Differentiable physics modeling combines physics models with gradient-based learning to provide model explicability and data efficiency. It has been used to learn dynamics, solve inverse problems and facilitate design, and is at its inception of impact. Current successes have concentrated on general physics models such as rigid bodies, deformable sheets, etc., assuming relatively simple structures and forces. Their granularity is intrinsically coarse and therefore incapable of modelling complex physical phenomena. Fine-grained models are still to be developed to incorporate sophisticated material structures and force interactions with gradient-based learning. Following this motivation, we propose a new differentiable fabrics model for composite materials such as cloths, where we dive into the granularity of yarns and model individual yarn physics and yarn-to-yarn interactions. To this end, we propose several differentiable forces, whose counterparts in empirical physics are indifferentiable, to facilitate gradient-based learning. These forces, albeit applied to cloths, are ubiquitous in various physical systems. Through comprehensive evaluation and comparison, we demonstrate our model's explicability in learning meaningful physical parameters, versatility in incorporating complex physical structures and heterogeneous materials, data-efficiency in learning, and high-fidelity in capturing subtle dynamics.
翻译:不同的物理学模型将物理模型与基于梯度的学习结合起来,以提供模型的可复制性和数据效率。它被用于学习动态学、解决逆向问题和促进设计,并且处于影响初始阶段。目前的成功集中在一般物理模型上,如僵硬体体、变形片等,假设相对简单的结构和力量。它们的颗粒性本质上是粗糙的,因此无法模拟复杂的物理现象。细微的微粒模型尚待开发,以纳入复杂的材料结构,并迫使与基于梯度的学习进行互动。根据这一动机,我们提出了一个新的不同的复合材料结构模型,如布料,我们在此过程中潜入铁线和单线模型的颗粒体和线状物理和线状体相互作用等。为此,我们提出了几种不同的力量,这些力量在实验物理学中的对应方是无差别的,因此无法模拟以坡度为基础的学习。这些力量尽管适用于布料,但在各种物理系统中是无处不在的。通过全面的评估和比较,我们展示了我们的模型在学习有意义的物理参数方面的可复制性,在复杂的物理结构中,在学习复杂的物理结构中的易变化和数据结构中,在学习高精度方面,在学习高度的物理结构中,多变变性中,我们展示了我们模型的可复制性。