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On the skill of raw and post-processed ensemble seasonal meteorological forecasts in Denmark

机译:关于丹麦原始和后处理的合奏季节性气象预报的技巧

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This study analyzes the quality of the raw and post-processed seasonal forecasts of the European Centre for Medium-Range Weather Forecasts (ECMWF) System 4. The focus is given to Denmark, located in a region where seasonal forecasting is of special difficulty. The extent to which there are improvements after post-processing is investigated. We make use of two techniques, namely linear scaling or delta change (LS) and quantile mapping (QM), to daily bias correct seasonal ensemble predictions of hydrologically relevant variables such as precipitation, temperature and reference evapotranspiration ( EsubT0/sub ). Qualities of importance in this study are the reduction of bias and the improvement in accuracy and sharpness over ensemble climatology. Statistical consistency and its improvement is also examined. Raw forecasts exhibit biases in the mean that have a spatiotemporal variability more pronounced for precipitation and temperature. This variability is more stable for EsubT0/sub with a consistent positive bias. Accuracy is higher than ensemble climatology for some months at the first month lead time only and, in general, ECMWF System 4 forecasts tend to be sharper. EsubT0/sub also exhibits an underdispersion issue, i.e., forecasts are narrower than their true uncertainty level. After correction, reductions in the mean are seen. This, however, is not enough to ensure an overall higher level of skill in terms of accuracy, although modest improvements are seen for temperature and EsubT0/sub , mainly at the first month lead time. QM is better suited to improve statistical consistency of forecasts that exhibit dispersion issues, i.e., when forecasts are consistently overconfident. Furthermore, it also enhances the accuracy of the monthly number of dry days to a higher extent than LS. Caution is advised when applying a multiplicative factor to bias correct variables such as precipitation. It may overestimate the ability that LS has in improving sharpness when a positive bias in the mean exists.
机译:这项研究分析了欧洲中距离天气预报中心(ECMWF)系统4的原始和后处理的季节性预报的质量。重点放在丹麦,该国位于季节性预报特别困难的地区。研究了后处理后改进的程度。我们利用线性标度或增量变化(LS)和分位数映射(QM)这两种技术来对水文相关变量(如降水​​,温度和参考蒸散量(E T0 )。在这项研究中,重要的质量是减少偏差以及与整体气候相比提高准确性和清晰度。还检查了统计一致性及其改进。原始预报的平均值存在偏差,对于降水和温度而言,其时空变化更为明显。对于E T0 ,具有恒定的正偏差,这种可变性更加稳定。仅在交货第一个月的几个月中,其准确度就比集合气候学更高,并且通常来说,ECMWF系统4的预报往往会更精确。 E T0 也存在色散不足的问题,即预测比其实际不确定性水平要窄。校正后,均值会降低。但是,尽管主要在交货的第一个月,温度和E T0 出现了适度的改善,但这仍不足以确保整体技能水平的准确性。质量管理更适合于提高出现分散问题的预测的统计一致性,即当预测始终过于自信时。此外,它还比LS更高程度地提高了每月干旱天数的准确性。建议在应用乘积因子以偏正正确的变量(例如降水)时要小心。当均值存在正偏差时,它可能会高估LS在提高清晰度方面的能力。

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