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    | Titel | A method to generate fully multi-scale optimal interpolation by combining efficient single process analyses, illustrated by a DINEOF analysis spiced with a local optimal interpolation |  
    | VerfasserIn | J.-M. Beckers, A. Barth, I. Tomažić, A. Alvera-Azcárate |  
    | Medientyp | Artikel 
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    | Sprache | Englisch 
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    | ISSN | 1812-0784 
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    | Digitales Dokument | URL |  
    | Erschienen | In: Ocean Science ; 10, no. 5 ; Nr. 10, no. 5 (2014-10-30), S.845-862 |  
    | Datensatznummer | 250117071 
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    | Publikation (Nr.) |  copernicus.org/os-10-845-2014.pdf |  
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        | Zusammenfassung |  
        | We present a method in which the optimal interpolation of
  multi-scale processes can be expanded into a succession of simpler
  interpolations. First, we prove how the optimal analysis of
  a superposition of two processes can be obtained by different
  mathematical formulations involving iterations and analysis focusing
  on a single process. From the different mathematical equivalent
  formulations, we then select the most efficient ones by analyzing the
  behavior of the different possibilities in a simple and well-controlled test case. The clear guidelines deduced from this
  experiment are then applied to a real situation in which we combine
  large-scale analysis of hourly Spinning Enhanced Visible and Infrared Imager (SEVIRI) satellite images using data interpolating empirical orthogonal functions (DINEOF) with a local optimal interpolation using a Gaussian covariance. It
  is shown that the optimal combination indeed provides the best
  reconstruction and can therefore be exploited to extract the maximum
  amount of useful information from the original data. |  
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