• Title of article

    Hierarchical Classification of Variable Stars Using Deep Convolutional Neural Networks

  • Author/Authors

    Abdollahi ، Mahdi School of Astronomy - Institute for Research in Fundamental Sciences (IPM) , Torabi ، Nooshin Department of Physics - Sharif University of Technology , Raeisi ، Sadegh Department of Physics - Sharif University of Technology , Rahvar ، Sohrab Department of Physics - Sharif University of Technology

  • From page
    31
  • To page
    44
  • Abstract
    The importance of using fast and automatic methods to classify variable stars for large amounts of data is undeniable. There have been many attempts to classify variable stars by traditional algorithms like Random Forest. In recent years, neural networks as classifiers have come to notice because of their lower computational cost compared to traditional algorithms. This paper uses the Hierarchical Classification technique, which contains two main steps of predicting class and then subclass of stars. All the models in both steps have same network structure and we test both Convolutional Neural Networks (CNN) and Recurrent Neural Networks (RNN). Our pre-processing method uses light curves and period of stars as input data. We consider most of the classes and subclasses of variable stars in OGLE-IV database and show that using Hierarchical Classification technique and designing appropriate preprocessing can increase accuracy of predicting smaller classes, ACep and T2Cep. We obtain an accuracy of 98% for class classification and 93% for subclasses classification.
  • Keywords
    Variable Stars , Hierarchical Method , Convolutional Neural Networks
  • Journal title
    Iranian Journal of Astronomy and Astrophysics (IJAA)
  • Journal title
    Iranian Journal of Astronomy and Astrophysics (IJAA)
  • Record number

    2741260