Neural network ensembles and uncertainty estimation for predictions of inelastic mechanical deformation using a finite element method-neural network approach

Guy L. Bergel, David Montes de Oca Zapiain, Vicente Romero
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Abstract

Abstract The finite element method (FEM) is widely used to simulate a variety of physics phenomena. Approaches that integrate FEM with neural networks (NNs) are typically leveraged as an alternative to conducting expensive FEM simulations in order to reduce the computational cost without significantly sacrificing accuracy. However, these methods can produce biased predictions that deviate from those obtained with FEM, since these hybrid FEM-NN approaches rely on approximations trained using physically relevant quantities. In this work, an uncertainty estimation framework is introduced that leverages ensembles of Bayesian neural networks to produce diverse sets of predictions using a hybrid FEM-NN approach that approximates internal forces on a deforming solid body. The uncertainty estimator developed herein reliably infers upper bounds of bias/variance in the predictions for a wide range of interpolation and extrapolation cases using a three-element FEM-NN model of a bar undergoing plastic deformation. This proposed framework offers a powerful tool for assessing the reliability of physics-based surrogate models by establishing uncertainty estimates for predictions spanning a wide range of possible load cases.
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用有限元法-神经网络方法预测非弹性力学变形的神经网络集成和不确定性估计
摘要有限元法(FEM)被广泛用于模拟各种物理现象。将FEM与神经网络(nn)相结合的方法通常被用作进行昂贵的FEM模拟的替代方法,以便在不显着牺牲精度的情况下降低计算成本。然而,这些方法可能产生偏离FEM获得的有偏差的预测,因为这些混合FEM- nn方法依赖于使用物理相关量训练的近似值。在这项工作中,引入了一个不确定性估计框架,该框架利用贝叶斯神经网络的集合,使用混合FEM-NN方法产生各种预测集,该方法近似于变形实体的内力。本文开发的不确定性估计器可靠地推断出偏差/方差的上界,在预测范围广泛的插值和外推情况下,使用三元有限元-神经网络模型的杆经历塑性变形。该框架为评估基于物理的替代模型的可靠性提供了一个强大的工具,通过建立不确定性估计来预测跨越广泛的可能负载情况。
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