The mixed deep energy method for resolving concentration features in finite strain hyperelasticity
Jan N. Fuhg, Nikolaos Bouklas

TL;DR
This paper extends the Deep Energy Method (DEM) with a mixed formulation to better resolve stress concentration features in finite strain hyperelasticity, achieving FEM-like accuracy with neural networks.
Contribution
The paper introduces the mixed Deep Energy Method (mDEM) that incorporates stress measures as neural network outputs and uses Delaunay integration for improved accuracy in stress concentration regions.
Findings
mDEM accurately captures stress concentrations in hyperelasticity.
mDEM achieves FEM-comparable results on complex geometries.
The approach improves boundary condition approximation and feature resolution.
Abstract
The introduction of Physics-informed Neural Networks (PINNs) has led to an increased interest in deep neural networks as universal approximators of PDEs in the solid mechanics community. Recently, the Deep Energy Method (DEM) has been proposed. DEM is based on energy minimization principles, contrary to PINN which is based on the residual of the PDEs. A significant advantage of DEM, is that it requires the approximation of lower order derivatives compared to formulations that are based on strong form residuals. However both DEM and classical PINN formulations struggle to resolve fine features of the stress and displacement fields, for example concentration features in solid mechanics applications. We propose an extension to the Deep Energy Method (DEM) to resolve these features for finite strain hyperelasticity. The developed framework termed mixed Deep Energy Method (mDEM) introduces…
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