2023 AIChE Annual Meeting
(377e) Transfer Learning-Based Modeling and Predictive Control of Nonlinear Process Network
Authors
In this work, a framework of transfer learning for modeling a target nonlinear process is developed by taking advantage of the knowledge learned in a different but similar source process. Specifically, transfer learning uses a pre-trained model developed based on a source domain as the starting point, and adapts the model to a target process with similar configurations. The generalization error for TL-based RNN (TL-RNN) is first derived to demonstrate the generalization capability on the target process. The theoretical error bound that depends on model capacity and the discrepancy between source and target domains is then utilized to guide the development of pre-trained models for improved model transferability. Subsequently, the TL-RNN model is utilized as the prediction model in model predictive controller for the target process. A simulation study of chemical reactors via Aspen Plus Dynamics is used to demonstrate the benefits of transfer learning Furthermore, to generalize the transfer learning method to a nonlinear process network, we integrate transfer learning with physics-informed machine learning methods to improve the overall prediction performance of the entire process network by incorporating domain knowledge such as process structural knowledge and the first-principles model into the training process. An example of multistage processes is used to illustrate the effectiveness of the proposed transfer learning strategy for chemical process networks.
References:
[1] Ren, Y. M., Alhajeri, M. S., Luo, J., Chen, S., Abdullah, F., Wu, Z., & Christofides, P. D. (2022). A tutorial review of neural network modeling approaches for model predictive control. Computers & Chemical Engineering, 107956.
[2] Jiang, J., Shu, Y., Wang, J., & Long, M. (2022). Transferability in deep learning: A survey. arXiv preprint arXiv:2201.05867.
[3] Neyshabur, B., Sedghi, H., & Zhang, C. (2020). What is being transferred in transfer learning?. Advances in neural information processing systems, 33, 512-523.
[4] Zhuang, F., Qi, Z., Duan, K., Xi, D., Zhu, Y., Zhu, H., Xiong, H. & He, Q. (2020). A comprehensive survey on transfer learning. Proceedings of the IEEE, 109(1), 43-76.
[5] Zhang, Y., Liu, T., Long, M., & Jordan, M. (2019, May). Bridging theory and algorithm for domain adaptation. In International conference on machine learning (pp. 7404-7413). PMLR.
[6] Karniadakis, G. E., Kevrekidis, I. G., Lu, L., Perdikaris, P., Wang, S., & Yang, L. (2021). Physics-informed machine learning. Nature Reviews Physics, 3(6), 422-440.