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Identifying robust bias adjustment methods for European extreme precipitation in a multi-model pseudo-reality setting

机译:在多模型伪现实设置中识别欧洲极端降水的强大偏置调整方法

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Severe precipitation events occur rarely and are often localised in space and of short duration, but they are important for societal managing of infrastructure. Therefore, there is a demand for estimating future changes in the statistics of the occurrence of these rare events. These are often projected using data from regional climate model (RCM) simulations combined with extreme value analysis to obtain selected return levels of precipitation intensity. However, due to imperfections in the formulation of the physical parameterisations in the RCMs, the simulated present-day climate usually has biases relative to observations; these biases can be in the mean and/or in the higher moments. Therefore, the RCM results are adjusted to account for these deficiencies. However, this does not guarantee that the adjusted projected results will match the future reality better, since the bias may not be stationary in a changing climate. In the present work, we evaluate different adjustment techniques in a changing climate. This is done in an inter-model cross-validation set-up in which each model simulation, in turn, performs pseudo-observations against which the remaining model simulations are adjusted and validated. The study uses hourly data from historical and RCP8.5 scenario runs from 19 model simulations from the EURO-CORDEX ensemble at a 0.11 ° resolution. Fields of return levels for selected return periods are calculated for hourly and daily timescales based on 25-year-long time slices representing the present-day (1981–2005) and end-21st-century?(2075–2099). The adjustment techniques applied to the return levels are based on extreme value analysis and include climate factor and quantile-mapping approaches. Generally, we find that future return levels can be improved by adjustment, compared to obtaining them from raw scenario model data. The performance of the different methods depends on the timescale considered. On hourly timescales, the climate factor approach performs better than the quantile-mapping approaches. On daily timescales, the superior approach is to simply deduce future return levels from pseudo-observations, and the second-best choice is using the quantile-mapping approaches. These results are found in all European subregions considered. Applying the inter-model cross-validation against model ensemble medians instead of individual models does not change the overall conclusions much.
机译:严重的降水事件很少发生,并且通常在空间和持续时间内定位,但它们对于基础设施的社会管理是重要的。因此,需要估算这些罕见事件发生的统计数据的未来变化。这些通常使用来自区域气候模型(RCM)模拟的数据进行预测,与极值分析相结合,以获得所选返回水平的降水强度。然而,由于在RCMS中的物理参数化的制剂中的缺陷,模拟的本日气候通常具有相对于观察的偏差;这些偏差可以是平均和/或更高的时刻。因此,调整RCM结果以考虑这些缺陷。然而,这并不能保证调整后的预计结果更好地匹配未来的现实,因为偏差可能在不断变化的气候中静止。在目前的工作中,我们在变化的气候中评估了不同的调整技术。这是在模型间交叉验证设置中完成的,其中每个模型模拟又执行伪观察,用于调整和验证剩余的模型模拟。该研究使用来自历史和RCP8.5的每小时数据,从19个模型模拟到0.11°分辨率的0.11°的欧式码头。所选返回期的返回级别的领域是根据当天(1981-2005)和最终21世纪的25年长时间的时间片来计算每小时和每日时间尺度?(2075-2099)。应用于返回级别的调整技术基于极值分析,包括气候因子和定量映射方法。通常,与从原始方案模型数据获取它们,我们发现可以通过调整改进未来的返回级别。不同方法的性能取决于考虑的时间尺度。在每小时时间尺度上,气候因子方法比分位式映射方法更好。在每日时间尺度时,卓越的方法是简单地将未来的返回水平从伪观察推导出来,第二个最佳选择正在使用定量映射方法。这些结果在所有欧洲次区域中都有。应用于模型集合中位数而不是各个模型的模型交叉验证不会改变整体结论。

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