2024
DOI: 10.3389/fphys.2024.1321298
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Using dropout based active learning and surrogate models in the inverse viscoelastic parameter identification of human brain tissue

Jan Hinrichsen,
Carl Ferlay,
Nina Reiter
et al.

Abstract: Inverse mechanical parameter identification enables the characterization of ultrasoft materials, for which it is difficult to achieve homogeneous deformation states. However, this usually involves high computational costs that are mainly determined by the complexity of the forward model. While simulation methods like finite element models can capture nearly arbitrary geometries and implement involved constitutive equations, they are also computationally expensive. Machine learning models, such as neural networ… Show more

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