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A Comparative Verification of Raw and Bias-Corrected ECMWF Seasonal Ensemble Precipitation Reforecasts in Java (Indonesia)

机译:Java(印度尼西亚)的原料和偏置ECMWF季节集合降水量重新折叠的比较验证

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Dynamical seasonal forecasts are afflicted with biases, including seasonal ensemble precipitation forecasts from the new ECMWF seasonal forecast system 5 (SEAS5). In this study, biases have been corrected using empirical quantile mapping (EQM) bias correction (BC). We bias correct SEAS5 24-h rainfall accumulations at seven monthly lead times over the period 1981-2010 in Java, Indonesia. For the observations, we have used a new high-resolution (0.25 degrees) land-only gridded rainfall dataset [Southeast Asia observations (SA-OBS)]. A comparative verification of both raw and bias-corrected reforecasts is performed using several verification metrics. In this verification, the daily rainfall data were aggregated to monthly accumulated rainfall. We focus on July, August, and September because these are agriculturally important months; if the rainfall accumulation exceeds 100 mm, farmers may decide to grow a third rice crop. For these months, the first 2-month lead times show improved and mostly positive continuous ranked probability skill scores after BC. According to the Brier skill score (BSS), the BC reforecasts improve upon the raw reforecasts for the lower precipitation thresholds at the 1-month lead time. Reliability diagrams show that the BC reforecasts have good reliability for events exceeding the agriculturally relevant 100-mm threshold. A cost/loss analysis, comparing the potential economic value of the raw and BC reforecasts for this same threshold, shows that the value of the BC reforecasts is larger than that of the raw ones, and that the BC reforecasts have value for a wider range of users at 1- to 7-month lead times.
机译:动态季节性预测受到偏见的折磨,包括来自新的ECMWF季节预测系统5(SEAT5)的季节性集成降水预测。在该研究中,使用经验定量映射(EQM)偏置校正(BC)校正了偏差。在印度尼西亚Java的1981-2010期间,我们在七月的七月交货时间偏离了正确的Seas5 24-H降雨累积。对于观察,我们使用了新的高分辨率(0.25度)仅限仅限陆地上的降雨DataSet [东南亚观察(SA-OBS)]。使用若干验证指标进行原始和偏置校正重新折叠的比较验证。在此验证中,每日降雨数据汇总至每月累计降雨。我们于7月,8月和9月关注,因为这些是农业的几个月;如果降雨量超过100毫米,农民可能会决定生长第三米作物。对于这些月来,前2个月的交货时间显示BC后的改善和大多数是正常的连续排名概率。根据Brier技能评分(BSS),BC ReforeCasts改善了在1个月的换通时间下降低降水阈值的原始重新折叠。可靠性图表明,BC ReforeCast对超过农业相关的100毫米阈值的事件具有良好的可靠性。成本/损失分析,比较原始和BC ReforeCast的潜在经济价值,表明BC ReforeCast的值大于原始的值,并且BC ReforeCast具有更广泛范围的值用户在1到7个月的交货时间。

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