Peer-Reviewed Journal Details
Mandatory Fields
Ní Mhurchú J.;Foley G.;Josef H.
2010
August
Chemical Engineering Communications
Modeling process dynamics using a novel neural network architecture: Application to stirred cell microfiltration
Published
1 ()
Optional Fields
Artificial neural network Dynamic modeling Flux Fouling Stirred cell microfiltration
197
8
1152
1162
A novel neural network architecture is presented for dynamic process modeling, using stirred cell microfiltration of bentonite suspensions as a model system. Unlike previous studies that include time explicitly as a network input and have a single out-put at that time, the network architecture presented contains the process variables as inputs and many outputs representing the output (filtrate flux in this case) at different selected times. The network is shown to represent the stirred cell microfiltration of bentonite suspensions over a range of pressures (0.2-1.5 bar), initial concentra-tions (0.5-2.0g=L), stirrer tip speeds (0.04-0.17 m=s), membrane resistances (3.09 × 1010-6.85 × 1010 m1), pH values (2.5-10.4), and temperatures (20°-24°C) with good accuracy (R2 = 0.91 on network test data). With this network architecture, it becomes easy to track the time dependence of the relative effect of the various process parameters on the system output. Thus, for example, the network weights show that the effect of stirring rate on flux increases as time progresses, while the opposite effect is seen for membrane resistance, as expected. © Taylor & Francis Group, LLC.
0098-6445
10.1080/00986440903359442
Grant Details