A method for providing independent static and dynamic models in a prediction,
control
and optimization environment utilizes an independent static model (20) and
an independent dynamic model (22). The static model (20) is a rigorous
predictive model that is trained over a wide range of data, whereas the dynamic
model (22) is trained over a narrow range of data. The gain K of the static
model (20) is utilized to scale the gain k of the dynamic model (22).
The forced dynamic portion of the model (22) referred to as the bi
variables are scaled by the ratio of the gains K and k. The bi have
a direct effect on the gain of a dynamic model (22). This is facilitated
by a coefficient modification block (40). Thereafter, the difference between
the new value input to the static model (20) and the prior steady-state
value is utilized as an input to the dynamic model (22). The predicted dynamic
output is then summed with the previous steady-state value to provide a predicted
value Y. Additionally, the path that is traversed between steady-state value changes.