Robust reduced-order machine learning modeling of high-dimensional nonlinear processes using noisy data

被引:4
作者
Tan, Wallace Gian Yion [1 ]
Xiao, Ming [1 ]
Wu, Zhe [1 ]
机构
[1] Natl Univ Singapore, Dept Chem & Biomol Engn, Singapore 117585, Singapore
来源
DIGITAL CHEMICAL ENGINEERING | 2024年 / 11卷
关键词
Autoencoders; Lipschitz-constrained neural networks; SpectralDense layers; Reduced-order modeling; Model predictive control; Diffusion-reaction process; PREDICTIVE CONTROL; REDUCTION; IDENTIFICATION;
D O I
10.1016/j.dche.2024.100145
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Autoencoder-based reduced -order machine learning models have been developed for modeling and predictive control of nonlinear chemical processes with high dimensionality such as discretization of reaction-diffusion processes. However, in the presence of data noise, autoencoders may over -fit the training data and subsequently learn an inaccurate low -dimensional representation of the process variables. This leads to an inaccurate prediction model when the models are integrated with model predictive control (MPC). To address this issue, this work develops a novel machine -learning -based reduced -order modeling method by integrating SpectralDense layers into autoencoders and incorporating them with recurrent neural networks. We demonstrate that the new architecture of autoencoders using SpectralDense layers is more robust against over -fitting than conventional autoencoders in the presence of data noise, which improves the prediction accuracy in MPC. A diffusion- reaction process simulation example is used to demonstrate that the robust autoencoders outperform those using conventional layers for reduced -order modeling in predictive control.
引用
收藏
页数:13
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