An innovative hybrid neuro-wavelet method for reconstruction of missing data in astronomical photometric surveys

  • Authors:
  • Giacomo Capizzi;Christian Napoli;Lucio Paternò

  • Affiliations:
  • Dpt. of Electric, Electronic and Informatic Eng., University of Catania, Italy;Department of Physics and Astronomy, University of Catania, Italy;Astrophysical Observatory of Catania, National Institute for Astrophysics, Italy

  • Venue:
  • ICAISC'12 Proceedings of the 11th international conference on Artificial Intelligence and Soft Computing - Volume Part I
  • Year:
  • 2012

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Abstract

The investigation of solar-like oscillations for probing the star interiors has encountered a tremendous growth in the last decade. For ground based observations the most important difficulties in properly identifying the true oscillation frequencies of the stars are produced by the gaps in the observation time-series and the presence of atmospheric plus the intrinsic stellar granulation noise, unavoidable also in the case of space observations. In this paper an innovative neuro-wavelet method for the reconstruction of missing data from photometric signals is presented. The prediction of missing data was done by using a composite neuro-wavelet reconstruction system composed by two neural networks separately trained. The combination of these two neural networks obtains a "forward and backward" reconstruction. This technique was able to provide reconstructed data with an error greatly lower than the absolute a priori measurement error. The reconstructed signal frequency spectrum matched the expected spectrum with high accuracy.