Automated Model Discovery for Tensional Homeostasis: Constitutive Machine Learning in Growth and Remodeling
Hagen Holthusen, Tim Brepols, Kevin Linka, Ellen Kuhl

TL;DR
This paper introduces an advanced machine learning framework that integrates growth, remodeling, and homeostatic concepts to discover constitutive models of soft tissues, improving accuracy and reducing reliance on expert knowledge.
Contribution
The work extends inelastic Constitutive Artificial Neural Networks by incorporating kinematic growth and homeostatic surfaces for automated model discovery.
Findings
Successfully learned tissue behavior from experimental data.
Demonstrated predictive accuracy beyond training data.
Discussed limitations at the structural level.
Abstract
Soft biological tissues exhibit a tendency to maintain a preferred state of tensile stress, known as tensional homeostasis, which is restored even after external mechanical stimuli. This macroscopic behavior can be described using the theory of kinematic growth, where the deformation gradient is multiplicatively decomposed into an elastic part and a part related to growth and remodeling. Recently, the concept of homeostatic surfaces was introduced to define the state of homeostasis and the evolution equations for inelastic deformations. However, identifying the optimal model and material parameters to accurately capture the macroscopic behavior of inelastic materials can only be accomplished with significant expertise, is often time-consuming, and prone to error, regardless of the specific inelastic phenomenon. To address this challenge, built-in physics machine learning algorithms…
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