TY - JOUR
T1 - Sampling error correction evaluated using a convective-scale 1000-member ensemble
AU - Necker, Tobias
AU - Weissmann, Martin
AU - Ruckstuhl, Yvonne
AU - Anderson, Jeffrey
AU - Miyoshi, Takemasa
N1 - Publisher Copyright:
© 2020 American Meteorological Society.
PY - 2020/3/1
Y1 - 2020/3/1
N2 - State-of-the-art ensemble prediction systems usually provide ensembles with only 20-250 members for estimating the uncertainty of the forecast and its spatial and spatiotemporal covariance. Given that the degrees of freedom of atmospheric models are several magnitudes higher, the estimates are therefore substantially affected by sampling errors. For error covariances, spurious correlations lead to random sampling errors, but also a systematic overestimation of the correlation. A common approach to mitigate the impact of sampling errors for data assimilation is to localize correlations. However, this is a challenging task given that physical correlations in the atmosphere can extend over long distances. Besides data assimilation, sampling errors pose an issue for the investigation of spatiotemporal correlations using ensemble sensitivity analysis. Our study evaluates a statistical approach for correcting sampling errors. The applied sampling error correction isa lookup table-based approach and therefore computationally very efficient. We show that this approach substantially improves both the estimates of spatial correlations for data assimilation aswell as spatiotemporal correlations for ensemble sensitivity analysis. The evaluation is performed using the first convective-scale 1000-member ensemble simulation for central Europe. Correlations of the 1000-member ensemble forecast serve as truth to assess the performance of the sampling error correction for smaller subsets of the full ensemble. The sampling error correction strongly reduced both random and systematic errors for all evaluated variables, ensemble sizes, and lead times.
AB - State-of-the-art ensemble prediction systems usually provide ensembles with only 20-250 members for estimating the uncertainty of the forecast and its spatial and spatiotemporal covariance. Given that the degrees of freedom of atmospheric models are several magnitudes higher, the estimates are therefore substantially affected by sampling errors. For error covariances, spurious correlations lead to random sampling errors, but also a systematic overestimation of the correlation. A common approach to mitigate the impact of sampling errors for data assimilation is to localize correlations. However, this is a challenging task given that physical correlations in the atmosphere can extend over long distances. Besides data assimilation, sampling errors pose an issue for the investigation of spatiotemporal correlations using ensemble sensitivity analysis. Our study evaluates a statistical approach for correcting sampling errors. The applied sampling error correction isa lookup table-based approach and therefore computationally very efficient. We show that this approach substantially improves both the estimates of spatial correlations for data assimilation aswell as spatiotemporal correlations for ensemble sensitivity analysis. The evaluation is performed using the first convective-scale 1000-member ensemble simulation for central Europe. Correlations of the 1000-member ensemble forecast serve as truth to assess the performance of the sampling error correction for smaller subsets of the full ensemble. The sampling error correction strongly reduced both random and systematic errors for all evaluated variables, ensemble sizes, and lead times.
UR - https://www.scopus.com/pages/publications/85080122730
U2 - 10.1175/MWR-D-19-0154.1
DO - 10.1175/MWR-D-19-0154.1
M3 - Article
AN - SCOPUS:85080122730
SN - 0027-0644
VL - 148
SP - 1229
EP - 1249
JO - Monthly Weather Review
JF - Monthly Weather Review
IS - 3
ER -