Improvements in the spread-skill relationship of precipitation in a convective-scale ensemble through blending

被引:1
作者
Gainford, Adam [1 ]
Gray, Suzanne L. [1 ]
Frame, Thomas H. A. [1 ]
Porson, Aurore N. [2 ]
Milan, Marco [3 ]
机构
[1] Univ Reading, Dept Meteorol, Brian Hoskins Bldg, Reading RG6 6ET, Berks, England
[2] Univ Reading, MetOffReading, Reading, England
[3] Met Off, Exeter, England
基金
英国自然环境研究理事会;
关键词
convection-permitting; data assimilation; forecast skill; Fractions Skill Score; INITIAL CONDITION PERTURBATIONS; HYPOTHESIS TESTS; FORECAST SKILL; VERIFICATION; PREDICTION; MODEL; RAINFALL; SYSTEM; IMPACT;
D O I
10.1002/qj.4754
中图分类号
P4 [大气科学(气象学)];
学科分类号
0706 ; 070601 ;
摘要
Convective-scale ensembles are used routinely in operational centres around the world to produce probabilistic precipitation forecasts, but a lack of spread between members is providing forecasts that are frequently overconfident. This deficiency can be corrected by increasing spread, increasing forecast accuracy, or both. A recent development in the Met Office forecasting system is the inclusion of large-scale blending (LSB) in the convective-scale data assimilation scheme. This method aims to reduce the synoptic-scale forecast error in the analysis by reducing the influence of the convective-scale data assimilation at scales that are too large to be constrained by the limited domain. These scales are instead initialised using output from the global data assimilation scheme, which we expect to reduce the forecast error and thus improve the spread-skill relationship. In this study, we quantify the impact of LSB on the spread-skill relationship of hourly precipitation accumulations by comparing forecast ensembles with and without LSB over a 17-day summer trial period. This trial found modest but significant improvements to the spread-skill relationship as calculated using metrics based on the Fractions Skill Score. Skill is improved for a lower precipitation centile by an average of 0.56% at the largest scales, but a corresponding degradation of spread limits the overall correction. The spread-skill disparity is reduced the most in the higher centiles due to a more muted spread response, with significant reductions of up to 0.40% obtained at larger scales. Case-study analysis using a novel extension of the Localised Fractions Skill Score demonstrates how spread-skill improvements transfer to smaller-scale features, not just the scales that have been blended. There are promising signs that further spread-skill improvements can be made by implementing LSB more fully within the ensemble, and we encourage the Met Office to continue developing this technique. In this study, we show that the spread-skill deficit in convective-scale ensembles can be reduced by constraining the synoptic scales to follow the more skilful host model. This study, conducted over a 17-day summer trial period, found modest but significant improvements to the spread-skill relationship of hourly precipitation accumulations, as calculated using metrics based on the Fractions Skill Score. Skill is improved for a lower precipitation centile by an average of 0.56% at the largest scales, but a corresponding degradation of spread limits the overall correction. The spread-skill improvements are largest in higher centiles, due to a more muted spread response, with corrections of up to 0.4% obtained. image
引用
收藏
页码:3146 / 3166
页数:21
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