论文标题

INO:不变的神经操作员,用于学习具有动量保护的复杂物理系统

INO: Invariant Neural Operators for Learning Complex Physical Systems with Momentum Conservation

论文作者

Liu, Ning, Yu, Yue, You, Huaiqian, Tatikola, Neeraj

论文摘要

神经操作员是隐藏的管理方程式的隐式解决方案操作员,最近已成为学习复杂现实世界物理系统响应的流行工具。然而,迄今为止,大多数神经操作员应用程序都是数据驱动的,这忽略了数据中基本物理定律的内在保存。在本文中,我们介绍了一种新颖的整体神经操作架体系结构,以自动保证具有基本保护法的物理模型。特别是,通过用其在内核空间中的不变对应物代替框架依赖的位置信息,提出的神经操作员是通过设计翻译和旋转不变的,因此遵守线性和角度动量的保护定律。作为应用,我们证明了我们模型从合成和实验数据集学习复杂的材料行为方面的表现和功效,并表明,通过自动满足这些基本的物理定律,我们学到的神经操作员不仅可以在处理经过翻译和旋转的数据集中概括,还可以实现与基本的Neural Neural neural Operators相比。

Neural operators, which emerge as implicit solution operators of hidden governing equations, have recently become popular tools for learning responses of complex real-world physical systems. Nevertheless, the majority of neural operator applications has thus far been data-driven, which neglects the intrinsic preservation of fundamental physical laws in data. In this paper, we introduce a novel integral neural operator architecture, to learn physical models with fundamental conservation laws automatically guaranteed. In particular, by replacing the frame-dependent position information with its invariant counterpart in the kernel space, the proposed neural operator is by design translation- and rotation-invariant, and consequently abides by the conservation laws of linear and angular momentums. As applications, we demonstrate the expressivity and efficacy of our model in learning complex material behaviors from both synthetic and experimental datasets, and show that, by automatically satisfying these essential physical laws, our learned neural operator is not only generalizable in handling translated and rotated datasets, but also achieves state-of-the-art accuracy and efficiency as compared to baseline neural operator models.

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