Jc. Macmurray et Dm. Himmelblau, MODELING AND CONTROL OF A PACKED DISTILLATION COLUMN USING ARTIFICIALNEURAL NETWORKS, Computers & chemical engineering, 19(10), 1995, pp. 1077-1088
Artificial neural networks, because they are nets of basis functions,
can provide good empirical models of complex nonlinear processes that
are useful for many purposes including process control. The modelling
of a packed distillation column described here provides an interesting
example of complex modeling because the column exhibits a change in t
he sign of the gain under various operating conditions. We show how ar
tificial neural networks can model the column, and demonstrate that th
e network model is as good or better than a simplified first principle
s model when used for model predictive control.