2019 AIChE Annual Meeting
(29c) Integration of Design, Scheduling, and Control of Batch Processes By Model Based Multiparametric Programming
Authors
In this work, we present a unified theory and framework to integrate the process design, scheduling, and control decisions based on a single high fidelity model. We develop explicit strategies for (i) multiparametric rolling horizon optimization (mpRHO) for middle term economical decisions as a function of closed-loop states and time-variant market conditions, and (ii) multiparametric model predictive control (mpMPC) to effectively track the set-points determined by the mpRHO . The offline nature of these operational strategies allows for their direct implementation in (i) the dynamic high-fidelity model of the batch process, as well as (ii) a mixed-integer dynamic optimization formulation for the optimal design configuration simultaneously with the scheduling and control problems [1]. The introduced framework will be demonstrated on a flowshop batch process with multiple end-products.
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