从历史先例探索Ai生成的壳与张拉结构设计空间

G. Mirra, Alberto Pugnale
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引用次数: 0

摘要

本文介绍了一种计算设计工具的开发和应用,该工具可用于探索用于壳和拉伸结构概念设计的ai生成设计空间。训练人工智能模型从40个众所周知的壳和拉伸结构设计先例数据集中提取几何特征,并构建设计空间。然后,训练好的模型被赋予一个接口,允许设计师在CAD软件中探索设计空间。与目前大多数参数化设计和优化的方法不同,对设计空间的探索-因此设计师和计算模型之间的交互-不是通过设计变量,而是通过视觉输入进行的。通过涉及标志性设计先例的应用程序,研究了该工具支持外壳和拉伸结构概念设计的潜力。应用程序表明,与形式查找和优化不同,该工具生成的设计建议不受性能驱动,也不需要预先确定结果的边界条件声明。尽管如此,这样的设计建议可以被认为是合理的,因为它们嵌入了特定的设计知识,这些知识来自于用于训练人工智能模型的先例的主要几何特征的重新阐述过程。例如,这些特征包括开口的形状、支撑点的数量和位置或曲率的反转。应用结果质疑计算工具在概念设计中的作用,并说明了探索设计空间的另一种策略。
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Exploring a Design Space of Shell and Tensile Structures Generated by Ai From Historical Precedents
This paper presents the development and application of a computational design tool that can be used to explore an AI-generated design space for the conceptual design of shell and tensile structures.An AI model was trained to extract geometric features from a dataset of 40 well-known design precedents of shell and tensile structures and to construct a design space. The trained model was then endowed with an interface to allow the designer to explore the design space within CAD software. Unlike the majority of current approaches to parametric design and optimisation, the exploration of the design space – and therefore the interaction between the designer and the computational model – does not take place via design variables, but through visual input.The potential of this tool to support the conceptual design of shell and tensile structures is examined through an application involving iconic design precedents. The application shows that, unlike form-finding and optimisation, this tool generates design suggestions that are not performance-driven, and do not require the statement of the boundary conditions, which would pre-determine the results. Despite this, such design suggestions can be considered plausible because they embed specific design knowledge resulting from a re-elaborating process of the main geometric features of the precedents used to train the AI model. These features include, for example, the shape of the openings, the number and location of the support points or the inversion of curvature, where present. The application results question the role of computational tools in conceptual design and illustrate an alternative strategy to explore the design space.
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来源期刊
CiteScore
1.40
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0.00%
发文量
17
期刊介绍: The Association publishes an international journal, the Journal of the IASS, four times yearly, in print (ISSN 1028-365X) and on-line (ISSN 1996-9015). The months of publication are March, June, September and December. Occasional extra electronic-only issues are included in the on-line version. From this page you can access one or more issues -- a sample issue if you are not logged into the members-only portion of the site, or the current issue and several back issues if you are logged in as a member. For any issue that you can view, you can download articles as .pdf files.
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