TY - JOUR
T1 - Implementation of Scale-Dependent Background-Error Covariance Localization in the Canadian Global Deterministic Prediction System
AU - Caron, Jean François
AU - Buehner, Mark
N1 - Publisher Copyright:
© 2022.
PY - 2022/9
Y1 - 2022/9
N2 - The approach of applying different amounts of horizontal localization to different ranges of background-error covariance horizontal scales as proposed by Buehner and Shlyaeva was recently implemented in the four-dimensional ensemble–variational (4DEnVar) data assimilation scheme of the global deterministic prediction system (GDPS) at Environment and Climate Change Canada operations. To maximize the benefits from this approach to reduce the sampling noise in the ensemble-derived background-error covariances, it was necessary to adopt a new weighting between the clima-tological and flow-dependent covariances that increases significantly the role of the latter. Thus, in December 2021 the GDPS became the first operational global deterministic medium-range weather forecasting system to rely completely on flow-dependent covariances in the troposphere and the lower stratosphere. The experiments that led to the adoption of these two related changes and their impacts on the forecasts up to 7 days for various regions of the globe during the boreal summer of 2019 and winter of 2020 are presented here. It is also illustrated that relying more on ensemble-derived cova-riances amplifies the positive impacts on the GDPS when the background ensemble generation strategy is improved.
AB - The approach of applying different amounts of horizontal localization to different ranges of background-error covariance horizontal scales as proposed by Buehner and Shlyaeva was recently implemented in the four-dimensional ensemble–variational (4DEnVar) data assimilation scheme of the global deterministic prediction system (GDPS) at Environment and Climate Change Canada operations. To maximize the benefits from this approach to reduce the sampling noise in the ensemble-derived background-error covariances, it was necessary to adopt a new weighting between the clima-tological and flow-dependent covariances that increases significantly the role of the latter. Thus, in December 2021 the GDPS became the first operational global deterministic medium-range weather forecasting system to rely completely on flow-dependent covariances in the troposphere and the lower stratosphere. The experiments that led to the adoption of these two related changes and their impacts on the forecasts up to 7 days for various regions of the globe during the boreal summer of 2019 and winter of 2020 are presented here. It is also illustrated that relying more on ensemble-derived cova-riances amplifies the positive impacts on the GDPS when the background ensemble generation strategy is improved.
KW - Data assimilation
KW - Ensembles
KW - Numerical weather prediction/forecasting
KW - Operational forecasting
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U2 - 10.1175/WAF-D-22-0055.1
DO - 10.1175/WAF-D-22-0055.1
M3 - Article
AN - SCOPUS:85137275474
SN - 0882-8156
VL - 37
SP - 1567
EP - 1580
JO - Weather and Forecasting
JF - Weather and Forecasting
IS - 9
ER -