cs.AI updates on arXiv.org 10月07日
增强神经网络材料建模新方法
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本文提出一种增强神经网络材料建模的新方法,通过引入双势能和循环液态神经网络,捕捉材料各向异性和非线性行为,并在材料点和结构尺度上验证了其准确性和稳定性。

arXiv:2510.04187v1 Announce Type: cross Abstract: We propose a complement to constitutive modeling that augments neural networks with material principles to capture anisotropy and inelasticity at finite strains. The key element is a dual potential that governs dissipation, consistently incorporates anisotropy, and-unlike conventional convex formulations-satisfies the dissipation inequality without requiring convexity. Our neural network architecture employs invariant-based input representations in terms of mixed elastic, inelastic and structural tensors. It adapts Input Convex Neural Networks, and introduces Input Monotonic Neural Networks to broaden the admissible potential class. To bypass exponential-map time integration in the finite strain regime and stabilize the training of inelastic materials, we employ recurrent Liquid Neural Networks. The approach is evaluated at both material point and structural scales. We benchmark against recurrent models without physical constraints and validate predictions of deformation and reaction forces for unseen boundary value problems. In all cases, the method delivers accurate and stable performance beyond the training regime. The neural network and finite element implementations are available as open-source and are accessible to the public via https://doi.org/10.5281/zenodo.17199965.

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相关标签

材料建模 神经网络 各向异性 非线性行为 液态神经网络
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