A Physics-Guided Neural Operator Learning Approach to Model Biological Tissues from Digital Image Correlation Measurements

dc.contributor.author You, Huaiqian
dc.contributor.author Zhang, Quinn
dc.contributor.author Ross, Colton
dc.contributor.author Lee, Chung-Hao
dc.contributor.author Hsu, Ming-Chen
dc.contributor.author Yu, Yue
dc.contributor.department Mechanical Engineering
dc.date.accessioned 2022-04-15T17:38:17Z
dc.date.available 2022-04-15T17:38:17Z
dc.date.issued 2022-04-01
dc.description.abstract We present a data-driven workflow to biological tissue modeling, which aims to predict the displacement field based on digital image correlation (DIC) measurements under unseen loading scenarios, without postulating a specific constitutive model form nor possessing knowledges on the material microstructure. To this end, a material database is constructed from the DIC displacement tracking measurements of multiple biaxial stretching protocols on a porcine tricuspid valve anterior leaflet, with which we build a neural operator learning model. The material response is modeled as a solution operator from the loading to the resultant displacement field, with the material microstructure properties learned implicitly from the data and naturally embedded in the network parameters. Using various combinations of loading protocols, we compare the predictivity of this framework with finite element analysis based on the phenomenological Fung-type model. From in-distribution tests, the predictivity of our approach presents good generalizability to different loading conditions and outperforms the conventional constitutive modeling at approximately one order of magnitude. When tested on out-of-distribution loading ratios, the neural operator learning approach becomes less effective. To improve the generalizability of our framework, we propose a physics-guided neural operator learning model via imposing partial physics knowledge. This method is shown to improve the model's extrapolative performance in the small-deformation regime. Our results demonstrate that with sufficient data coverage and/or guidance from partial physics constraints, the data-driven approach can be a more effective method for modeling biological materials than the traditional constitutive modeling.
dc.description.comments This is a pre-print of the article You, Huaiqian, Quinn Zhang, Colton J. Ross, Chung-Hao Lee, Ming-Chen Hsu, and Yue Yu. "A Physics-Guided Neural Operator Learning Approach to Model Biological Tissues from Digital Image Correlation Measurements." arXiv preprint arXiv:2204.00205 (2022). DOI: 10.48550/arXiv.2204.00205. Copyright 2022 The Authors. Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0). Posted with permission.
dc.identifier.uri https://dr.lib.iastate.edu/handle/20.500.12876/kv7k6KYv
dc.language.iso en
dc.publisher arXiv
dc.source.uri https://doi.org/10.48550/arXiv.2204.00205 *
dc.subject.keywords operator-regression neural networks
dc.subject.keywords implicit Fourier neural operator (IFNO)
dc.subject.keywords data-driven material modeling
dc.subject.keywords heart valve leaflet
dc.title A Physics-Guided Neural Operator Learning Approach to Model Biological Tissues from Digital Image Correlation Measurements
dc.type Preprint
dspace.entity.type Publication
relation.isAuthorOfPublication a780f854-309d-4de9-a355-1cebcaf3d6a5
relation.isOrgUnitOfPublication 6d38ab0f-8cc2-4ad3-90b1-67a60c5a6f59
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