首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Evaluating the skill of NMME seasonal precipitation ensemble predictions for 17 hydroclimatic regions in continental China
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Evaluating the skill of NMME seasonal precipitation ensemble predictions for 17 hydroclimatic regions in continental China

机译:评估中国大陆17个水文气候区NMME季节降水集合预报的技巧

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摘要

There is an increasing focus on the usefulness of climate model-based seasonal precipitation forecasts as inputs for hydrological applications. This study reveals that most models from the North American Multi-Model Ensemble (NMME) have potential to forecast seasonal precipitation over 17 hydroclimatic regions in continental China. In this paper, we evaluated the NMME precipitation forecast against observations. The evaluation indices included the correlation coefficient (R), relative root-mean-square error (RRMSE), rank histogram (RH), and continuous ranked probability skill score (CRPSS). We presented the RRMSE-R diagram to distinguish differences between the performances of individual models. We find that the predictive skill is seasonally and regionally dependent, exhibiting higher values in autumn and spring and lower values in summer. Higher predictive skill is observed over most regions except the southeastern monsoon regions, which may be attributable to local climatology and variability. Among the 11 NMME models, CFS, especially CFSv2, exhibits the best predictive skill. The GFDL and NASA models, which are followed by CMC, perform worse than CFS. The performances of IRI and CCSM3 are relatively worse than that of the other models. The forecast skills are significantly improved in multi-model mean forecasts based on simple model averaging (SMA). The improvement is more obvious for Bayesian model averaging (BMA), which is employed to further improve the forecast skill and address model uncertainty using multiple model outputs, than individual model and SMA.
机译:人们越来越关注基于气候模型的季节性降水预报作为水文应用输入的有用性。这项研究表明,北美多模式合奏团(NMME)的大多数模型都有潜力预测中国大陆17个水文气候区的季节性降水。在本文中,我们根据观测结果评估了NMME降水预报。评估指标包括相关系数(R),相对均方根误差(RRMSE),等级直方图(RH)和连续等级概率技能得分(CRPSS)。我们提出了RRMSE-R图,以区分各个模型的性能之间的差异。我们发现,预测技能与季节和地区有关,在秋季和春季显示较高的值,在夏季显示较低的值。除东南季风地区以外的大多数地区都具有较高的预报技能,这可能归因于当地的气候和变化。在11种NMME模型中,CFS(尤其是CFSv2)表现出最好的预测能力。 CMDL遵循的GFDL和NASA模型的性能比CFS差。 IRI和CCSM3的性能相对比其他模型差。在基于简单模型平均(SMA)的多模型平均预测中,预测技能得到了显着提高。对于贝叶斯模型平均(BMA)而言,这种改进更为明显,与单个模型和SMA相比,该模型被用来进一步提高预测技能并使用多个模型输出解决模型不确定性。

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