Gr. Sriniwas et al., NONLINEAR IDENTIFICATION AND CONTROL OF A HIGH-PURITY DISTILLATION COLUMN - A CASE-STUDY, Journal of process control, 5(3), 1995, pp. 149-162
Citations number
18
Categorie Soggetti
Engineering, Chemical","Robotics & Automatic Control
Identification and control of ill-conditioned, interactive and highly
nonlinear processes pose a challenging problem to the process industry
. In the absence of a reasonably accurate model, these processes are f
airly difficult to control. Using a high-purity distillation column as
an example, model identification and control issues are addressed in
this paper. The structure of the identified models is that of the poly
nomial type nonlinear autoregressive models with exogenous inputs (NAR
X). While most of the work in this area has concentrated on linear mod
els (one-time scale and two-time scale models), this work is aimed at
identifying the inherent nonlinearities. Comparisons are drawn between
the identified models based on statistical criteria (AIC etc.) and ot
her validation tests. Simulation results are provided to demonstrate t
he closed-loop performance of the nonlinear ARX models in the control
of the distillation column. The controller employed is based on a nonl
inear model predictive scheme with state and parameter estimation.