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Comparing interannual variability in three regional single-model initial-condition large ensembles (SMILEs) over Europe

机译:比较三个区域单模型初始条件大型集合(微笑)在欧洲的际变量

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For sectors like agriculture, hydrology and ecology, increasing interannual variability (IAV) can have larger impacts than changes in the mean state, whereas decreasing IAV in winter implies that the coldest seasons warm more than the mean. IAV is difficult to reliably quantify in single realizations of climate (observations and single-model realizations) as they are too short, and represent a combination of external forcing and IAV. Single-model initial-condition large ensembles (SMILEs) are powerful tools to overcome this problem, as they provide many realizations of past and future climate and thus a larger sample size to robustly evaluate and quantify changes in IAV. We use three SMILE-based regional climate models (CanESM-CRCM, ECEARTH-RACMO and CESM-CCLM) to investigate downscaled changes in IAV of summer and winter temperature and precipitation, the number of heat waves, and the maximum length of dry periods over Europe. An evaluation against the observational data set E-OBS reveals that all models reproduce observational IAV reasonably well, although both under- and overestimation of observational IAV occur in all models in a few cases. We further demonstrate that SMILEs are essential to robustly quantify changes in IAV since some individual realizations show significant IAV changes, whereas others do not. Thus, a large sample size, i.e., information from all members of SMILEs, is needed to robustly quantify the significance of IAV changes. Projected IAV changes in temperature over Europe are in line with existing literature: increasing variability in summer and stable to decreasing variability in winter. Here, we further show that summer and winter precipitation, as well as the two summer extreme indicators mostly also show these seasonal changes.
机译:对于农业,水文和生态等行业,持续的际变化(IAV)的依次可能具有比平均状态的变化更大的影响,而冬季的IAV降低意味着最寒冷的季节比平均值更加寒冷。由于它们太短,IAV难以可靠地定量气候(观察和单一模型实现),因为它们太短,并且代表了外部迫使和IAV的组合。单模型初始条件大型集合(SMILES)是强大的工具来克服这个问题,因为它们提供了许多过去和未来气候的实现,因此更大的样本大小来鲁棒地评估和量化IAV的变化。我们使用三种微笑的区域气候模型(Canesm-CRCM,Ecearth-Racmo和CESM-CCLM)来调查夏季和冬季温度和降水的IAV的次要变化,热浪的数量,以及干燥期的最大长度欧洲。对观察数据集E-OB的评估表明,所有模型都能合理地再现观察性IAV,尽管在少数情况下所有模型发生在所有模型中都会发生和高估。我们进一步证明微笑对于鲁棒地量化IAV的变化至关重要,因为一些人的一些识别显示出显着的IAV变化,而其他人则没有。因此,需要大的样本量,即来自所有微笑的所有成员的信息,以强大地量化IAV变化的重要性。预计IAV在欧洲的温度变化符合现有文献:夏季的变化越来越差,冬季稳定地降低可变性。在这里,我们进一步表明夏季和冬季降水,以及两个夏季极端指标主要也展示了这些季节性变化。

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