IF 7.6 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
Youngtaek Oh , Byungjo Kim , Hayoung Chung
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引用次数: 0

摘要

最近,许多研究越来越关注开发生物启发结构,利用其轻质和高能量吸收特性,这在许多工程领域都至关重要。然而,以具有卓越能量吸收能力的生物启发结构为目标的结构优化一直被认为是一个具有挑战性的问题。其中一个挑战是,由外力诱发的非线性材料行为,如构成韧带的屈曲和自接触,会干扰能量吸收过程。鉴于韧带结构的复杂性,这种非线性不仅使设计变化与能量吸收之间的关系变得非线性,而且加剧了设计的难度。针对这一问题,我们提出了一种新型的高能量吸收生物启发细胞结构优化设计方法。首先,使用 Voronoi 网格来捕捉生物启发材料的配置,并以几何变量为参数。然后,通过高保真非线性有限元分析探索复杂的设计空间,利用克里金贝叶斯优化法有效地更新设计。所提出的设计方法结合了减少结构响应代理建模和优化搜索所需的样本数量的策略,因此在结构优化方面非常高效,而且由于 Voronoi 结构的内在差异,它还能产生具有相似优势的多种设计结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Efficient design of Voronoi energy-absorbing foams using Bayesian optimization

Efficient design of Voronoi energy-absorbing foams using Bayesian optimization
Recently, many studies have increasingly focused on developing bio-inspired structures, leveraging their lightweight and high-energy absorption properties, which are crucial across many engineering fields. Structural optimization aiming for bio-inspired structures having superior energy absorption capability, however, has been considered a challenging problem. One of these challenges is that nonlinear material behaviors induced by external forces, such as buckling and self-contact of constituting ligaments, intervene in the energy absorption process. Such nonlinearities not only make the relationship between design changes and energy absorption nonlinear, but also exacerbate the difficulties of design, given the complexity of the ligament configurations. To address this, a novel design optimization method for bio-inspired cellular structures with high energy absorption is proposed. First, Voronoi tessellation is used to capture configurations of bio-inspired material, parameterized by geometric variables. Then, Bayesian optimization with Kriging efficiently updates the design, exploring the complex design space through high-fidelity nonlinear finite element analysis. The proposed design method is efficient in structural optimization as it combines a strategy to reduce the number of samples required for surrogate modeling of structural response and optimal search, but it also generates multiple design outcomes with similar advantages due to the intrinsic variance of the Voronoi structures.
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来源期刊
Materials & Design
Materials & Design Engineering-Mechanical Engineering
CiteScore
14.30
自引率
7.10%
发文量
1028
审稿时长
85 days
期刊介绍: Materials and Design is a multi-disciplinary journal that publishes original research reports, review articles, and express communications. The journal focuses on studying the structure and properties of inorganic and organic materials, advancements in synthesis, processing, characterization, and testing, the design of materials and engineering systems, and their applications in technology. It aims to bring together various aspects of materials science, engineering, physics, and chemistry. The journal explores themes ranging from materials to design and aims to reveal the connections between natural and artificial materials, as well as experiment and modeling. Manuscripts submitted to Materials and Design should contain elements of discovery and surprise, as they often contribute new insights into the architecture and function of matter.
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