DocumentCode :
1757704
Title :
Computational Intelligence Challenges and Applications on Large-Scale Astronomical Time Series Databases
Author :
Huijse, Pablo ; Estevez, P.A. ; Protopapas, Pavlos ; Principe, Jose C. ; Zegers, Pablo
Author_Institution :
Millennium Inst. of Astrophys., Chile
Volume :
9
Issue :
3
fYear :
2014
fDate :
Aug. 2014
Firstpage :
27
Lastpage :
39
Abstract :
Time-domain astronomy (TDA) is facing a paradigm shift caused by the exponential growth of the sample size, data complexity and data generation rates of new astronomical sky surveys. For example, the Large Synoptic Survey Telescope (LSST), which will begin operations in northern Chile in 2022, will generate a nearly 150 Petabyte imaging dataset of the southern hemisphere sky. The LSST will stream data at rates of 2 Terabytes per hour, effectively capturing an unprecedented movie of the sky. The LSST is expected not only to improve our understanding of time-varying astrophysical objects, but also to reveal a plethora of yet unknown faint and fast-varying phenomena. To cope with a change of paradigm to data-driven astronomy, the fields of astroinformatics and astrostatistics have been created recently. The new data-oriented paradigms for astronomy combine statistics, data mining, knowledge discovery, machine learning and computational intelligence, in order to provide the automated and robust methods needed for the rapid detection and classification of known astrophysical objects as well as the unsupervised characterization of novel phenomena. In this article we present an overview of machine learning and computational intelligence applications to TDA. Future big data challenges and new lines of research in TDA, focusing on the LSST, are identified and discussed from the viewpoint of computational intelligence/machine learning. Interdisciplinary collaboration will be required to cope with the challenges posed by the deluge of astronomical data coming from the LSST.
Keywords :
astronomy computing; data mining; object detection; statistical databases; time series; unsupervised learning; Big Data; LSST; Petabyte imaging dataset; TDA; astroinformatics; astronomical sky surveys; astrophysical object classification; astrophysical object detection; astrostatistics; computational intelligence; data complexity; data generation rates; data mining; data-driven astronomy; data-oriented paradigms; fast-varying phenomena; knowledge discovery; large synoptic survey telescope; large-scale astronomical time series databases; machine learning; sample size; southern hemisphere sky; time-domain astronomy; time-varying astrophysical objects; unknown faint plethora; unsupervised characterization; Astronomy; Computational intelligence; Databases; Large scale systems; Telescopes; Time domain analysis; Time series analysis;
fLanguage :
English
Journal_Title :
Computational Intelligence Magazine, IEEE
Publisher :
ieee
ISSN :
1556-603X
Type :
jour
DOI :
10.1109/MCI.2014.2326100
Filename :
6853469
Link To Document :
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