Generative Design of Multi-Material Hierarchical Structures via Concurrent Topology Optimization and Conformal Geometry Method

Long Jiang, Shikui Chen, X. Gu
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引用次数: 1

Abstract

Topology optimization has been proved to be an automatic, efficient and powerful tool for structural designs. In recent years, the focus of structural topology optimization has evolved from mono-scale, single material structural designs to hierarchical multimaterial structural designs. In this research, the multi-material structural design is carried out in a concurrent parametric level set framework so that the structural topologies in the macroscale and the corresponding material properties in mesoscale can be optimized simultaneously. The constructed cardinal basis function (CBF) is utilized to parameterize the level set function. With CBF, the upper and lower bounds of the design variables can be identified explicitly, compared with the trial and error approach when the radial basis function (RBF) is used. In the macroscale, the ‘color’ level set is employed to model the multiple material phases, where different materials are represented using combined level set functions like mixing colors from primary colors. At the end of this optimization, the optimal material properties for different constructing materials will be identified. By using those optimal values as targets, a second structural topology optimization is carried out to determine the exact mesoscale metamaterial structural layout. In both the macroscale and the mesoscale structural topology optimization, an energy functional is utilized to regularize the level set function to be a distance-regularized level set function, where the level set function is maintained as a signed distance function along the design boundary and kept flat elsewhere. The signed distance slopes can ensure a steady and accurate material property interpolation from the level set model to the physical model. The flat surfaces can make it easier for the level set function to penetrate its zero level to create new holes. After obtaining both the macroscale structural layouts and the mesoscale metamaterial layouts, the hierarchical multimaterial structure is finalized via a local-shape-preserving conformal mapping to preserve the designed material properties. Unlike the conventional conformal mapping using the Ricci flow method where only four control points are utilized, in this research, a multi-control-point conformal mapping is utilized to be more flexible and adaptive in handling complex geometries. The conformally mapped multi-material hierarchical structure models can be directly used for additive manufacturing, concluding the entire process of designing, mapping, and manufacturing.
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基于并行拓扑优化和保形几何方法的多材料分层结构生成设计
拓扑优化已被证明是一种自动、高效、有力的结构设计工具。近年来,结构拓扑优化的研究重点已经从单尺度、单材料结构设计发展到多层次的多材料结构设计。在本研究中,多材料结构设计是在一个并行的参数水平集框架下进行的,以便在宏观尺度上对结构拓扑进行优化,并在中观尺度上对相应的材料性能进行优化。利用构造的基数基函数(CBF)对水平集函数进行参数化。与使用径向基函数(RBF)的试错方法相比,CBF可以明确地识别设计变量的上界和下界。在宏观尺度上,“颜色”水平集被用来对多个材料阶段进行建模,其中不同的材料使用组合水平集函数来表示,例如从原色混合颜色。在此优化结束时,将确定不同建筑材料的最佳材料性能。以这些最优值为目标,进行第二次结构拓扑优化,以确定精确的中尺度超材料结构布局。在宏观尺度和中尺度结构拓扑优化中,利用能量泛函将水平集函数正则化为距离正则化水平集函数,其中水平集函数沿设计边界保持为有符号距离函数,在其他地方保持平坦。带符号的距离斜率可以确保从水平集模型到物理模型的稳定和准确的材料属性插值。平面可以使水平集函数更容易穿透其零水平以创建新孔。在获得宏尺度结构布局和中尺度超材料布局后,通过局部保形保角映射确定分层多材料结构,以保持设计材料的性质。与传统的仅使用四个控制点的Ricci流法保角映射不同,本研究采用多控制点保角映射,在处理复杂几何形状时更具灵活性和适应性。共形映射的多材料分层结构模型可直接用于增材制造,将设计、映射、制造的全过程囊括其中。
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