Prediction of the gas–liquid volumetric mass transfer coefficients in surface-aeration and gas-inducing reactors using neural networks

Autor: Badie I. Morsi, Benoit Fillion, Romain Lemoine, Alice E. Smith, Arsam Behkish
Rok vydání: 2003
Předmět:
Zdroj: Chemical Engineering and Processing: Process Intensification. 42:621-643
ISSN: 0255-2701
DOI: 10.1016/s0255-2701(02)00211-8
Popis: Almost all available literature correlations to predict the volumetric gas–liquid mass transfer coefficient, kLa in agitated reactors are systems- or operating conditions-dependent. In this study, two back-propagation neural networks (BPNNs), one dimensional and one dimensionless were developed to correlate kLa for numerous gas–liquid systems in both surface-aeration reactors (SAR) and gas-inducing reactors (GIR) operating under wide ranges of industrial conditions. A total of 4435 experimental data points obtained from more than 10 publications for 50 gas–liquid systems were used to train, validate the dimensional and dimensionless BPNNs, which were able to correlate all kLa values with R2 of 90.5 and 88.6%, respectively. The dimensional BPNN was used to predict the effect of various operating parameters on kLa in a number of important industrial processes. The predictions showed that increasing liquid viscosity decreased kLa values in the SAR, while kLa values in the GIR increased and then decreased with increasing liquid viscosity, following the gas holdup behavior. Increasing liquid density decreased kLa in both reactor types. Increasing liquid surface tension increased kLa values in the SAR, whereas in the GIR, kLa decreased due to the increase of bubble size. Increasing gas diffusivity or gas partial pressure or mixing speed, increased kLa in both reactor types. kLa values in the GIR were always higher than those in the SAR and increasing DImp./DT and HF/HL increased kLa in both reactor types.
Databáze: OpenAIRE