Author:
Kharitonova O S,Bronskaya V V,Ignashina T V,Al-Muntaser Ameen A,Khairullina L E
Abstract
Abstract
An artificial neural multi-layer network has been developed for predicting the mass transfer coefficients in the liquid and gas phases for the gas absorption (CO2) from the air using an absorbent - water. For the development of neural network the unobservable parameters of the packed absorber were calculated. The obtained results can be used to model an extensive class of chemical engineering processes with the possibility of formalizing the calculation procedures.
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