Learning Binary Black Hole Orbital Dynamics with Neural Ordinary Differential Equations (Neural ODEs)
ORAL
Abstract
Neural ordinary differential equations (neural ODEs) provide a machine learning framework for modeling dynamical systems, where the time evolution is described by a combination of known physics and data-driven components. Rather than learning the full dynamics from scratch, one can embed the established lower-order terms of the governing equations and use neural networks to represent unknown or higher-order corrections. This hybrid approach is particularly valuable in gravitational-wave astronomy, where accurate modeling of binary black hole dynamics underpins the waveform templates used by detectors such as the Laser Interferometer Gravitational-Wave Observatory (LIGO). In order to infer the properties of binary black hole systems from the observed signals, it is necessary to have a comprehensive template bank which spans the parameter space. However, creating one fully accurate template can take weeks on a supercomputer. By using neural networks to learn portions of the underlying equations of motion for binary black hole systems, we aim to accelerate and refine the template creation process. We present a proof of concept of a set of trained neural networks which accurately replicate Keplerian orbital dynamics consisting of a conservative Keplerian Hamiltonian with an additional Post-Newtonian energy loss term due to gravitational wave radiation. Application of the approach to a Keplerian system with additional environmental effects is also discussed. Finally, we will consider application of the framework to the Effective One-Body (EOB) formalism used to describe the evolution of binary black hole systems.
*We would like to thank the University of Rhode Island College of Arts and Sciences Student Fellows Program and the NASA Rhode Island Space Grant Consortium for generously funding the project. We would also like to acknowledge NSF grants AST-2407453, AST-2407454, and PHY-2512902.
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Presenters
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Morgan Beck
- University of Rhode Island