Downscaling probability of long heatwaves based on seasonal mean daily maximum temperatures

R. Benestad, B. V. van Oort, F. Justino, F. Stordal, Kajsa M. Parding, A. Mezghani, H. Erlandsen, J. Sillmann, Milton E. Pereira-Flores
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引用次数: 8

Abstract

Abstract. A methodology for estimating and downscaling the probability associated with the duration of heatwaves is presented and applied as a case study for Indian wheat crops. These probability estimates make use of empirical-statistical downscaling and statistical modelling of probability of occurrence and streak length statistics, and we present projections based on large multi-model ensembles of global climate models from the Coupled Model Intercomparison Project Phase 5 and three different emissions scenarios: Representative Concentration Pathways (RCPs) 2.6, 4.5, and 8.5. Our objective was to estimate the probabilities for heatwaves with more than 5 consecutive days with daily maximum temperature above 35 ∘C, which represent a condition that limits wheat yields. Such heatwaves are already quite frequent under current climate conditions, and downscaled estimates of the probability of occurrence in 2010 is in the range of 20 %–84 % depending on the location. For the year 2100, the high-emission scenario RCP8.5 suggests more frequent occurrences, with a probability in the range of 36 %–88 %. Our results also point to increased probabilities for a hot day to turn into a heatwave lasting more than 5 days, from roughly 8 %–20 % at present to 9 %–23 % in 2100 assuming future emissions according to the RCP8.5 scenario; however, these estimates were to a greater extent subject to systematic biases. We also demonstrate a downscaling methodology based on principal component analysis that can produce reasonable results even when the data are sparse with variable quality.
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基于季节平均日最高温度的长时间热浪的缩小概率
摘要提出了一种估计和缩小与热浪持续时间相关的概率的方法,并将其作为印度小麦作物的案例研究。这些概率估计利用了发生概率和条纹长度统计的经验统计降尺度和统计建模,我们根据耦合模型相互比较项目第5阶段的全球气候模型的大型多模型集合和三种不同的排放情景进行了预测:代表性浓度路径(RCP)2.6、4.5,和8.5。我们的目标是估计连续5天以上、日最高气温超过35度的热浪的概率 ∘C、 这代表了限制小麦产量的条件。在当前的气候条件下,这种热浪已经相当频繁了,2010年发生的可能性的缩小估计在20 %–84 % 取决于位置。对于2100年,高排放情景RCP8.5表明发生频率更高,概率在36 %–88 %. 我们的研究结果还表明,炎热的一天转变为持续5天以上的热浪的可能性从大约8天增加 %–20 % 目前至9 %–23 % 2100年,根据RCP8.5情景假设未来排放量;然而,这些估计在很大程度上受到系统性偏差的影响。我们还展示了一种基于主成分分析的降尺度方法,即使数据稀疏且质量可变,也能产生合理的结果。
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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
期刊最新文献
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