2018 AIChE Annual Meeting
(681c) Towards on-Line Development of Physically-Based Models for Model-Based Control Design
Authors
Inspired by traditional experimentation techniques, which develop methods for obtaining very targeted data in an experimental setting, we seek to exploit the flexibility of the structure of EMPC and the closed-loop stability properties of EMPC designs with certain stability constraints (e.g., Lyapunov-based stability constraints [4]) to develop controllers with hard and soft constraints related to data which it is desired to gather from an on-line process for short periods of time. We explore formulations in which the controller objective function is augmented with terms that can be used in some sampling periods and not in others and which penalize the deviations of the closed-loop state from desired values to seek to obtain data with those desired values for short periods of time. We also explore formulations that enforce the data-gathering functionality through hard constraints on the state with and without feasibility guarantees and discuss some of the benefits and difficulties associated with utilizing such data-gathering EMPCâs in a distributed architecture. An implementation strategy is developed that allows an initial EMPC design with a quadratic objective function and linear empirical model to be used before a more physics-based process model is developed from the data obtained during operation under this initial EMPC augmented with the data-gathering functionality. A benchmark continuous stirred tank reactor chemical process example demonstrates the developments.
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