A modular transfer learning approach for complex chemical process network modeling

被引:0
作者
Xiao, Ming [1 ]
Zhang, Haohao [1 ,2 ,3 ]
Vellayappan, Keerthana [1 ]
Gudena, Krishna [4 ]
Wu, Zhe [1 ]
机构
[1] Natl Univ Singapore, Dept Chem & Biomol Engn, Singapore 117585, Singapore
[2] Chinese Acad Sci, Inst Proc Engn, Key Lab Green Proc & Engn, Beijing 100190, Peoples R China
[3] Univ Chinese Acad Sci, Sch Chem Engn, Beijing 100049, Peoples R China
[4] GlaxoSmithKline Res & Dev Ltd, Proc Analyt, Drug Prod Dev, Jurong 628413, Singapore
关键词
Transfer learning; Modular learning; Meta learning; Neural network; Process modeling; Chemical process network; PREDICTIVE CONTROL;
D O I
10.1016/j.ces.2024.121087
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
Traditional first-principles modeling often struggles to capture complex interactions in chemical process networks, while machine learning methods require large datasets, which are often unavailable. To address these issues, we propose a modular transfer learning framework that integrates modules developed for individual processes into a global model for the entire process network. Three types of modules are used: black-box neural networks for processes with sufficient data, a foundation module based on the reptile method for data-limited cases, and a first- principles module for processes where the physicochemical phenomena are well understood. These modules are integrated using an aggregation module to capture the nonlinear dynamics and complex interactions within the process network. The effectiveness of the proposed approach is demonstrated on a polymer production process modeled in Aspen Plus Dynamics, where it significantly outperforms conventional fully-connected neural network models in accuracy, flexibility, and computational efficiency.
引用
收藏
页数:12
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