论文标题

软盘网络的模块化表示和控制

Modular representation and control of floppy networks

论文作者

Chen, Siheng, Giardina, Fabio, Choi, Gary P. T., Mahadevan, L.

论文摘要

从DNA组件到架构材料的蛋白质,机器人和机械结构等多样性的系统模型指向统一的方式,以在时空和时间内代表和控制它们。尽管在表征这些网络的行为的背景下完成了许多工作,这些网络接近与纽带和刚性渗透,等静止性等相关的关键点,但对软盘,受约束的网络的了解少得多,这些网络在自然界和技术中更为普遍。在这里,我们结合了几何刚度和代数稀疏性,以通过表示网络的基本层次结构和模块化的表示提供了一个框架,以识别零能量的软盘模式,从而控制其嵌套和区域。我们的框架使我们能够演示这种方法的一系列应用,其中包括具有运动原始功能的机器人到达任务,并仅基于无限的刚性和稀疏性来预测弹性网络的线性和非线性响应,我们使用物理实验进行了测试。因此,我们的方法很可能广泛用于使用代数稀疏性来剖析软盘网络的几何特性,以优化其功能和性能。

Geometric graph models of systems as diverse as proteins, robots, and mechanical structures from DNA assemblies to architected materials point towards a unified way to represent and control them in space and time. While much work has been done in the context of characterizing the behavior of these networks close to critical points associated with bond and rigidity percolation, isostaticity, etc., much less is known about floppy, under-constrained networks that are far more common in nature and technology. Here we combine geometric rigidity and algebraic sparsity to provide a framework for identifying the zero-energy floppy modes via a representation that illuminates the underlying hierarchy and modularity of the network, and thence the control of its nestedness and locality. Our framework allows us to demonstrate a range of applications of this approach that include robotic reaching tasks with motion primitives, and predicting the linear and nonlinear response of elastic networks based solely on infinitesimal rigidity and sparsity, which we test using physical experiments. Our approach is thus likely to be of use broadly in dissecting the geometrical properties of floppy networks using algebraic sparsity to optimize their function and performance.

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