评估气候变化情景下基于分位数的偏差调整的技能和问题

F. Lehner, I. Nadeem, H. Formayer
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引用次数: 1

摘要

摘要许多气候影响研究,例如在水文学或农业领域,都需要气候模式提供的温度或降水等日常气象数据,但是直接模式输出可能包含较大的系统误差。存在多种方法来调整气候模式输出的偏差。在此,我们回顾了现有的统计偏倚调整方法及其不足,并比较了分位数映射(QM)、比例分布映射(SDM)、分位数增量映射(QDM)和PresRAT (PresRATe)的经验版本。然后,我们使用奥地利真实的和人工创建的每日温度和降水数据来测试这些方法。我们从以下几个方面对性能进行了比较:(1)模式数据应与历史时期观测资料的气候平均值相匹配;(2)均值(气候变化信号)的长期气候趋势,无论定义为差还是比,在偏置调整期间都不应改变;(3)即使湿日数过少(降水大于0.1 mm)的模式也要进行精确校正,使湿日数频率保持不变。QDM和PresRATe的结合满足了这三个需求。对于(2)降水,PresRATe已经包含了一个额外的校正,以确保气候变化信号是守恒的。
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Evaluating skills and issues of quantile-based bias adjustment for climate change scenarios
Abstract. Daily meteorological data such as temperature or precipitation from climate models are needed for many climate impact studies, e.g., in hydrology or agriculture, but direct model output can contain large systematic errors. A large variety of methods exist to adjust the bias of climate model outputs. Here we review existing statistical bias-adjustment methods and their shortcomings, and compare quantile mapping (QM), scaled distribution mapping (SDM), quantile delta mapping (QDM) and an empiric version of PresRAT (PresRATe). We then test these methods using real and artificially created daily temperature and precipitation data for Austria. We compare the performance in terms of the following demands: (1) the model data should match the climatological means of the observational data in the historical period; (2) the long-term climatological trends of means (climate change signal), either defined as difference or as ratio, should not be altered during bias adjustment; and (3) even models with too few wet days (precipitation above 0.1 mm) should be corrected accurately, so that the wet day frequency is conserved. QDM and PresRATe combined fulfill all three demands. For (2) for precipitation, PresRATe already includes an additional correction that assures that the climate change signal is conserved.
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来源期刊
Advances in Statistical Climatology, Meteorology and Oceanography
Advances in Statistical Climatology, Meteorology and Oceanography Earth and Planetary Sciences-Atmospheric Science
CiteScore
4.80
自引率
0.00%
发文量
9
审稿时长
26 weeks
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