Cellular structures manifest their outstanding mechanical properties in many biological systems. One key challenge for designing and optimizing these geometrically complicated structures lies in devising an effective geometric representation to characterize the system's spatially varying cellular evolution driven by objective sensitivities. A conventional discrete cellular structure, e.g., a Voronoi diagram, whose representation relies on discrete Voronoi cells and faces, lacks its differentiability to facilitate large-scale, gradient-based topology optimizations. We propose a topology optimization algorithm based on a differentiable and generalized Voronoi representation that can evolve the cellular structure as a continuous field. The central piece of our method is a hybrid particle-grid representation to encode the previously discrete Voronoi diagram into a continuous density field defined in a Euclidean space. Based on this differentiable representation, we further extend it to tackle anisotropic cells, free boundaries, and functionally-graded cellular structures. Our differentiable Voronoi diagram enables the integration of an effective cellular representation into the state-of-the-art topology optimization pipelines, which defines a novel design space for cellular structures to explore design options effectively that were impractical for previous approaches. We showcase the efficacy of our approach by optimizing cellular structures with up to thousands of anisotropic cells, including femur bone and Odonata wing.
翻译:在许多生物系统中,细胞细胞结构表现出其杰出的机械特性。设计和优化这些几何复杂结构的一个关键挑战在于设计一个有效的几何代表面,以描述该系统由客观敏感度驱动的空间差异细胞进化特征。一个传统的离散细胞结构,例如Voronoi图,其代表性依赖于离散的Voronoi细胞和面孔,缺乏其多样性,无法促进大规模、梯度的地形优化。我们提出了一个基于不同和普遍的Voronoi代表面的地形优化算法,它能够将细胞结构发展成一个连续的场。我们的方法的核心部分是将先前离散的Voronoi图编码成一个在Eucloidean空间定义的连续密度场的混合粒子-电网代表面。基于这一不同代表面,我们进一步扩展了它,以处理厌解细胞细胞细胞细胞细胞、自由边界和功能级的细胞结构。我们不同的Voronoioioi 图表能够将有效的细胞代号纳入到州-艺术顶部优化管道中,它定义了将新型的细胞结构设计空间,通过我们先前的模型结构的升级的模型结构展示,从而有效地探索模型结构设计选择。