2020 Virtual AIChE Annual Meeting
(434a) Physics-Based Machine Learning Modeling for Model Predictive Control of Nonlinear Processes
Authors
In this work, we propose three modeling approaches: a hybrid model, a partially-connected RNN model, and a weight-constrained RNN model, to incorporate process physical knowledge into RNN modeling and training. The proposed physics-based RNN models that are developed for a general class of input-constrained nonlinear processes are then incorporated in the design of model predictive control (MPC) systems and of economic MPC (EMPC) systems to optimize process performance in terms of closed-loop stability and economic optimality, respectively. Through the application to an illustrative chemical process example, we demonstrate that improved closed-loop performances in terms of faster convergence to the steady-state under RNN-MPC and enhanced process economic profits under RNN-EMPC are achieved compared to the controllers using black-box (i.e., process structure unaware) RNN models.
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