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Projected precipitation changes over China for global warming levels at 1.5 degrees C and 2 degrees C in an ensemble of regional climate simulations: impact of bias correction methods

机译:在区域气候模拟的集合中,在1.5摄氏度下,对中国的全球变暖水平的预计降水变化为1.5摄氏度,2摄氏度:偏压校正方法的影响

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Four bias correction methods, i.e., gamma cumulative distribution function (GamCDF), quantile-quantile adjustment (QQadj), equidistant cumulative probability distribution function (CDF) matching (EDCDF), and transform CDF (CDF-t), to read are applied to five daily precipitation datasets over China produced by LMDZ4-regional that was nested into five global climate models (GCMs), BCC-CSM1-1m, CNRM-CM5, FGOALS-g2, IPSL-CM5A-MR, and MPI-ESM-MR, respectively. A unified mathematical framework can be used to define the four bias correction methods, which helps understanding their natures and essences for identifying the most reliable probability distributions of projected climate. CDF-t is shown to be the best bias correction method based on a comprehensive evaluation of different precipitation indices. Future precipitation projections corresponding to the global warming levels of 1.5 degrees C and 2 degrees C under RCP8.5 were obtained using the bias correction methods. The multi-method and multi-model ensemble characteristics allow to explore the spreading of projections, considered a surrogate of climate projection uncertainty, and to attribute such uncertainties to different sources. It was found that the spread among bias correction methods is smaller than that among dynamical downscaling simulations. The four bias correction methods, with CDF-t at the top, all reduce the spread among the downscaled results. Future projection using CDF-t is thus considered having higher credibility.
机译:读取四个偏置校正方法,即伽马累积分布函数(GAMCDF),分位式累积概率分布函数(CDF)匹配(EDCDF)和转换CDF(CDF-T),以读取通过LMDZ4-Cabily生产的五个日降水数据集,该区域嵌套成五个全球气候模型(GCMS),BCC-CSM1-1M,CNRM-CM5,FGOALS-G2,IPSL-CM5A-MR和MPI-ESM-MR,分别。统一的数学框架可用于定义四种偏置校正方法,这有助于了解其自然和本质,以确定预计气候最可靠的概率分布。基于对不同降水指数的综合评估,CDF-T显示为最佳偏置校正方法。使用偏压校正方法获得对应于RCP8.5下的全球变暖水平的未来降水突起。多方法和多模型集合特性允许探索投影的扩散,被认为是气候投影不确定性的替代品,并将这种不确定性归因于不同来源。发现偏压校正方法之间的扩展小于动态缩小模拟中的差异。四个偏置校正方法,顶部的CDF-T,所有这些都会减少较低的结果之间的传播。因此,使用CDF-T的未来投影被认为具有更高的可信度。

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