使用深度神经网络(DNN)预测SHS和RHS构件的局部屈曲强度和荷载-位移行为——深度神经网络直接刚度法(DNN-DSM)简介

IF 16.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Andreas Müller, A. Taras
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引用次数: 4

摘要

在钢结构的结构设计过程中,传统的分析和验证分离是保守和不准确的一个已知来源,因为在许多情况下,截面的真实变形/旋转能力和系统中内力的重新分布仍然是模糊的。这尤其影响到由高强度钢制成的结构,因为通常需要将截面归类为细长截面,因此不允许考虑塑性和应力再分配。具有材料非线性和缺陷的壳单元有限元模型适用于克服这种分离,提高设计的准确性和经济性,但计算密集,不适用于整个结构的设计。在本文中,提出了一种计算经济的梁单元分析新方法:“DNN-DSM”,该方法利用机器学习技术(深度神经网络-DNN)预测梁单元公式中的非线性刚度矩阵项,以便在直接刚度方法中实现。基于从大量非线性(GMNIA)壳单元结果库中训练的DNN模型。本文介绍了该方法的动机、一般特征和首次实施,即“概念验证”,针对空心截面特拉斯构件,并展望了该方法正在进行的全面实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of the local buckling strength and load‐displacement behaviour of SHS and RHS members using Deep Neural Networks (DNN) – Introduction to the Deep Neural Network Direct Stiffness Method (DNN‐DSM)
The traditional separation of analysis and verification during the structural design of steel structures is a known source of conservatism and inaccuracy, as the true deformation/rotation capacity of sections and the redistribution of internal forces in systems remains only vaguely known in many cases. This particularly affects structures made of high‐strength steel, since often sections would need to be classified as slender, thus disallowing the possibility to account for plasticity and stress redistribution. Shell‐element FEM‐models with material nonlinearities and imperfections would be suitable to overcome this separation and increase the accuracy and economy of designs, yet are computationally intensive and impractical for design of whole structures. In this paper, a novel approach for carrying out a computationally economical beam‐element analysis that accounts for the nonlinear load‐displacement behaviour of sections of various local slenderness is presented: the ”DNN‐DSM“, which makes use of machine learning techniques (deep neural networks – DNN) to predict the nonlinear stiffness matrix terms in a beam‐element formulation for implementation in the Direct Stiffness Method. Based on trained DNN models from an extensive pool of nonlinear (GMNIA) shell element results. The motivation, general features, and first implementations of this method in the sense of a ”proof‐of‐concept“, for the case of hollow‐section truss members, are presented in the paper, as well as an outlook on the method's on‐going, full implementation.
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来源期刊
Accounts of Chemical Research
Accounts of Chemical Research 化学-化学综合
CiteScore
31.40
自引率
1.10%
发文量
312
审稿时长
2 months
期刊介绍: Accounts of Chemical Research presents short, concise and critical articles offering easy-to-read overviews of basic research and applications in all areas of chemistry and biochemistry. These short reviews focus on research from the author’s own laboratory and are designed to teach the reader about a research project. In addition, Accounts of Chemical Research publishes commentaries that give an informed opinion on a current research problem. Special Issues online are devoted to a single topic of unusual activity and significance. Accounts of Chemical Research replaces the traditional article abstract with an article "Conspectus." These entries synopsize the research affording the reader a closer look at the content and significance of an article. Through this provision of a more detailed description of the article contents, the Conspectus enhances the article's discoverability by search engines and the exposure for the research.
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