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On the use of physics-based constraints and validation KPI for data-driven elastoplastic constitutive modelling

dc.contributor.authorLourenço, Rúben
dc.contributor.authorTariq, Aiman
dc.contributor.authorGeorgieva, Petia
dc.contributor.authorAndrade-Campos A.
dc.contributor.authorDeliktaş, Babür
dc.contributor.buuauthorDELİKTAŞ, BABÜR
dc.contributor.buuauthorTariq, Aiman
dc.contributor.departmentMühendislik Fakültesi
dc.contributor.departmentİnşaat Mühendisliği Bölümü
dc.contributor.orcid0000-0003-0369-9091
dc.contributor.scopusid58761995900
dc.date.accessioned2025-05-12T22:10:21Z
dc.date.issued2025-03-15
dc.description.abstractConstitutive modelling based on machine learning (ML) approaches has surged in the last couple of decades due to novel and more robust model architectures and computational power. The dependency of these models on large amounts of training data can be mitigated by imposing some phenomenological knowledge as constraints, which also helps maintain the quality of learning. This paper highlights the importance of physics-based constraints in elastoplastic data-driven constitutive modelling and focuses on model validation methods. Specifically, seven constraints applied to elastoplastic behaviour are identified that can be used during the model training process. To study the effects of these constraints, a set of recurrent neural network (RNN) models is trained using data from virtual mechanical experiments, based on a biaxial cruciform specimen. The models’ ability to accurately learn and predict the fundamental constitutive behaviour is then assessed using the different validation checkpoints, which include (i) statistical metrics, (ii) tests on previously unseen data, from virtual experiments based on different heterogeneous mechanical specimens, (iii) external key performance indicators (KPI) and (iv) single-element finite element analysis (FEA) tests. It was observed that the benefits of adding constraints to the training process were three-fold, resulting in (i) improved model predictive capacity, as well as (ii) enhanced extrapolation capabilities when tested on different mechanical specimens and (iii) overall improved training speed and stability. The use of independent validation KPI for data-driven constitutive modelling is highlighted and suggested as standard practice in future researches in the field.
dc.identifier.doi10.1016/j.cma.2025.117743
dc.identifier.issn0045-7825
dc.identifier.scopus2-s2.0-85215400081
dc.identifier.urihttps://hdl.handle.net/11452/51176
dc.identifier.volume437
dc.indexed.scopusScopus
dc.language.isoen
dc.publisherElsevier
dc.relation.bapFGA-2022-1211
dc.relation.journalComputer Methods in Applied Mechanics and Engineering
dc.rightsinfo:eu-repo/semantics/openAccess
dc.subjectValidation
dc.subjectRecurrent neural networks
dc.subjectPhysics-informed
dc.subjectModel quality KPI
dc.subjectElastoplasticity
dc.subjectData-driven constitutive model
dc.subjectConstraints
dc.subject.scopusData-Driven Neural Networks for Material Behavior Modeling
dc.titleOn the use of physics-based constraints and validation KPI for data-driven elastoplastic constitutive modelling
dc.typeArticle
dspace.entity.typePublication
local.contributor.departmentMühendislik Fakültesi/İnşaat Mühendisliği Bölümü
relation.isAuthorOfPublication61c4d3a5-cfbe-45da-969f-1a074b57717e
relation.isAuthorOfPublication.latestForDiscovery61c4d3a5-cfbe-45da-969f-1a074b57717e

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