通用MPM仿真的广义本构模型及微分物理逆学习

IF 1.4 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING Proceedings of the ACM on computer graphics and interactive techniques Pub Date : 2023-08-16 DOI:10.1145/3606925
Haozhe Su, Xuan Li, Tao Xue, Chenfanfu Jiang, Mridul Aanjaneya
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引用次数: 0

摘要

我们提出了一个广义本构模型,用于无粘性流体、牛顿粘度、超弹性、粘塑性、弹塑性以及由于这些行为的混合而产生的其他物理效应的通用物理模拟。我们公式背后的关键思想是设计一个广义基尔霍夫应力张量,该张量可以描述超弹性、牛顿粘度和无粘流体,并使用预投影和后校正规则来模拟涉及塑性的材料行为,包括弹塑性和粘塑性。我们展示了如何将我们的广义基尔霍夫应力张量耦合到一个广义本构模型中,该模型允许仅通过改变参数值来模拟不同的材料行为。我们对特定本构模型的物理模拟进行了几次并排比较,以表明我们的广义模型产生了视觉上相似的结果。更值得注意的是,我们的公式允许使用可微分物理模拟直接从数据中反向学习未知材料特性。我们展示了几个3D模拟,以突出我们的方法的稳健性,即使使用多种不同的材料。据我们所知,我们的方法是第一个在不对数据做出明确假设的情况下恢复未知材料特性的知识。
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A Generalized Constitutive Model for Versatile MPM Simulation and Inverse Learning with Differentiable Physics
We present a generalized constitutive model for versatile physics simulation of inviscid fluids, Newtonian viscosity, hyperelasticity, viscoplasticity, elastoplasticity, and other physical effects that arise due to a mixture of these behaviors. The key ideas behind our formulation are the design of a generalized Kirchhoff stress tensor that can describe hyperelasticity, Newtonian viscosity and inviscid fluids, and the use of pre-projection and post-correction rules for simulating material behaviors that involve plasticity, including elastoplasticity and viscoplasticity. We show how our generalized Kirchhoff stress tensor can be coupled together into a generalized constitutive model that allows the simulation of diverse material behaviors by only changing parameter values. We present several side-by-side comparisons with physics simulations for specific constitutive models to show that our generalized model produces visually similar results. More notably, our formulation allows for inverse learning of unknown material properties directly from data using differentiable physics simulations. We present several 3D simulations to highlight the robustness of our method, even with multiple different materials. To the best of our knowledge, our approach is the first to recover the knowledge of unknown material properties without making explicit assumptions about the data.
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