2023 AIChE Annual Meeting
(317h) Nonlinear Model Predictive Control with Online Model Re-Identification for Improved Process Sustainability
Specifically, the proposed framework is based on a Model Predictive Control (MPC) method with online system re-identification. The nonlinear system re-identification procedure generates a Gaussian process (GP) model to be coupled with MPC as the predictive model. The proposed structure re-identifies the process model using GP with the nonlinear autoregressive with exogenous input regression (NARX) technique [1] when model prediction capabilities are lacking. To activate the model re-identification, two triggers are considered. The first trigger activates an evolving re-identification that takes place when the model prediction is no longer accurate given by the standard deviation of the GP model around the current operating region [2]. In parallel, the second trigger is activated based on the integrated error between the overall process behavior and model prediction. As results from the first or second triggers, a point is added to the dataset to be re-identified, or a new dataset is used for re-identification, respectively.
To demonstrate the framework, a fermentation reactor to produce bioethanol [3,4] is considered. In this process, the ethanol concentration is controlled while monitoring the sustainability of the process using GREENSCOPE indicators [5] based on economic, efficiency, environmental, energy use, and social impact measures. As the process has multiple steady states [5], the sustainability index is employed to drive the process control to the optimal steady state in conjunction with system re-identification for stable and sustainable operations around the selected steady state.
[1] Kocijan, J. (2016). Modelling and control of dynamic systems using Gaussian process models (pp. 33-38). Cham: Springer International Publishing.
[2] Maiworm M., Limon D., Findeisen R. Online learning-based model predictive control with Gaussian process models and stability guarantees. Int J Robust Nonlinear Control. 2021;31:8785â8812. https://doi.org/10.1002/rnc.5361.
[3] Li S., Mirlekar G., Ruiz-Mercado G.J., Lima F.V. Development of chemical process design and control for sustainability. Processes. 2016 Jul 25;4(3):23.
[4] Lima, F.V.; Li, S.; Mirlekar, G.V.; Sridhar, L.N.; Ruiz-Mercado, G.J. Modeling and Advanced Control for Sustainable Process Systems. In Sustainability in the Design, Synthesis and Analysis of Chemical Engineering Processes; Ruiz-Mercado, G.J., Cabezas, H., Eds.; Elsevier: Cambridge, MA, USA, 2016.
[5] Smith, R.L.; Ruiz-Mercado, G.J.; Gonzalez, M.A. Using Greenscope Indicators for Sustainable Computer-Aided Process Evaluation and Design. Comput. Chem. Eng. 2015, 81, 272â277.