2022 Annual Meeting
(182e) Reduced-Order Modeling and Predictive Control of Nonlinear Processes Using Machine Learning
Authors
In this work, we develop an AE-based reduced-order ML modeling framework for nonlinear chemical processes, and incorporate the model into MPC to improve the computational efficiency [5]. Specifically, an autoencoder is first developed for model dimension reduction by projecting the process states into a low-dimensional space using the data generated from open-loop simulations of the nonlinear system in the original high-dimensional space. Subsequently, the AE model is integrated with recurrent neural network (RNN) to capture the dominant dynamics of the nonlinear system using the low-dimensional data. The AE-based reduced-order RNN models are then used in the Lyapunov-based MPC, under which closed-loop stability is proved. Finally, a diffusion-reaction process is used to illustrate the effectiveness of the autoencoder-assisted reduced-order machine learning-based predictive control scheme.
[1] Vaupel, Y., Hamacher, N. C., Casparo, A., Kevrekidis, I. G., and Mitsos, A. (2020). Accelerating nonlinear model predictive control through machine learning. Process Control, 92, 261-270.
[2] Wang, W., Zhao, M., and Wang, J. (2019). Effective android malware detection with a hybrid model based on deep autoencoder and convolutional neural network. Amb. Intell. Human. Comput., 10, 3035-3043.
[3] Ellis, M. J., and Chinde, V. (2020). An encoder-decoder LSTM-based EMPC framework applied to a building HVAC system. Chem. Eng. Res. Des., 160, 508-520.
[4] Qing, X., Song, J., Jin, J., and Zhao, S. (2021). Nonlinear model predictive control for distributed parameter systems by time-space-coupled model reduction. AIChE, 67, e17246.
[5] Zhao, T., Y. Zheng, J. Gong, and Z. Wu, (2022). Machine Learning-Based Reduced-Order Modeling and Predictive Control of Nonlinear Processes. Chem. Eng. Res. & Des., 179, 435-451, 2022.