2019
DOI: 10.1029/2018ms001439
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Initialization and Ensemble Generation for Decadal Climate Predictions: A Comparison of Different Methods

Abstract: Five initialization and ensemble generation methods are investigated with respect to their impact on the prediction skill of the German decadal prediction system "Mittelfristige Klimaprognose" (MiKlip). Among the tested methods, three tackle aspects of model-consistent initialization using the ensemble Kalman filter, the filtered anomaly initialization, and the initialization method by partially coupled spin-up (MODINI). The remaining two methods alter the ensemble generation: the ensemble dispersion filter co… Show more

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Cited by 39 publications
(46 citation statements)
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References 81 publications
(130 reference statements)
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“…For an analysis of the MPI-ESM performance with respect to its resolution see (Müller et al 2018). The MPI-ESM in similar configuration was recently used for decadal predictions (Marotzke et al 2016;Kröger et al 2018;Polkova et al 2019). The historical simulations that are used as input for the EOF analysis were forced using the CMIP5 solar irradiance data, aerosol and greenhouse gas concentrations (Taylor et al 2012).…”
Section: Model and Input For The Eof Analysismentioning
confidence: 99%
See 1 more Smart Citation
“…For an analysis of the MPI-ESM performance with respect to its resolution see (Müller et al 2018). The MPI-ESM in similar configuration was recently used for decadal predictions (Marotzke et al 2016;Kröger et al 2018;Polkova et al 2019). The historical simulations that are used as input for the EOF analysis were forced using the CMIP5 solar irradiance data, aerosol and greenhouse gas concentrations (Taylor et al 2012).…”
Section: Model and Input For The Eof Analysismentioning
confidence: 99%
“…Based on the long-standing experience gained in shortterm climate predictions (Rosati et al 1997;Sugiura et al 2008;Balmaseda and Anderson 2009), it can be expected that initial conditions respecting the model's dynamics should lead to the best prediction skill also in decadal predictions (Counillon et al 2014;Liu et al 2017;Mochizuki et al 2016;Polkova et al 2019). From a theoretical point of view, it appears obvious that only a dynamically consistent assimilation approach for generating initial conditions applied to the same coupled model that is being used to perform the predictions can lead to a best prediction skill through a reduced initial model adjustment shock.…”
Section: Introductionmentioning
confidence: 99%
“…It means verifying the analysis is statistically indistinguishable from the ensemble members in a perfect EPS (Toth et al ., ). However, it is also possible if the ensemble has no sharpness, meaning that the temporal variance of the ensemble mean is much smaller than the ensemble mean of the temporal variance of the single realizations (Polkova et al ., ). The present authors calculated the ratio between the temporal variance of the ensemble mean and time mean of variance between ensemble members (data not shown).…”
Section: Comparison Of the New Neps (22 Member) With The Old Neps (44mentioning
confidence: 99%
“…The ocean component is run with 1.5 • L40. A general skill assessment of decadal predictions performed with the LR system can be found in Polkova et al (2019). The higher resolution version (MPI-ESM-HR, termed HR hereafter) uses T127 (0.9375 • ) and 95 vertical levels for the atmosphere, and 0.4 • L40 for the ocean (Müller et al, 2018).…”
Section: Forecast System and Skill Measuresmentioning
confidence: 99%