural networks (NNs) and two local search algorithms, the global and local optimizers, working together to determine the optimal NN model. The main elements that characterize the applied variant of DE consist in using an opposition-based learning initialization, a simple self-adaptive procedure for the control parameters, and a modified mutation principle based on the fitness function as a criterion for reorganization. The results obtained prove that the proposed algorithm is able to determine a good model of the considered process, its performance being better than those of an available phenomenological model.
Bibliography:http://dx.doi.org/10.1007/s11356-014-3232-x
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ISSN:0944-1344
1614-7499
1614-7499
DOI:10.1007/s11356-014-3232-x