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Geometric optimization of two-stage stamping dies for ultra-thin titanium bipolar plates using Sequential Physics-Informed Neural Networks

creativeworkseries.issn2720-4081
dc.contributor.authorKe, Zijie
dc.contributor.authorHuang, Yiwen
dc.contributor.authorGuo, Ziqiang
dc.contributor.authorXiao, Yao
dc.contributor.authorHou, Zeran
dc.contributor.authorMin, Junying
dc.date.issued2026
dc.description.abstractBipolar plates are critical core components in proton exchange membrane fuel cells (PEMFCs). Titanium-based materials are highly favored due to their excellent corrosion resistance and high specific strength. However, the plates often experience severe local thinning and poor consistency in forming dimensions during the two-stage stamping process. Although traditional finite element method (FEM) optimization can mitigate these defects, it comes with high computational costs and time consumption. This study proposes a die design optimization framework based on the Sequential Physics-Informed Neural Network (S-PINN). Unlike traditional single-layer neural network models, S-PINN adopts a sequential architecture that effectively maps the two-stage forming process of the plates. This architecture can explicitly predict the evolution of forming quality from the pre-forming stage to the final stage. By embedding the core physical laws of plastic deformation into the network loss function, the S-PINN model effectively predicts the complex nonlinear relationship between mold geometry and forming quality, while ensuring physical consistency. Experimental and simulation results show that the S-PINN model’s prediction accuracy for dimensional consistency (DC) is 73.8% higher than that of the PINN model and 33.9% higher than that of the S-ANN model. Compared with traditional modeling methods, the S-PINN-optimized die design can reduce the thinning rate and improve channel dimensional consistency.en
dc.description.placeOfPublicationKraków
dc.description.versionwersja wydawnicza
dc.identifier.doihttps://doi.org/10.7494/cmms.2026.1.1038
dc.identifier.eissn2720-3948
dc.identifier.issn2720-4081
dc.identifier.urihttps://repo.agh.edu.pl/handle/AGH/117707
dc.language.isoeng
dc.publisherWydawnictwa AGH
dc.relation.ispartofComputer Methods in Materials Science
dc.rightsAttribution 4.0 International
dc.rights.accessotwarty dostęp
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/legalcode
dc.subjectSequential Physics-Informed Neural Networken
dc.subjectultra-thin titanium sheeten
dc.subjecttwo-stage formingen
dc.subjectdie shape optimizationen
dc.subjectthinning rateen
dc.subjectdimensional consistencyen
dc.titleGeometric optimization of two-stage stamping dies for ultra-thin titanium bipolar plates using Sequential Physics-Informed Neural Networksen
dc.typeartykuł
dspace.entity.typePublication
publicationissue.issueNumberNo. 1
publicationissue.paginationpp. 23-42
publicationvolume.volumeNumberVol. 26
relation.isJournalIssueOfPublication5b6bb3a2-8ce5-43f5-b500-59d1fa674d56
relation.isJournalIssueOfPublication.latestForDiscovery5b6bb3a2-8ce5-43f5-b500-59d1fa674d56
relation.isJournalOfPublication1f717eff-e164-4db5-8437-ca75e714cac5

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