Published August 7, 2023
| Version v1
Journal article
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Discovering conservation laws using optimal transport and manifold learning
- 1. University of Chicago
- 2. Massachusetts Institute of Technology
Description
Conservation laws are key theoretical and practical tools for understanding, characterizing, and modeling nonlinear dynamical systems. However, for many complex systems, the corresponding conserved quantities are difficult to identify, making it hard to analyze their dynamics and build stable predictive models. Current approaches for discovering conservation laws often depend on detailed dynamical information or rely on black box parametric deep learning methods. We instead reformulate this task as a manifold learning problem and propose a non-parametric approach for discovering conserved quantities. We test this new approach on a variety of physical systems and demonstrate that our method is able to both identify the number of conserved quantities and extract their values. Using tools from optimal transport theory and manifold learning, our proposed method provides a direct geometric approach to identifying conservation laws that is both robust and interpretable without requiring an explicit model of the system nor accurate time information.
Data availability
The data in this study can be generated using the publicly available data generation scripts provided at https://github.com/peterparity/conservation-laws-manifold-learning. An archived version has also been deposited in the Zenodo database https://doi.org/10.5281/zenodo.814448137.
All the code necessary for reproducing our results is publicly available at https://github.com/peterparity/conservation-laws-manifold-learning. An archived version has also been deposited in the Zenodo database https://doi.org/10.5281/zenodo.814448137.
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Additional details
Identifiers
- DOI
- 10.1038/s41467-023-40325-7
- Other
- oai:uchicago.tind.io:7133
Funding
- Schmidt Futures
- Eric and Wendy Schmidt AI in Science Postdoctoral Fellowship
- U.S. Department of Defense
- National Defense Science & Engineering Graduate Fellowship Program
- National Science Foundation
- PHY-2019786
- U.S. Army Research Office
- W911NF-18-2-0048
- Air Force Office of Scientific Research
- FA9550-21-1-0317
- United States Air Force Research Laboratory
- United States Air Force Artificial Intelligence Accelerator