• Media type: E-Article
  • Title: Partial analysis increments as diagnostic for LETKF data assimilation systems
  • Contributor: Diefenbach, Theresa [Author]; Craig, George [Author]; Keil, Christian [Author]; Scheck, Leonhard [Author]; Weissmann, Martin [Author]
  • Published: John Wiley & Sons, Ltd; Chichester, UK, 2023-04-03
  • Language: English
  • DOI: https://doi.org/10.1002/qj.4419
  • Keywords: satellite data assimilation ; ensemble data assimilation ; analysis influence ; localisation ; convective‐scale ; NWP
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  • Description: Abstract Local ensemble transform Kalman filters (LETKFs) allow explicit calculation of the Kalman gain, and by this the contribution of individual observations to the analysis field. Though this is a known feature, the information on the analysis contribution of individual observations (partial analysis increment) has not been used as systematic diagnostic up to now despite providing valuable information. In this study, we demonstrate three potential applications based on partial analysis increments in the regional modelling system of Deutscher Wetterdienst and propose their use for optimising LETKF data assimilation systems, in particular with respect to satellite data assimilation and localisation. While exact calculation of partial analysis increments would require saving the large, five‐dimensional ensemble weight matrix in the analysis step, it is possible to compute an approximation from standard LETKF output. We calculate the Kalman gain based on ensemble analysis perturbations, which is an approximation in the case of localisation. However, this only introduces minor errors, as the localisation function changes very gradually among nearby grid points. On the other hand, the influence of observations always depends on the presence of other observations and settings for the observation error and for localisation. However, the influence of observations behaves approximately linearly, meaning that the assimilation of other observations primarily decreases the magnitude of the influence, but it does not change the overall structure of the partial analysis increments. This means that the calculation of partial analysis increments can be used as an efficient diagnostic to investigate the three‐dimensional influence of observations in the assimilation system. Furthermore, the diagnostic can be used to detect whether the influence of additional experimental observations is in accordance with other observations without conducting computationally expensive single‐observation experiments. Last but not least, the ...
  • Access State: Open Access