Artificial Intelligence Approach to the Determination of Physical Properties of Eclipsing Binaries. I. The EBAI Project
A. Prsa, E.F. Guinan, E.J. Devinney, M. DeGeorge, D.H. Bradstreet,, J.M. Giammarco, C.R. Alcock, S.G. Engle

TL;DR
This paper presents an artificial neural network method for rapidly estimating physical parameters of eclipsing binary stars from light curves, enabling analysis of millions of systems efficiently and automatically.
Contribution
The study introduces a neural network approach trained on extensive model data to automatically determine binary star parameters, overcoming the bottleneck of manual analysis.
Findings
Neural network accurately estimates binary parameters from light curves.
Method processes thousands of light curves in seconds on standard hardware.
Successful testing on synthetic and real observational data.
Abstract
Achieving maximum scientific results from the overwhelming volume of astronomical data to be acquired over the next few decades will demand novel, fully automatic methods of data analysis. Artificial intelligence approaches hold great promise in contributing to this goal. Here we apply neural network learning technology to the specific domain of eclipsing binary (EB) stars, of which only some hundreds have been rigorously analyzed, but whose numbers will reach millions in a decade. Well-analyzed EBs are a prime source of astrophysical information whose growth rate is at present limited by the need for human interaction with each EB data-set, principally in determining a starting solution for subsequent rigorous analysis. We describe the artificial neural network (ANN) approach which is able to surmount this human bottleneck and permit EB-based astrophysical information to keep pace with…
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