论文标题
通过机器学习重新发现轨道力学
Rediscovering orbital mechanics with machine learning
论文作者
论文摘要
我们提出了一种使用机器学习来自动从观测值中发现真实物理系统的管理方程和隐藏属性的方法。我们训练一个“图形神经网络”,以模拟30年的轨迹数据中太阳系太阳,行星和大号卫星的动态。然后,我们使用符号回归来发现神经网络隐含学到的力定律的分析表达,我们的结果表明这等同于牛顿的引力法。所需的关键假设是转化和旋转肩rovariance,以及牛顿的第二和第三运动定律。我们的方法正确地发现了符号力法的形式。此外,我们的方法不需要关于行星,卫星或物理常数的任何假设。他们也通过我们的方法准确地推断出它们。但是,当然,自艾萨克·牛顿(Isaac Newton)以来,人们就已经知道了经典的重力定律,但我们的结果是一种验证,即我们的方法可以从观察到的数据中发现未知的法律和隐藏特性。更广泛地说,这项工作是实现机器学习潜力加速科学发现的潜力的关键步骤。
We present an approach for using machine learning to automatically discover the governing equations and hidden properties of real physical systems from observations. We train a "graph neural network" to simulate the dynamics of our solar system's Sun, planets, and large moons from 30 years of trajectory data. We then use symbolic regression to discover an analytical expression for the force law implicitly learned by the neural network, which our results showed is equivalent to Newton's law of gravitation. The key assumptions that were required were translational and rotational equivariance, and Newton's second and third laws of motion. Our approach correctly discovered the form of the symbolic force law. Furthermore, our approach did not require any assumptions about the masses of planets and moons or physical constants. They, too, were accurately inferred through our methods. Though, of course, the classical law of gravitation has been known since Isaac Newton, our result serves as a validation that our method can discover unknown laws and hidden properties from observed data. More broadly this work represents a key step toward realizing the potential of machine learning for accelerating scientific discovery.