Proceedings of ESCAPE 35ISSN: 2818-4734
Volume: 4 (2025)
Table of Contents
LAPSE:2025.0157
Published Article
LAPSE:2025.0157
Transferring Graph Neural Networks for Soft Sensor Modeling using Process Topologies
M.F. Theisen, G.M.H. Meesters, A.M. Schweidtmann
June 27, 2025
Abstract
Data-driven soft sensors help in process operations by providing real-time estimates of otherwise hard to measure process quantities, e.g., viscosities or product concentrations. Currently, soft sensors need to be developed individually per plant. Using transfer learning, machine learning based soft sensors could be re-used and fine-tuned across plants and applications. However, transferring data-driven soft sensor models is in practice often not possible, because the fixed input structure of standard soft sensor models prohibits transfer if, e.g., the sensor information is not identical in all plants. We propose a topology-aware graph neural network approach for transfer learning of soft sensor models across multiple plants. In our method, plants are modeled as graphs: Unit operations are nodes, streams are edges, and sensors are embedded as attributes. Our approach brings two advantages for transfer learning: First, we not only include sensor data but also crucial information on the plant topology. Second, the graph neural network algorithm is flexible with respect to its sensor inputs. This allows us to model data from different plants with different sensor networks. We test the transfer learning capabilities of our modeling approach on ammonia synthesis loops with different process topologies [1]. We build a soft sensor predicting the ammonia concentration in the product. After training on data from one process, we successfully transfer our soft sensor model to a previously unseen process with a different topology. Our approach promises to extend the data-driven soft sensors to cases to leverage data from multiple plants.
Keywords
Data-driven modeling, Digital twins, Transfer learning
Suggested Citation
Theisen M, Meesters G, Schweidtmann A. Transferring Graph Neural Networks for Soft Sensor Modeling using Process Topologies. Systems and Control Transactions 4:40-45 (2025) https://doi.org/10.69997/sct.185977
Author Affiliations
Theisen M: Process Intelligence Research Group, Department of Chemical Engineering, Delft University of Technology, Van der Maasweg 9, Delft 2629 HZ, The Netherlands
Meesters G: Product and Process Engineering, Department of Chemical Engineering, Delft University of Technology, Van der Maasweg 9, Delft 2629 HZ, The Netherlands
Schweidtmann A: Process Intelligence Research Group, Department of Chemical Engineering, Delft University of Technology, Van der Maasweg 9, Delft 2629 HZ, The Netherlands
Journal Name
Systems and Control Transactions
Volume
4
First Page
40
Last Page
45
Year
2025
Publication Date
2025-07-01
Version Comments
Original Submission
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PII: 0040-0045-1169-SCT-4-2025, Publication Type: Journal Article
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LAPSE:2025.0157
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References Cited
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