2020
DOI: 10.1007/s10955-020-02525-z
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On Temporal Scale Separation in Coupled Data Assimilation with the Ensemble Kalman Filter

Abstract: Data assimilation for systems possessing many scales of motions is a substantial methodological and technological challenge. Systems with these features are found in many areas of computational physics and are becoming common thanks to increased computational power allowing to resolve finer scales and to couple together several sub-components. Coupled data assimilation (CDA) distinctively appears as a main concern in numerical weather and climate prediction with major efforts put forward by meteo services worl… Show more

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Cited by 28 publications
(46 citation statements)
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“…This is just one example. Chemical observations are also sensitive to wind speed (Valin et al, 2013;Laughner et al, 2016) and planetary boundary layer (PBL) dynamics. Examples of the beneficial information flow across the two subsystems include the improvement in cloud distributions after assimilating aerosols (Saide et al, 2012) and the potential for improvement in temperature, wind and cyclone development during dust storms via assimilation of aerosol optical depth (AOD) (Reale et al, 2011(Reale et al, , 2014.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…This is just one example. Chemical observations are also sensitive to wind speed (Valin et al, 2013;Laughner et al, 2016) and planetary boundary layer (PBL) dynamics. Examples of the beneficial information flow across the two subsystems include the improvement in cloud distributions after assimilating aerosols (Saide et al, 2012) and the potential for improvement in temperature, wind and cyclone development during dust storms via assimilation of aerosol optical depth (AOD) (Reale et al, 2011(Reale et al, , 2014.…”
Section: Introductionmentioning
confidence: 99%
“…Improvement in stratospheric winds by assimilating chemical tracers has also been demonstrated (Peuch et al, 2000;Semane et al, 2009;Milewski and Bourqui, 2011;Allen et al, 2013;Chu et al, 2013). Examples of joint chemistry-meteorology assimilation in simpler models include studies by Allen et al (2014Allen et al ( , 2015, Haussaire and Bocquet (2016), Emili et al (2016), Ménard et al (2019), andTondeur et al (2020). Among the challenges that must be addressed as we begin to understand the potential benefits of joint assimilation of physical state variables and composition are the aspects of two linked subsystems (meteorology and chemistry) that can be most efficiently improved by linking them to observed chemical fields.…”
Section: Introductionmentioning
confidence: 99%
“…[37]). MAOOAM has also been recently used to study coupled DA methods [38,39]. Unsurprisingly, in MAOOAM, the ocean variables are considered the slow ones while the atmospheric variables are the fast ones.…”
Section: Application To a Low-order Coupled Ocean-atmosphere Model (Amentioning
confidence: 99%
“…This degeneracy often arises in systems with multiple scales or in coupled dynamics (Vannitsem and Lucarini, 2016a;De Cruz et al, 2018a): the degeneracy usually regards the unstable-neutral portion of the LE spectrum. In these cases it is necessary to increase the ensemble size to account for all of the degenerate modes (Tondeur et al, 2020;Carrassi et al, 2021).…”
Section: Lyapunov Vectors and Related Measures Of Chaos In A Nutshellmentioning
confidence: 99%