001     1048793
005     20251202203138.0
024 7 _ |a 10.48550/ARXIV.2507.11640
|2 doi
037 _ _ |a FZJ-2025-04908
100 1 _ |a Trávníková, Veronika
|0 P:(DE-HGF)0
|b 0
245 _ _ |a Quantifying data needs in surrogate modeling for flow fields in two-dimensional stirred tanks with physics-informed neural networks
260 _ _ |c 2025
|b arXiv
336 7 _ |a Preprint
|b preprint
|m preprint
|0 PUB:(DE-HGF)25
|s 1764687908_30803
|2 PUB:(DE-HGF)
336 7 _ |a WORKING_PAPER
|2 ORCID
336 7 _ |a Electronic Article
|0 28
|2 EndNote
336 7 _ |a preprint
|2 DRIVER
336 7 _ |a ARTICLE
|2 BibTeX
336 7 _ |a Output Types/Working Paper
|2 DataCite
520 _ _ |a Stirred tanks are vital in chemical and biotechnological processes, particularly as bioreactors. Although computational fluid dynamics (CFD) is widely used to model the flow in stirred tanks, its high computational cost$-$especially in multi-query scenarios for process design and optimization$-$drives the need for efficient data-driven surrogate models. However, acquiring sufficiently large datasets can be costly. Physics-informed neural networks (PINNs) offer a promising solution to reduce data requirements while maintaining accuracy by embedding underlying physics into neural network (NN) training. This study quantifies the data requirements of vanilla PINNs for developing surrogate models of a flow field in a 2D stirred tank. We compare these requirements with classical supervised neural networks and boundary-informed neural networks (BINNs). Our findings demonstrate that surrogate models can achieve prediction errors around 3% across Reynolds numbers from 50 to 5000 using as few as six datapoints. Moreover, employing an approximation of the velocity profile in place of real data labels leads to prediction errors of around 2.5%. These results indicate that even with limited or approximate datasets, PINNs can be effectively trained to deliver high accuracy comparable to high-fidelity data.
536 _ _ |a 2172 - Utilization of renewable carbon and energy sources and engineering of ecosystem functions (POF4-217)
|0 G:(DE-HGF)POF4-2172
|c POF4-217
|f POF IV
|x 0
588 _ _ |a Dataset connected to DataCite
650 _ 7 |a Computational Engineering, Finance, and Science (cs.CE)
|2 Other
650 _ 7 |a FOS: Computer and information sciences
|2 Other
650 _ 7 |a 76-10, 68T07 (Primary) 76D05, 35Q68 (Secondary)
|2 Other
700 1 _ |a von Lieres, Eric
|0 P:(DE-Juel1)129081
|b 1
|u fzj
700 1 _ |a Behr, Marek
|0 P:(DE-HGF)0
|b 2
773 _ _ |a 10.48550/ARXIV.2507.11640
909 C O |o oai:juser.fz-juelich.de:1048793
|p VDB
910 1 _ |a Forschungszentrum Jülich
|0 I:(DE-588b)5008462-8
|k FZJ
|b 1
|6 P:(DE-Juel1)129081
913 1 _ |a DE-HGF
|b Forschungsbereich Erde und Umwelt
|l Erde im Wandel – Unsere Zukunft nachhaltig gestalten
|1 G:(DE-HGF)POF4-210
|0 G:(DE-HGF)POF4-217
|3 G:(DE-HGF)POF4
|2 G:(DE-HGF)POF4-200
|4 G:(DE-HGF)POF
|v Für eine nachhaltige Bio-Ökonomie – von Ressourcen zu Produkten
|9 G:(DE-HGF)POF4-2172
|x 0
914 1 _ |y 2025
920 1 _ |0 I:(DE-Juel1)IBG-1-20101118
|k IBG-1
|l Biotechnologie
|x 0
980 _ _ |a preprint
980 _ _ |a VDB
980 _ _ |a I:(DE-Juel1)IBG-1-20101118
980 _ _ |a UNRESTRICTED


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