A fully mesh-independent non-linear topology optimization framework based on neural representations: Quasi-static problem

IF 6.4 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY
Zeyu Zhang, Yu Li, Weien Zhou, Wen Yao
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引用次数: 0

Abstract

In artificial intelligence (AI) for science, the AI-empowered topology optimization methods have garnered sustained attention from researchers and achieved significant development. In this paper, we introduce the implicit neural representation (INR) from AI and the material point method (MPM) from the field of computational mechanics into topology optimization, resulting in a novel differentiable and fully mesh-independent topology optimization framework named MI-TONR, and it is then applied to nonlinear topology optimization (NTO) design. Within MI-TONR, the INR is combined with the topology description function to construct the design model, while implicit MPM is employed for physical response analysis. A skillful integration is achieved between the design model based on the continuous implicit representation field and the analysis model based on the Lagrangian particles. Along with updating parameters of the neural network (i.e., design variables), the structural topologies iteratively evolve according to the responses analysis results and optimization functions. The computational differentiability is ensured at every step of MI-TONR, enabling sensitivity analysis using automatic differentiation. In addition, we introduce the augmented Lagrangian Method to handle multiple constraints in topology optimization and adopt a learning rate adaptive adjustment scheme to enhance the robustness of the optimization process. Numerical examples demonstrate that MI-TONR can effectively conduct NTO design under large loads without any numerical techniques to mitigate numerical instabilities. Meanwhile, its natural satisfaction with the no-penetration condition facilitates the NTO design of considering contact. The infinite spatial resolution characteristic facilitates the generation of structural topology at multiple resolutions with clear and continuous boundaries.

基于神经网络表征的完全网格无关非线性拓扑优化框架:准静态问题
在科学人工智能领域,基于人工智能的拓扑优化方法得到了研究人员的持续关注,并取得了重大进展。本文将人工智能中的隐式神经表示(INR)和计算力学中的物质点法(MPM)引入到拓扑优化中,建立了一种新的可微的、完全网格无关的拓扑优化框架MI-TONR,并将其应用于非线性拓扑优化设计。在MI-TONR中,INR与拓扑描述函数相结合构建设计模型,隐式MPM用于物理响应分析。实现了基于连续隐式表示场的设计模型与基于拉格朗日粒子的分析模型的巧妙集成。随着神经网络参数(即设计变量)的更新,结构拓扑根据响应分析结果和优化函数进行迭代演化。在MI-TONR的每一步都确保了计算的可微分性,从而可以使用自动微分进行灵敏度分析。此外,我们引入增广拉格朗日方法处理拓扑优化中的多个约束,并采用学习率自适应调整方案来增强优化过程的鲁棒性。数值算例表明,MI-TONR可以有效地进行大载荷下的NTO设计,而无需任何数值技术来减轻数值不稳定性。同时,它对无侵穿条件的自然满足,有利于考虑接触的NTO设计。无限空间分辨率的特性使得生成具有清晰连续边界的多分辨率结构拓扑成为可能。
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来源期刊
Science China Physics, Mechanics & Astronomy
Science China Physics, Mechanics & Astronomy PHYSICS, MULTIDISCIPLINARY-
CiteScore
10.30
自引率
6.20%
发文量
4047
审稿时长
3 months
期刊介绍: Science China Physics, Mechanics & Astronomy, an academic journal cosponsored by the Chinese Academy of Sciences and the National Natural Science Foundation of China, and published by Science China Press, is committed to publishing high-quality, original results in both basic and applied research. Science China Physics, Mechanics & Astronomy, is published in both print and electronic forms. It is indexed by Science Citation Index. Categories of articles: Reviews summarize representative results and achievements in a particular topic or an area, comment on the current state of research, and advise on the research directions. The author’s own opinion and related discussion is requested. Research papers report on important original results in all areas of physics, mechanics and astronomy. Brief reports present short reports in a timely manner of the latest important results.
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