Rediscovering orbital mechanics with machine learning

02/04/2022
by   Pablo Lemos, et al.
0

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.

READ FULL TEXT
research
07/11/2023

Discovering Symbolic Laws Directly from Trajectories with Hamiltonian Graph Neural Networks

The time evolution of physical systems is described by differential equa...
research
05/08/2020

Parsimonious neural networks learn classical mechanics, its underlying symmetries, and an accurate time integrator

Machine learning is playing an increasing role in the physical sciences ...
research
05/26/2023

An end-to-end strategy for recovering a free-form potential from a snapshot of stellar coordinates

New large observational surveys such as Gaia are leading us into an era ...
research
10/16/2018

The Newton Scheme for Deep Learning

We introduce a neural network (NN) strictly governed by Newton's Law, wi...
research
09/03/2021

Integration of Data and Theory for Accelerated Derivable Symbolic Discovery

Scientists have long aimed to discover meaningful equations which accura...
research
09/12/2019

Learning Symbolic Physics with Graph Networks

We introduce an approach for imposing physically motivated inductive bia...
research
08/26/2021

Machine Learning for Discovering Effective Interaction Kernels between Celestial Bodies from Ephemerides

Building accurate and predictive models of the underlying mechanisms of ...

Please sign up or login with your details

Forgot password? Click here to reset