Neural Symplectic Integrator with Hamiltonian Inductive Bias for the Gravitational $N$-body Problem [CL]

http://arxiv.org/abs/2111.15631


The gravitational $N$-body problem, which is fundamentally important in astrophysics to predict the motion of $N$ celestial bodies under the mutual gravity of each other, is usually solved numerically because there is no known general analytical solution for $N>2$. Can an $N$-body problem be solved accurately by a neural network (NN)? Can a NN observe long-term conservation of energy and orbital angular momentum? Inspired by Wistom & Holman (1991)’s symplectic map, we present a neural $N$-body integrator for splitting the Hamiltonian into a two-body part, solvable analytically, and an interaction part that we approximate with a NN. Our neural symplectic $N$-body code integrates a general three-body system for $10^{5}$ steps without diverting from the ground truth dynamics obtained from a traditional $N$-body integrator. Moreover, it exhibits good inductive bias by successfully predicting the evolution of $N$-body systems that are no part of the training set.

Read this paper on arXiv…

M. Cai, S. Zwart and D. Podareanu
Fri, 10 Dec 21
37/94

Comments: 7 pages, 2 figures, accepted for publication at the NeurIPS 2021 workshop “Machine Learning and the Physical Sciences”