通过可学习映射进行实时拓扑优化

IF 2.7 3区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY International Journal for Numerical Methods in Engineering Pub Date : 2024-05-12 DOI:10.1002/nme.7502
Gabriel Garayalde, Matteo Torzoni, Matteo Bruggi, Alberto Corigliano
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引用次数: 0

摘要

在传统的拓扑优化中,迭代更新设计域内材料分布所需的计算时间很大程度上取决于问题的复杂性或大小,从而限制了其在实际工程中的应用。本研究提出了一种多阶段机器学习策略,旨在预测二维或三维的最佳拓扑结构和相关应力场,而无需借助任何迭代分析和设计过程。整体拓扑优化被视为低维潜在空间中的回归任务,该空间对目标设计的可变性进行了编码。首先,采用全连接模型来代理表征设计问题的参数输入空间与相应最优拓扑的潜空间表示之间的功能联系。然后,利用自动编码器的解码器分支,从其潜在表示重建所需的最佳拓扑结构。深度学习模型是在一个数据集上进行训练的,该数据集是在不同的边界和负载条件下,通过一种标准的拓扑优化方法生成的,该拓扑优化方法采用了带惩罚的固体各向同性材料。所提策略背后的基本假设是,最优拓扑结构具有足够多的共同模式,可以在不损失大量信息的情况下压缩成较小的潜空间表示。与二维梅塞施密特-伯尔考-布洛姆梁和三维桥梁案例相关的结果表明,所提出的框架能够在几分之一秒内提供精确的最优拓扑预测。
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Real-time topology optimization via learnable mappings

In traditional topology optimization, the computing time required to iteratively update the material distribution within a design domain strongly depends on the complexity or size of the problem, limiting its application in real engineering contexts. This work proposes a multi-stage machine learning strategy that aims to predict an optimal topology and the related stress fields of interest, either in 2D or 3D, without resorting to any iterative analysis and design process. The overall topology optimization is treated as regression task in a low-dimensional latent space, that encodes the variability of the target designs. First, a fully-connected model is employed to surrogate the functional link between the parametric input space characterizing the design problem and the latent space representation of the corresponding optimal topology. The decoder branch of an autoencoder is then exploited to reconstruct the desired optimal topology from its latent representation. The deep learning models are trained on a dataset generated through a standard method of topology optimization implementing the solid isotropic material with penalization, for varying boundary and loading conditions. The underlying hypothesis behind the proposed strategy is that optimal topologies share enough common patterns to be compressed into small latent space representations without significant information loss. Results relevant to a 2D Messerschmitt-Bölkow-Blohm beam and a 3D bridge case demonstrate the capabilities of the proposed framework to provide accurate optimal topology predictions in a fraction of a second.

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来源期刊
CiteScore
5.70
自引率
6.90%
发文量
276
审稿时长
5.3 months
期刊介绍: The International Journal for Numerical Methods in Engineering publishes original papers describing significant, novel developments in numerical methods that are applicable to engineering problems. The Journal is known for welcoming contributions in a wide range of areas in computational engineering, including computational issues in model reduction, uncertainty quantification, verification and validation, inverse analysis and stochastic methods, optimisation, element technology, solution techniques and parallel computing, damage and fracture, mechanics at micro and nano-scales, low-speed fluid dynamics, fluid-structure interaction, electromagnetics, coupled diffusion phenomena, and error estimation and mesh generation. It is emphasized that this is by no means an exhaustive list, and particularly papers on multi-scale, multi-physics or multi-disciplinary problems, and on new, emerging topics are welcome.
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