Towards Complex Dynamic Physics System Simulation with Graph Neural ODEs

05/21/2023
by   Guangsi Shi, et al.
0

The great learning ability of deep learning models facilitates us to comprehend the real physical world, making learning to simulate complicated particle systems a promising endeavour. However, the complex laws of the physical world pose significant challenges to the learning based simulations, such as the varying spatial dependencies between interacting particles and varying temporal dependencies between particle system states in different time stamps, which dominate particles' interacting behaviour and the physical systems' evolution patterns. Existing learning based simulation methods fail to fully account for the complexities, making them unable to yield satisfactory simulations. To better comprehend the complex physical laws, this paper proposes a novel learning based simulation model- Graph Networks with Spatial-Temporal neural Ordinary Equations (GNSTODE)- that characterizes the varying spatial and temporal dependencies in particle systems using a united end-to-end framework. Through training with real-world particle-particle interaction observations, GNSTODE is able to simulate any possible particle systems with high precisions. We empirically evaluate GNSTODE's simulation performance on two real-world particle systems, Gravity and Coulomb, with varying levels of spatial and temporal dependencies. The results show that the proposed GNSTODE yields significantly better simulations than state-of-the-art learning based simulation methods, which proves that GNSTODE can serve as an effective solution to particle simulations in real-world application.

READ FULL TEXT
research
05/04/2021

Learning 3D Granular Flow Simulations

Recently, the application of machine learning models has gained momentum...
research
10/14/2020

Scalable Graph Networks for Particle Simulations

Learning system dynamics directly from observations is a promising direc...
research
07/26/2022

Physical Systems Modeled Without Physical Laws

Physics-based simulations typically operate with a combination of comple...
research
10/23/2017

Nauticle: a general-purpose particle-based simulation tool

Nauticle is a general-purpose numerical solver pursuing the easy adoptio...
research
07/27/2017

Dynamic Switching Networks

The concept of emergence is a powerful concept to explain very complex b...
research
04/26/2021

Dominant motion identification of multi-particle system using deep learning from video

Identifying underlying governing equations and physical relevant informa...
research
01/26/2022

Voronoi cell analysis: The shapes of particle systems

Many physical systems can be studied as collections of particles embedde...

Please sign up or login with your details

Forgot password? Click here to reset