...
首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Statistical downscaling of extremes of daily precipitation and temperature and construction of their future scenarios
【24h】

Statistical downscaling of extremes of daily precipitation and temperature and construction of their future scenarios

机译:每日降水和温度极端值的统计缩减和未来情景的构建

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Two statistical downscaling methods have been tested in terms of their ability to construct indices of extremes of daily precipitation and temperatures from large-scale atmospheric variables with the aim of developing a tool for the construction of future scenarios of the extremes. One of the methods implements an approach for constructing seasonal indices of extremes of precipitation and temperature from seasonal measures of large-scale variables, while the other method implements a stochastic model for generating daily series of precipitation and temperature whose parameters are conditioned on large-scale circulation patterns. While both models generally tend to perform fairly well in reproducing indices of precipitation in winter, their performance for the summer season is not attractive. For indices of temperature, the performance of both models is better than the corresponding performance for indices of precipitation and the seasonal variation in performance is less prominent. The models were applied to construct scenarios of the extremes for the end of the 21st century using predictor sets simulated by the Hadley Centre GCM (HadAM3P) forced by two of the special report on emission scenarios (SRES) emission scenarios. Both models project an increase in both the mean daily minimum and mean daily maximum temperatures for future climate change scenarios in all seasons. The summer increase is accompanied by an increase in the inter-annual variability of the temperatures. On the other hand, they show consistency in the direction of the projected changes in indices of precipitation only in winter, where they projected an increase in both the magnitude and frequency of extremes as well as the mean precipitation. The disparity in the changes simulated by the two models revealed the existence of considerable inter-model uncertainty in predicting changes for future climate. Copyright (c) 2007 Royal Meteorological Society.
机译:已针对从大型大气变量构建每日降水和温度的极端指标的能力方面测试了两种统计缩减方法,目的是开发一种用于构建未来极端场景的工具。一种方法实现了一种从大规模变量的季节性量度中构造降水和温度极端值的季节性指数的方法,而另一种方法则实现了一种随机模型,用于生成日降水量和温度的日序列,其参数以大规模为条件循环模式。虽然这两种模型通常在冬季的降水指数再现中表现都相当不错,但它们在夏季的表现却没有吸引力。对于温度指数,两个模型的性能均优于相应的降水指数性能,并且性能的季节变化不太明显。使用由Hadley中心GCM(HadAM3P)模拟的预测变量集将模型应用于构建21世纪末的极端情景,该预测变量由排放情景(SRES)排放情景的两个特殊报告所强制执行。两种模型均预测未来所有季节未来气候变化情景的日均最低和日均最高温度将增加。夏季增加伴随着温度年际变化的增加。另一方面,它们仅在冬季预测降水指数变化的方向上显示出一致性,在冬季,他们预测极端降水的数量和频率以及平均降水都将增加。这两个模型模拟的变化之间的差异表明,在预测未来气候变化时,存在相当大的模型间不确定性。版权所有(c)2007皇家气象学会。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号