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Comparison of statistically downscaled precipitation in terms of future climate indices and daily variability for southern Ontario and Quebec, Canada

机译:就未来气候指数和加拿大安大略省南部和魁北克的每日变化而言,统计上减少的降水量的比较

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摘要

Given the coarse resolution of global climate models, downscaling techniques are often needed to generate finer scale projections of variables affected by local-scale processes such as precipitation. However, classical statistical downscaling experiments for future climate rely on the time-invariance assumption as one cannot know the true change in the variable of interest, nor validate the models with data not yet observed. Our experimental setup involves using the Canadian regional climate model (CRCM) outputs as pseudo-observations to estimate model performance in the context of future climate projections by replacing historical and future observations with model simulations from the CRCM, nested within the domain of the Canadian global climate model (CGCM). In particular, we evaluated statistically downscaled daily precipitation time series in terms of the Peirce skill score, mean absolute errors, and climate indices. Specifically, we used a variety of linear and nonlinear methods such as artificial neural networks (ANN), decision trees and ensembles, multiple linear regression, and k-nearest neighbors to generate present and future daily precipitation occurrences and amounts. We obtained the predictors from the CGCM 3.1 20C3M (1971-2000) and A2 (2041-2070) simulations, and precipitation outputs from the CRCM 4.2 (forced with the CGCM 3.1 boundary conditions) as predictands. Overall, ANN models and tree ensembles outscored the linear models and simple nonlinear models in terms of precipitation occurrences, without performance deteriorating in future climate. In contrast, for the precipitation amounts and related climate indices, the performance of downscaling models deteriorated in future climate.
机译:考虑到全球气候模型的粗略分辨率,通常需要缩减规模的技术来生成受局部尺度过程(例如降水)影响的变量的更精细尺度的预测。但是,针对未来气候的经典统计缩减实验依赖于时不变假设,因为人们无法知道目标变量的真实变化,也无法使用尚未观察到的数据验证模型。我们的实验设置涉及使用加拿大区域气候模型(CRCM)输出作为伪观测,通过使用嵌套在加拿大全球范围内的CRCM模型模拟代替历史和未来观察,来估计未来气候预测背景下的模型性能气候模式(CGCM)。尤其是,我们根据Peirce技能得分,平均绝对误差和气候指数评估了按比例缩减的每日降水时间序列。具体来说,我们使用了各种线性和非线性方法,例如人工神经网络(ANN),决策树和集合,多元线性回归和k近邻,以生成当前和将来的每日降水发生次数和数量。我们从CGCM 3.1 20C3M(1971-2000)和A2(2041-2070)模拟获得了预测因子,而CRCM 4.2(受CGCM 3.1边界条件强迫)的降水量输出作为预测因子。总体而言,在降水发生方面,ANN模型和树木集成优于线性模型和简单非线性模型,而在未来气候下性能不会下降。相反,对于降水量和相关的气候指数,按比例缩小模型的性能在未来的气候中会恶化。

著录项

  • 来源
    《Climate dynamics》 |2014年第12期|3201-3217|共17页
  • 作者单位

    Department of Earth, Ocean and Atmospheric Sciences, 2020-2207 Main Mall, University of British Columbia, Vancouver, BC V6T 1Z4, Canada,South Central Climate Science Center, NOAA-GFDL, 201 Forrestal Road, Princeton, NJ 08540, USA;

    Department of Earth, Ocean and Atmospheric Sciences, 2020-2207 Main Mall, University of British Columbia, Vancouver, BC V6T 1Z4, Canada;

    Department of Earth, Ocean and Atmospheric Sciences, 2020-2207 Main Mall, University of British Columbia, Vancouver, BC V6T 1Z4, Canada,Pacific Climate Impacts Consortium, University of Victoria,PO Box 3060, Stn CSC, Victoria, BC V8W 3R4, Canada;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Statistical downscaling; Nonlinear methods; Climate extremes; Precipitation; Future evaluation; Artificial neural networks;

    机译:统计缩减;非线性方法;极端气候;沉淀;未来评估;人工神经网络;

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