论文标题
具有被动适应加载的细胞辅助系统的概念设计
Conceptual Design of Cellular Auxetic Systems with Passive Adaptation to Loading
论文作者
论文摘要
辅助学是指具有总体负泊松比的一类工程结构。这些结构在影响力,高能量吸收和灵活的机器人技术方面为各种潜在的机会提供了各种潜在的机会。有趣的是,辅助结构也可以量身定制,以提供对环境刺激变化的被动适应性 - 在设计一种新型的负载自适应握把系统的背景下,本文探讨了这种概念的适应性。 通过重复可以合成有限结构的参数单位细胞来定义设计,为设计辅助结构提供了一种有吸引力的计算方法。这种方法还取消了整体结构的优化成本和大小,并避免了系统规模设计的陷阱,例如,通过拓扑优化。在本文中,提出了一个基于替代的设计优化框架,以实现从辅助单位单元格合成的被动负载自适应结构(给定外部形状)的概念。开源网格划分,FEA和贝叶斯优化工具已集成以开发此计算框架,从而增强了其可采用和可扩展性。该概念和基础框架的演示是通过设计简化的机器人抓手来执行的,目的是最大程度地提高载荷(抓地力)水平位移与受负载影响的垂直位移的比率。与具有相同指定的最大载荷相同的拓扑优化的设计相比,发现其最佳基于辅助细胞的设计在表现出的接触反作用力方面,其表现出四倍。
Auxetics refer to a class of engineered structures which exhibit an overall negative Poisson's ratio. These structures open up various potential opportunities in impact resistance, high energy absorption, and flexible robotics, among others. Interestingly, auxetic structures could also be tailored to provide passive adaptation to changes in environmental stimuli -- an adaptation of this concept is explored in this paper in the context of designing a novel load-adaptive gripper system. Defining the design in terms of repeating parametric unit cells from which the finite structure can be synthesized presents an attractive computationally-efficient approach to designing auxetic structures. This approach also decouples the optimization cost and the size of the overall structure, and avoids the pitfalls of system-scale design e.g., via topology optimization. In this paper, a surrogate-based design optimization framework is presented to implement the concept of passively load-adaptive structures (of given outer shape) synthesized from auxetic unit cells. Open-source meshing, FEA and Bayesian Optimization tools are integrated to develop this computational framework, enhancing it adopt-ability and extensibility. Demonstration of the concept and the underlying framework is performed by designing a simplified robotic gripper, with the objective to maximize the ratio of towards-load (gripping) horizontal displacement to the load-affected vertical displacement. Optimal auxetic cell-based design generated thereof is found to be four times better in terms of exhibited contact reaction force when compared to a design obtained with topology optimization that is subjected to the same specified maximum loading.