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A 3D, performance-driven generative design framework: automating the link from a 3D spatial grammar interpreter to structural finite element analysis and stochastic optimization

机译:3D,性能驱动的生成设计框架:自动执行从3D空间语法解释器到结构有限元分析和随机优化的链接

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Since the introduction of spatial grammars 45 years ago, numerous grammars have been developed in a variety of fields from architecture to engineering design. Their benefits for solution space exploration when computationally implemented and combined with optimization have been demonstrated. However, there has been limited adoption of spatial grammars in engineering applications for various reasons. One main reason is the missing, automated, generalized link between the designs generated by the spatial grammar and their evaluation through finite-element analysis (FEA). However, the combination of spatial grammars with optimization and simulation has the advantage over continuous structural topology optimization in that explicit constraints, for example, modeling style and fabrication processes, can be included in the spatial grammar. This paper discusses the challenges in providing a generalized approach by demonstrating the implementation of a framework that combines a three-dimensional spatial grammar interpreter with automated FEA and stochastic optimization using simulated annealing (SA). Guidelines are provided for users to design spatial grammars in conjunction with FEA and integrate automatic application of boundary conditions. A simulated annealing method for use with spatial grammars is also presented including a new method to select rules through a neighborhood definition. To demonstrate the benefits of the framework, it is applied to the automated design and optimization of spokes for inline skate wheels. This example highlights the advantage of spatial grammars for modeling style and additive manufacturing (AM) constraints within the generative system combined with FEA and optimization to carry out topology and shape optimization. The results verify that the framework can generate structurally optimized designs within the style and AM constraints defined in the spatial grammar, and produce a set of topologically diverse, yet valid design solutions.
机译:自从45年前引入空间语法以来,在从建筑到工程设计的各个领域中开发了许多语法。通过计算实现并与优化相结合,它们对于解决方案空间探索的好处已得到证明。但是,由于各种原因,在工程应用中对空间语法的采用受到了限制。一个主要的原因是空间语法生成的设计与其通过有限元分析(FEA)进行的评估之间缺少自动化的通用链接。但是,将空间语法与优化和模拟相结合,具有优于连续结构拓扑优化的优势,因为可以将明确的约束(例如建模样式和制造过程)包括在空间语法中。本文通过演示将三维空间语法解释器与自动有限元分析和使用模拟退火(SA)进行随机优化相结合的框架的实现,来讨论提供通用方法所面临的挑战。为用户提供了与FEA一起设计空间语法并集成边界条件自动应用的指南。还提出了一种用于空间语法的模拟退火方法,包括一种通过邻域定义选择规则的新方法。为了证明该框架的优势,将其应用于直排轮毂轮辐的自动化设计和优化。此示例强调了空间语法在生成系统中建模样式和增材制造(AM)约束与FEA和优化相结合以进行拓扑和形状优化的优势。结果证明,该框架可以在空间语法中定义的样式和AM约束内生成结构优化的设计,并可以生成一组拓扑多样但有效的设计解决方案。

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