Published February 6, 2023
| Version v1
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Interpreting Neural Operators: How Nonlinear Waves Propagate in Nonreciprocal Solids
Description
We present a data-driven pipeline for model building that combines interpretable machine learning, hydrodynamic theories, and microscopic models. The goal is to uncover the underlying processes governing nonlinear dynamics experiments. We exemplify our method with data from microfluidic experiments where crystals of streaming droplets support the propagation of nonlinear waves absent in passive crystals. By combining physics-inspired neural networks, known as neural operators, with symbolic regression tools, we infer the solution, as well as the mathematical form, of a nonlinear dynamical system that accurately models the experimental data. Finally, we interpret this continuum model from fundamental physics principles. Informed by machine learning, we coarse grain a microscopic model of interacting droplets and discover that nonreciprocal hydrodynamic interactions stabilize and promote nonlinear wave propagation.
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PhysRevLett.130.063601.pdf
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Additional details
Identifiers
- DOI
- 10.1103/PhysRevLett.130.063601
- Other
- oai:uchicago.tind.io:14192
Funding
- European Research Council
- 101019141
- National Science Foundation
- DMR-2118415
- National Science Foundation
- DMR-2011864
- Army Research Office
- W911NF-22-2-0109
- Army Research Office
- W911NF-23-1-0212
- Chan Zuckerberg Initiative
- National Science Foundation
- 2317138
- National Science Foundation
- DMR-2011854