2012
DOI: 10.1016/j.ocemod.2012.05.002
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Generation of analysis and consistent error fields using the Data Interpolating Variational Analysis (DIVA)

Abstract: The Data Interpolating Variational Analysis (Diva) is a method designed to interpolate irregularly-spaced, noisy data onto any desired location, in most cases on regular grids. It is the combination of a particular methodology, based on the minimisation of a cost function, and a numerically efficient method, based on a finite-element solver. The cost function penalises the misfit between the observations and the reconstructed field, as well as the regularity or smoothness of the field. The method bears similar… Show more

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Cited by 172 publications
(145 citation statements)
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“…The coefficients of Eq. (A1) can be determined from (1) the relative weights w i attributed to each observation d i , (2) the correlation length L and (3) the signalto-noise ratio λ (Troupin et al, 2012). The analyses presented in this study were achieved with equal weights w i = 1, L = 0.8…”
Section: Discussionmentioning
confidence: 99%
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“…The coefficients of Eq. (A1) can be determined from (1) the relative weights w i attributed to each observation d i , (2) the correlation length L and (3) the signalto-noise ratio λ (Troupin et al, 2012). The analyses presented in this study were achieved with equal weights w i = 1, L = 0.8…”
Section: Discussionmentioning
confidence: 99%
“…In short, the DIVA interpolation software (http://modb. oce.ulg.ac.be/mediawiki/index.php/DIVA; Troupin et al, 2012) computes a gridded climatology obtained by minimizing a cost function which penalizes gradients and misfits with observations. The DIVA detrending algorithm (Capet et al, 2014) computes trends for each year, i.e., the average difference between data pertaining to this year and the spatial analysis at these data locations.…”
Section: Diva Analysismentioning
confidence: 99%
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“…Static interpolation approaches (e.g., optimal interpolation [Gandin, 1965;Reynolds and Smith, 1994], objective mapping [Wong et al, 2003;Böhme and Send, 2005;Böhme et al, 2008], and Data-Interpolating Variational Analysis [Troupin et al, 2010[Troupin et al, , 2012Korablev, 2014 in addition, exploit modeled physics and provide temporally and spatially varying 4-dimensional analysis fields. The former approaches need a scale representing the mean field, while the latter, in addition, needs spatial and temporal scales representing the anomaly field to fully exploit the information embedded in in-situ data.…”
Section: Resultsmentioning
confidence: 99%
“…The present scale estimates pose a requirement from a basin-scale data assimilation on a sampling strategy. Static interpolation approaches (e.g., optimal interpolation (Gandin, 1965;Reynolds and Smith, 1994), objective mapping (Wong et al, 2003;Böhme and Send, 2005;Böhme et al, 2008), and data-interpolating variational analyses (Troupin et al, 2010(Troupin et al, , 2012Korablev, 2014) exploit statistical information of data to derive a mean analysis field. Data assimilation approaches, in addition, exploit modeled physics and provide temporally and spatially varying fourdimensional analysis fields.…”
Section: Discussionmentioning
confidence: 99%