English

Parameter Estimation for Open Clusters using an Artificial Neural Network with a QuadTree-based Feature Extractor

Astrophysics of Galaxies 2023-11-07 v1 Instrumentation and Methods for Astrophysics Solar and Stellar Astrophysics

Abstract

With the unprecedented increase of known star clusters, quick and modern tools are needed for their analysis. In this work, we develop an artificial neural network trained on synthetic clusters to estimate the age, metallicity, extinction, and distance of GaiaGaia open clusters. We implement a novel technique to extract features from the colour-magnitude diagram of clusters by means of the QuadTree tool and we adopt a multi-band approach. We obtain reliable parameters for 5400\sim 5400 clusters. We demonstrate the effectiveness of our methodology in accurately determining crucial parameters of GaiaGaia open clusters by performing a comprehensive scientific validation. In particular, with our analysis we have been able to reproduce the Galactic metallicity gradient as it is observed by high-resolution spectroscopic surveys. This demonstrates that our method reliably extracts information on metallicity from colour-magnitude diagrams (CMDs) of stellar clusters. For the sample of clusters studied, we find an intriguing systematic older age compared to previous analyses present in the literature. This work introduces a novel approach to feature extraction using a QuadTree algorithm, effectively tracing sequences in CMDs despite photometric errors and outliers. The adoption of ANNs, rather than Convolutional Neural Networks, maintains the full positional information and improves performance, while also demonstrating the potential for deriving clusters' parameters from simultaneous analysis of multiple photometric bands, beneficial for upcoming telescopes like the Vera Rubin Observatory. The implementation of ANN tools with robust isochrone fit techniques could provide further improvements in the quest for open clusters' parameters.

Keywords

Cite

@article{arxiv.2311.03009,
  title  = {Parameter Estimation for Open Clusters using an Artificial Neural Network with a QuadTree-based Feature Extractor},
  author = {L. Cavallo and L. Spina and G. Carraro and L. Magrini and E. Poggio and T. Cantat-Gaudin and M. Pasquato and S. Lucatello and S. Ortolani and J. Schiappacasse-Ulloa},
  journal= {arXiv preprint arXiv:2311.03009},
  year   = {2023}
}

Comments

24 pages, 15 figures, Accepted in The Astronomical Journal. Temporally, data produced in this work are available at https://phisicslollo0.github.io/cavallo23.html

R2 v1 2026-06-28T13:12:32.421Z