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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Multi-RCM ensemble downscaling of NCEP CFS winter season forecasts: Implications for seasonal hydrologic forecast skill
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Multi-RCM ensemble downscaling of NCEP CFS winter season forecasts: Implications for seasonal hydrologic forecast skill

机译:NCEP CFS冬季预报的多RCM集合缩减:对季节性水文预报技能的影响

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摘要

We assess the value of dynamical versus statistical downscaling of National Centers for Environmental Prediction's (NCEP) Climate Forecast System (CFS) winter season forecasts for seasonal hydrologic forecasting. Dynamically downscaled CFS forecasts for 1 December to 30 April of 1982-2003 were obtained from the Multi-RCM Ensemble Downscaling (MRED) project that used multiple Regional Climate Models (RCMs) to downscale CFS forecasts. Statistical downscaling of CFS forecasts was achieved by a much simpler bias correction and spatial downscaling method. We evaluate forecast accuracy of runoff (RO), soil moisture (SM), and snow water equivalent produced by a hydrology model forced with dynamically (the MRED forecasts) and statistically downscaled CFS forecasts in comparison with predictions of those variables produced by forcing the same hydrology model with gridded observations (reference data set). Our results show that the MRED forecasts produce modest skill beyond what results from statistical downscaling of CFS. Although the improvement in hydrologic forecast skill associated with the ensemble average of the MRED forecasts (Multimodel) relative to statistical downscaled CFS forecasts is field significant for RO and SM forecasts with up to 3 months lead, the region of improvement is mainly limited to parts of the northwest and north central U.S. In general, one or more RCMs outperform the other RCMs as well as the Multimodel. Hence, we argue that careful selection of RCMs (based on their hindcast skill over any given region) is critical to improving hydrologic forecast skill using dynamical downscaling. Key Points Evaluation of dynamical vs statistical downscaling of CFS Dynamical downscaling does somewhat improves the skill Careful selection of RCMs is critical
机译:我们评估了国家环境预测中心(NCEP)气候预测系统(CFS)冬季季节动态预测与统计尺度缩减的价值,以进行季节性水文预报。动态降尺度的1982-2003年12月1日至4月30日的CFS预测是从使用多个区域气候模型(RCM)降尺度的CFS预测的Multi-RCM集合降尺度(MRED)项目获得的。通过更简单的偏差校正和空间缩减方法可以实现CFS预测的统计缩减。我们评估了由动态强迫的水文模型(MRED预测)和统计缩减的CFS预测所产生的径流(RO),土壤湿度(SM)和雪水当量的预测准确性,以及与强迫相同产生的那些变量的预测相比具有网格化观测的水文模型(参考数据集)。我们的结果表明,MRED预测所产生的技能超出了CFS统计缩减的结果。尽管相对于统计缩减后的CFS预报而言,与MRED预报(多模型)总体平均水平相关的水文预报技能的提高对RO和SM预报而言具有显着的意义,铅预报最长可达3个月,但改进范围主要限于总的来说,一个或多个RCM优于其他RCM和Multimodel。因此,我们认为,仔细选择RCM(基于它们在任何给定区域的后播能力)对于利用动态降尺度提高水文预报技能至关重要。关键点CFS动态降级与统计降级的评估动态降级确实在一定程度上提高了技能仔细选择RCM至关重要

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