The model-on-demand(MoD) framework was extended to the model predictive control(MPC) to design a multiple variable model-on-demand predictive controller(MoD-PC). This control algorithm was applied to the property control of polymer product in a contin...
The model-on-demand(MoD) framework was extended to the model predictive control(MPC) to design a multiple variable model-on-demand predictive controller(MoD-PC). This control algorithm was applied to the property control of polymer product in a continuous styrene polymerization reactor. For this purpose a local auto-regressive exogenous input(ARX) model was constructed with a small portion of data located in the region of interest at every sample time, With this model an output prediction equation was formulated to calculated the optimal control input sequence. Jacket inlet temperature and conversion were chosen as the elements of regressor state vector in data searching step. Simulation studies were conducted by applying the MoD-PC to MIMO control problems associated with the continuous styrene polymerization reactor. The control performance of the MoD-PC was then compared with that of a nonlinear MPC based on the polynomial auto-regressive moving average(ARMA) model for disturbance rejection as well as for setpoint-tracking. As a result, the Mod-PC was found to be an effective strategy for the production of polymers with desired properties.