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A model predictive formulation for control of open-loop unstable cascade systems
Authors:Deepak NagrathVinay Prasad  BWayne Bequette
Affiliation:Howard P. Isermann Department of Chemical Engineering, Rensselaer Polytechnic Institute, 110 Eighth Street, Troy, NY 12180-3590, USA
Abstract:Cascade control is commonly used in the operation of chemical processes to reject disturbances that have a rapid effect on a secondary measured state, before the primary measured variable is affected. In this paper, we develop a state estimation-based model predictive control approach that has the same general philosophy of cascade control (taking advantage of secondary measurements to aid disturbance rejection), with the additional advantage of the constraint handling capability of model predictive control (MPC). State estimation is achieved by using a Kalman filter and appending modeled disturbances as augmented states to the original system model. The example application is an open-loop unstable jacketed exothermic chemical reactor, where the jacket temperature is used as a secondary measurement in order to infer disturbances in jacket feed temperature and/or reactor feed flow rate. The MPC-based cascade strategy yields significantly better performance than classical cascade control when operating close to constraints on the jacket flow rate.
Keywords:Process control  Systems engineering  Optimization  Dynamic simulation  Model predictive control  Unstable cascade systems
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