Literature DB >> 12672427

Neural networks in astronomy.

Roberto Tagliaferri1, Giuseppe Longo, Leopoldo Milano, Fausto Acernese, Fabrizio Barone, Angelo Ciaramella, Rosario De Rosa, Ciro Donalek, Antonio Eleuteri, Giancarlo Raiconi, Salvatore Sessa, Antonino Staiano, Alfredo Volpicelli.   

Abstract

In the last decade, the use of neural networks (NN) and of other soft computing methods has begun to spread also in the astronomical community which, due to the required accuracy of the measurements, is usually reluctant to use automatic tools to perform even the most common tasks of data reduction and data mining. The federation of heterogeneous large astronomical databases which is foreseen in the framework of the astrophysical virtual observatory and national virtual observatory projects, is, however, posing unprecedented data mining and visualization problems which will find a rather natural and user friendly answer in artificial intelligence tools based on NNs, fuzzy sets or genetic algorithms. This review is aimed to both astronomers (who often have little knowledge of the methodological background) and computer scientists (who often know little about potentially interesting applications), and therefore will be structured as follows: after giving a short introduction to the subject, we shall summarize the methodological background and focus our attention on some of the most interesting fields of application, namely: object extraction and classification, time series analysis, noise identification, and data mining. Most of the original work described in the paper has been performed in the framework of the AstroNeural collaboration (Napoli-Salerno).

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Year:  2003        PMID: 12672427     DOI: 10.1016/s0893-6080(03)00028-5

Source DB:  PubMed          Journal:  Neural Netw        ISSN: 0893-6080


  2 in total

1.  Accurate prediction of X-ray pulse properties from a free-electron laser using machine learning.

Authors:  A Sanchez-Gonzalez; P Micaelli; C Olivier; T R Barillot; M Ilchen; A A Lutman; A Marinelli; T Maxwell; A Achner; M Agåker; N Berrah; C Bostedt; J D Bozek; J Buck; P H Bucksbaum; S Carron Montero; B Cooper; J P Cryan; M Dong; R Feifel; L J Frasinski; H Fukuzawa; A Galler; G Hartmann; N Hartmann; W Helml; A S Johnson; A Knie; A O Lindahl; J Liu; K Motomura; M Mucke; C O'Grady; J-E Rubensson; E R Simpson; R J Squibb; C Såthe; K Ueda; M Vacher; D J Walke; V Zhaunerchyk; R N Coffee; J P Marangos
Journal:  Nat Commun       Date:  2017-06-05       Impact factor: 14.919

2.  Accurate prediction of mega-electron-volt electron beam properties from UED using machine learning.

Authors:  Zhe Zhang; Xi Yang; Xiaobiao Huang; Junjie Li; Timur Shaftan; Victor Smaluk; Minghao Song; Weishi Wan; Lijun Wu; Yimei Zhu
Journal:  Sci Rep       Date:  2021-07-06       Impact factor: 4.996

  2 in total

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