Learning force laws in many-body systems

ORAL

Abstract

Scientific laws describing natural systems may be more complex than our intuition can handle, and thus how we discover laws must change. Machine learning (ML) models can analyze large quantities of data, but their structure should match the underlying physical constraints to provide useful insight. Here we demonstrate a ML approach that incorporates such physical intuition to infer force laws in dusty plasma experiments. Trained on 3D particle trajectories, the model accounts for inherent symmetries and non-identical particles, accurately learns the effective non-reciprocal forces between particles, and extracts each particle's mass and charge. The model's accuracy (R2 > 0.99) points to new physics in dusty plasma beyond the resolution of current theories and demonstrates how ML-powered approaches can guide new routes of scientific discovery in many-body systems.

* This material is based upon work supported by the National Science Foundation under Grant No. 2010524, the U.S. Department of Energy, Office of Science, Office of Fusion Energy Sciences program under Award No. DESC0021290, and by the Simons Foundation Investigators Program.

Presenters

  • wentao yu

    Emory University

Authors

  • wentao yu

    Emory University

  • Eslam Abdelaleem

    Emory University

  • Ilya M Nemenman

    Emory, Emory University

  • Justin C Burton

    Emory University, Department of Physics