Form-finding of tensegrity structures based on graph neural networks

IF 2.1 4区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Advances in Structural Engineering Pub Date : 2024-09-02 DOI:10.1177/13694332241276051
Shoufei Shao, Maozu Guo, Ailin Zhang, Yanxia Zhang, Yang Li, ZhuoXuan Li
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Abstract

Tensegrity structures, characterized by enhanced stiffness, slender struts, and superior buckling resistance, have found wide-ranging applications in fields such as engineering, architecture, art, biology, and robotics, attracting extensive attention from researchers. The form-finding process, a critical step in the design of tensegrity structures, aims to discover the self-equilibrated configuration that satisfies specific design requirements. Traditional form-finding methods based on force density often require repeated steps of eigenvalue decomposition and singular value decomposition, making the process complex. In contrast, this paper introduces a new intelligent form-finding algorithm that uses the force density method and combines the Coati optimization algorithm with Graph Neural Networks. This algorithm avoids the complex steps of eigenvalue and singular value decomposition and integrates the physical knowledge of the structure, making the form-finding process faster and more accurate. In this algorithm, various force densities are initially randomized and input into a trained Graph Neural Networks to predict a fitness function’s value. Through optimizing the constrained fitness function, the algorithm determines the appropriate structural force density and coordinates, thereby completing the form-finding process of the structure. The paper presents seven typical tensegrity structure examples and compares various form-finding methods. The results of numerical examples show that the method proposed in this paper can find solutions that align with the super-stable line more quickly and accurately, demonstrating its potential value in practical applications.
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基于图神经网络的张力整体结构的形式搜索
张拉结构具有刚度大、支撑杆细长、抗屈曲性能优越等特点,在工程、建筑、艺术、生物和机器人等领域有着广泛的应用,引起了研究人员的广泛关注。找形过程是张力合成结构设计的关键步骤,旨在发现满足特定设计要求的自平衡配置。传统的基于力密度的寻形方法往往需要反复进行特征值分解和奇异值分解,使得寻形过程变得复杂。相比之下,本文介绍了一种新的智能寻形算法,它使用力密度方法,并将 Coati 优化算法与图神经网络相结合。该算法避免了特征值和奇异值分解的复杂步骤,并整合了结构的物理知识,使找形过程更快、更准确。在该算法中,各种力密度被初始随机化并输入训练有素的图神经网络,以预测拟合函数的值。通过优化约束适度函数,该算法确定了合适的结构力密度和坐标,从而完成了结构的找形过程。论文介绍了七个典型的张弦结构实例,并比较了各种寻形方法。数值实例结果表明,本文提出的方法可以更快、更准确地找到与超稳定线对齐的解,证明了其在实际应用中的潜在价值。
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来源期刊
Advances in Structural Engineering
Advances in Structural Engineering 工程技术-工程:土木
CiteScore
5.00
自引率
11.50%
发文量
230
审稿时长
2.3 months
期刊介绍: Advances in Structural Engineering was established in 1997 and has become one of the major peer-reviewed journals in the field of structural engineering. To better fulfil the mission of the journal, we have recently decided to launch two new features for the journal: (a) invited review papers providing an in-depth exposition of a topic of significant current interest; (b) short papers reporting truly new technologies in structural engineering.
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