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[ARTICLE · art-33559] src=arxiv.org ↗ pub= topic=machine-learning verified=true sentiment=· neutral

Physics-Informed Discovery of Yield Functions in Plasticity via Convex Neural Representations

Researchers propose a physics-informed framework to discover anisotropic yield functions from full-field displacement and reaction force data, using a convex neural network representation. The method avoids direct stress observations or prescribed parametric forms, validated on FE benchmarks with von Mises, Hill 1948, and Yld2000-2d yield functions. This enables data-driven identification of yield surfaces while enforcing mechanical constraints.

read1 min views1 publishedJun 19, 2026

arXiv:2606.19375v1 Announce Type: new Abstract: Identifying anisotropic yield functions remains challenging since yielding is not directly observed in full-field mechanical measurements, directional calibration can require many directions, and selecting an appropriate analytical form is nontrivial. This study proposes a physics-informed framework for discovering yield functions from full-field displacement data and reaction force data, without stress observations, plastic strain measurements, direct yield surface data, or a prescribed parametric yield function. The framework identifies the yield function as a mechanically constrained constitutive component inside elastoplastic stress integration, rather than through direct stress-space supervision. The yield function is represented by a convex neural network that enforces convexity and positive homogeneity of degree one while imposing the assumed tension-compression symmetry, and this neural yield function is trained with a differentiable stress update and a physics-informed force equilibrium loss across multiple cases. The proposed framework is validated using finite element (FE) benchmark studies with von Mises, Hill 1948, and Yld2000-2d yield functions, assessing yield contour agreement, displacement-noise sensitivity, identifiability through plastically active stress states, epistemic uncertainty, and polynomial-surrogate deployment. This study provides a mechanics-constrained pathway for discovering anisotropic yield functions from displacement and force data while keeping the identified component within the structure of elastoplastic stress integration.

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