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dc.contributor.authorWang, Genmenges-ES
dc.contributor.authorChalard, Remies-ES
dc.contributor.authorCifuentes Quintero, Jenny Alexandraes-ES
dc.contributor.authorPham, Minh Tues-ES
dc.date.accessioned2026-05-19T04:27:28Z
dc.date.available2026-05-19T04:27:28Z
dc.date.issued2026-12-31es_ES
dc.identifier.issn2296-9144es_ES
dc.identifier.urihttps://doi.org/10.3389/frobt.2026.1769141es_ES
dc.identifier.urihttp://hdl.handle.net/11531/110132
dc.descriptionArtículos en revistases_ES
dc.description.abstractRecent advances in foundation models and physics-informed neural networks have demonstrated remarkable generalization and adaptation capabilities across diverse domains. Inspired by these properties, we investigate the adaptation potential of a previously proposed physics-informed hybrid model (PIHM) designed for pneumatic artificial muscles (PAMs). Through a series of experiments, it is demonstrated that, by incorporating an adapter based on physical prior knowledge, the PIHM model can be fine-tuned to transfer across different entity types while significantly reducing training time and maintaining competitive accuracy. The optimization efficiency of the proposed adapter has also been validated through comparison with other transfer learning techniques, such as full fine-tuning (FFT), partial fine-tuning (PFT), and low-rank adaptation (LoRA). These results suggest that embedding structured prior knowledge within hybrid architectures offers a promising solution for fast adaptation of PIHMs in dynamic system modeling.es-ES
dc.description.abstractRecent advances in foundation models and physics-informed neural networks have demonstrated remarkable generalization and adaptation capabilities across diverse domains. Inspired by these properties, we investigate the adaptation potential of a previously proposed physics-informed hybrid model (PIHM) designed for pneumatic artificial muscles (PAMs). Through a series of experiments, it is demonstrated that, by incorporating an adapter based on physical prior knowledge, the PIHM model can be fine-tuned to transfer across different entity types while significantly reducing training time and maintaining competitive accuracy. The optimization efficiency of the proposed adapter has also been validated through comparison with other transfer learning techniques, such as full fine-tuning (FFT), partial fine-tuning (PFT), and low-rank adaptation (LoRA). These results suggest that embedding structured prior knowledge within hybrid architectures offers a promising solution for fast adaptation of PIHMs in dynamic system modeling.en-GB
dc.language.isoen-GBes_ES
dc.sourceRevista: Frontiers in Robotics and AI, Periodo: 1, Volumen: online, Número: , Página inicial: 1769141-1, Página final: 1769141-11es_ES
dc.subject.otherInstituto de Investigación Tecnológica (IIT) - Innovación docente y Analytics (GIIDA)es_ES
dc.titleFast adaptation of physics-informed hybrid models for pneumatic artificial muscleses_ES
dc.typeinfo:eu-repo/semantics/articlees_ES
dc.description.versioninfo:eu-repo/semantics/publishedVersiones_ES
dc.rights.holderes_ES
dc.rights.accessRightsinfo:eu-repo/semantics/openAccesses_ES
dc.keywordsfine-tuning, foundation model, model adaptation, physics-informed neural networks, pneumatic artificial muscles, transfer learninges-ES
dc.keywordsfine-tuning, foundation model, model adaptation, physics-informed neural networks, pneumatic artificial muscles, transfer learningen-GB


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