Helen Le Clézio , Konstantinos Karapiperis , Dennis M. Kochmann
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We introduce a Sobolev-trained neural network as a surrogate model to approximate the effective energy of the microscale. We compare three different neural network architectures, viz. two well established Multi-Layer Perceptron based approaches — a simple feedforward neural network (FNN) and a partially input convex neural network (PICNN) — as well as a recently proposed Kolmogorov-Arnold (KAN) network, and we evaluate their suitability. The models are trained on varying cross-sectional geometries, particularly interpolating between square, circular, and triangular cross-sections, all of varying sizes and degrees of hollowness. Based on its smooth and accurate prediction of the energy landscape, which allows for automatic differentiation, the KAN model was chosen as the surrogate material model, whose effectiveness we demonstrate in a suite of examples, ranging from cantilever beams to 3D beam networks and architected materials. 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引用次数: 0
摘要
我们介绍了一种用于模拟复杂梁网络和结构材料的高效计算框架。该框架的核心是一个热力学信息神经网络,它是具有不同横截面尺寸和几何形状的超弹性细长梁横截面响应的替代材料模型。梁的描述依赖于三维弹性的形式渐近展开,它将问题分解为梁中心线的高效宏观模拟和沿梁各点横截面(微观)的有限弹性问题。根据微观尺度上的求解,有效能量被传递到宏观尺度模拟中,作为材料模型。我们引入 Sobolev 训练的神经网络作为近似微尺度有效能量的代理模型。我们比较了三种不同的神经网络架构,即两种成熟的基于多层感知器的方法--简单前馈神经网络(FNN)和部分输入凸神经网络(PICNN)--以及最近提出的 Kolmogorov-Arnold (KAN) 网络,并评估了它们的适用性。这些模型在不同的横截面几何形状上进行了训练,特别是在方形、圆形和三角形横截面之间进行插值,所有横截面的尺寸和空洞程度都各不相同。由于 KAN 模型能平滑、准确地预测能量分布,并能自动进行区分,因此被选为代用材料模型。代用模型还对训练数据集之外的载荷情况显示出卓越的外推能力。
Nonlinear two-scale beam simulations accelerated by thermodynamics-informed neural networks
We introduce an efficient computational framework for the simulation of complex beam networks and architected materials. At its core stands a thermodynamics-informed neural network, which serves as a surrogate material model for the cross-sectional response of hyperelastic, slender beams with varying cross-sectional sizes and geometries. The beam description relies on a formal asymptotic expansion from 3D elasticity, which decomposes the problem into an efficient macroscale simulation of the beam’s centerline and a finite elasticity problem on the cross-section (microscale) at each point along the beam. From the solution on the microscale, an effective energy is passed to the macroscale simulation, where it serves as the material model. We introduce a Sobolev-trained neural network as a surrogate model to approximate the effective energy of the microscale. We compare three different neural network architectures, viz. two well established Multi-Layer Perceptron based approaches — a simple feedforward neural network (FNN) and a partially input convex neural network (PICNN) — as well as a recently proposed Kolmogorov-Arnold (KAN) network, and we evaluate their suitability. The models are trained on varying cross-sectional geometries, particularly interpolating between square, circular, and triangular cross-sections, all of varying sizes and degrees of hollowness. Based on its smooth and accurate prediction of the energy landscape, which allows for automatic differentiation, the KAN model was chosen as the surrogate material model, whose effectiveness we demonstrate in a suite of examples, ranging from cantilever beams to 3D beam networks and architected materials. The surrogate model also shows excellent extrapolation capabilities to load cases outside the training dataset.
期刊介绍:
Extreme Mechanics Letters (EML) enables rapid communication of research that highlights the role of mechanics in multi-disciplinary areas across materials science, physics, chemistry, biology, medicine and engineering. Emphasis is on the impact, depth and originality of new concepts, methods and observations at the forefront of applied sciences.