A neural network model as a macroscopic model is proposed to estimate the i
mpurity and yield of fractionated BSA monomer in gel filtration chromatogra
phy (GFC) when the viscosity of an injected bovine serum is high and its vo
lume is large. In the neural network model, input variables, i.e. the parti
tion coefficient of BSA, the injection interval, and the fractionation time
coefficient, are selected referring to physical models published.
The trained network model shows sufficient predictive performance and appli
cability when data points are estimated by interpolation. Furthermore, it i
s seen that the sensitivity of output variables to the injection interval a
nd the fractionation time coefficient can be easily estimated using the mod
el. Consequently the neural network model is found useful enough to easily
predict the results of changing the operation, especially when a large inje
ction volume of a viscous sample causes nonlinear and unstable behavior in
the GFC fractionation process.