화학공학소재연구정보센터
Canadian Journal of Chemical Engineering, Vol.73, No.6, 808-816, 1995
Modeling of Induced Aeration in Turbine Aerators by Use of Radial Basis Function Neural Networks
Gas induction in agitated vessels with turbine impellers can be modelled accurately by means of radial basis function neural nets. The results obtained with the radial basis neural net were significantly better than those obtained by multivariate regression models or standard back propagation neural nets. Moreover, by using the radial basis function neural net model, it was possible to conduct a sensitivity analysis of the variables affecting aeration. Increased medium density showed a strong adverse effect, while variation of the viscosity can cause an increase or a decrease in the rate of aeration, depending on the prevailing process conditions.