Identifying underlying governing equations and physical relevant information from high-dimensional observable data has always been a challenge in physical sciences. With the recent advances in sensing technology and available datasets, various machine learning techniques have made it possible to distill underlying mathematical models from sufficiently clean and usable datasets. However, most of these techniques rely on prior knowledge of the system and noise-free data obtained by simulation of physical system or by direct measurements of the signals. Hence, the inference obtained by using these techniques is often unreliable to be used in the real world where observed data is noisy and requires feature engineering to extract relevant features. In this work, we provide a deep-learning framework that extracts relevant information from real-world videos of highly stochastic systems, with no prior knowledge and distills the underlying governing equation representing the system. We demonstrate this approach on videos of confined multi-agent/particle systems of ants, termites, fishes as well as a simulated confined multi-particle system with elastic collision interactions. Furthermore, we explore how these seemingly diverse systems have predictable underlying behavior. In this study, we have used computer vision and motion tracking to extract spatial trajectories of individual agents/particles in a system, and by using LSTM VAE we projected these features on a low-dimensional latent space from which the underlying differential equation representing the data was extracted using SINDy framework.
翻译:在物理科学方面,确定高维可观测数据的基本方程式和物理相关信息始终是一项挑战。随着遥感技术和现有数据集的最近进步,各种机器学习技术使得有可能从足够清洁和可用的数据集中提取基本数学模型,然而,这些技术大多依赖通过物理系统模拟或直接测量信号而获得的系统先前知识和无噪音数据。因此,使用这些技术获得的推论往往不可靠,无法在观测到的数据十分吵闹、需要地貌工程来提取相关特征的真实世界中使用。在这项工作中,我们提供了一个深层次学习框架,从高度随机系统的真实世界视频中提取相关信息,而事先没有这方面的知识,并提取了代表该系统的基本治理方程式。我们用这种方法演示了由蚂蚁、白蚁、鱼类等离解多试/粒系统以及模拟的多粒子系统以及弹性碰撞相互作用。此外,我们探索了这些看上去多样化的系统如何具有可预测的基本行为。在这项研究中,我们使用了计算机视野和运动图象学系系统,用以提取这些低空格的图像,从而利用这些深层次的系统,从这些深层层的磁体中提取了我们所观测的磁力。