This paper describes a gray-box identification approach to three classes of
block-oriented models: Hammerstein models, Wiener models, and the feedback
block-oriented models introduced recently for modeling processes with outp
ut multiplicities. Here, we restrict consideration to processes with nonlin
ear steady-state characteristics that are known a priori and do not exhibit
steady-state multiplicities. Under this assumption, simple identification
procedures may be developed for all three of these model structures, which
may be viewed as three different ways of combining a single static nonlinea
rity with a linear dynamic model with specified steady-state gain constrain
ts. In particular, if the steady-stare gain of the linear dynamic model is
constrained to be I, the steady-state characteristic of the overall model i
s determined entirely by the static nonlinearity. If the steady-state chara
cteristic of the process is known, the nonlinear component of the model may
be determined from this knowledge, and the parameters of the linear model
may be estimated from input-output data. Detailed descriptions of simple le
ast squares solutions of this identification problem are presented, and the
approach is illustrated for a simple first-principles model of a distillat
ion column. (C) 2000 Elsevier Science Ltd. All rights reserved.