2020 Virtual AIChE Annual Meeting
(17d) State Estimation and Model Predictive Control of Nonlinear Processes Using Recurrent Neural Network Models
Authors
To address this issue, this work develops RNN-based state observer and MPC for nonlinear systems. A well-fitting RNN model is used to predict nonlinear processes dynamics. Dataset will be generated from extensive open-loop simulations within a predefined operation region to train and develop RNN model that will capture process dynamics for a general class of nonlinear systems. By using the measured states, the state observer will use the RNN model to estimate the unmeasured states. Afterward, the Lyapunov-based MPC (LMPC) that also utilizes the developed RNN models as the prediction model is developed to achieve closed-loop stability in terms of having the closed-loop system states to be bounded within the stability region for all times and eventually will converge to a small neighborhood around the origin. A chemical reactor example will be used to demonstrate the performance of the LMPC using RNN-based observer.
[1] Sontag, Eduardo D. "Neural nets as systems models and controllers." Proc. Seventh Yale Workshop on Adaptive and Learning Systems. 1992.
[2] Mohanty, S. Artificial neural network based system identification and model predictive control of a flotation column. J. Process Control, 2009, 19, 991â999.
[3] Wu, Z., A. Tran, D. Rincon and P. D. Christofides, "Machine Learning-Based Predictive Control of Nonlinear Processes. Part I: Theory,'' AIChE J., 65, e16729, 2019
[4] Bequette, B.W., Nonlinear control of chemical processes: A review. Industrial & Engineering Chemistry Research, 1991. 30(7): p. 1391-1413.