论文标题
数据驱动的连续性动力学通过传输键二重性
Data-Driven Continuum Dynamics via Transport-Teleport Duality
论文作者
论文摘要
近年来,机器学习方法已被广泛用于研究具有管理方程式解决的物理系统。物理学家和工程师正在将数据驱动的范式构建为物理科学的替代方法。在这种范式的变化中,深度学习的方法是发挥关键作用。但是,大多数学习体系结构并未以连续性方程的形式固有地纳入保护定律,并且它们需要密集的数据来学习保守数量的动态。在这项研究中,我们介绍了一种巧妙的数学变换,以代表经典动态,作为数量的消失和重新出现的重点过程,该过程大大降低了模型的复杂性和用于运输现象的机器学习的模型复杂性和训练数据。我们证明,只有一些观察数据和简单的学习模型就足以学习现实世界对象的动态。该方法不需要明确使用管理方程,仅取决于观察数据。因为连续性方程是任何保守数量都应遵守的一般方程式,因此适用性可能从物理和医学科学或数据保守数量的任何领域范围。
In recent years, machine learning methods have been widely used to study physical systems that are challenging to solve with governing equations. Physicists and engineers are framing the data-driven paradigm as an alternative approach to physical sciences. In this paradigm change, the deep learning approach is playing a pivotal role. However, most learning architectures do not inherently incorporate conservation laws in the form of continuity equations, and they require dense data to learn the dynamics of conserved quantities. In this study, we introduce a clever mathematical transform to represent the classical dynamics as a point-wise process of disappearance and reappearance of a quantity, which dramatically reduces model complexity and training data for machine learning of transport phenomena. We demonstrate that just a few observational data and a simple learning model can be enough to learn the dynamics of real-world objects. The approach does not require the explicit use of governing equations and only depends on observation data. Because the continuity equation is a general equation that any conserved quantity should obey, the applicability may range from physical to social and medical sciences or any field where data are conserved quantities.