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Stability of feed forward artificial neural networks versus nonlinear structural models in high speed deformations: A critical comparison

机译:饲料前进人工神经网络与高速变形中非线性结构模型的稳定性:批判性比较

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摘要

IN RECENT YEARS, ARTIFICIAL NEURAL NETWORKS have been proposed for engineering applications, such as predicting stresses and strains in structural elements. However, the question arises, how many complex influences can be included in an artificial neural network (ANN) and how accurate these predictions are in comparison to classical finite element solutions. A weakness of finite element predictions is that they can behave sensitive and unstable to changes in material parameters. An ANN does not need an underlying model with parameters and uses input variables, only. In the present study the stability of numerical results obtained by ANN and FEM are compared to each other for a problem in structural dynamics. The result gives new insight about the possibilities to predict accurately structural deformations by means of ANNs. As an example for highly complex geometrically and physically nonlinear structural deformations, the response of circular metal plates subjected to shock waves is investigated.
机译:近年来,已经提出了人工神经网络用于工程应用,例如预测结构元素中的应力和菌株。然而,问题出现了,有多少复杂影响可以包括在人工神经网络(ANN)中,以及与古典有限元解决方案相比,这些预测的准确性如何。有限元预测的弱点是它们可以表现对材料参数的变化来表现敏感和不稳定。 ANN不需要具有参数的底层模型,仅使用输入变量。在本研究中,通过ANN和FEM获得的数值结果的稳定性彼此进行比较,用于结构动态中的问题。结果为通过ANNS预测准确结构变形的可能性提供了新的洞察力。作为高度复杂的几何和物理非线性结构变形的示例,研究了经受冲击波的圆形金属板的响应。

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