...
首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Statistical downscaling skill under present climate conditions: A synthesis of the VALUE perfect predictor experiment
【24h】

Statistical downscaling skill under present climate conditions: A synthesis of the VALUE perfect predictor experiment

机译:本发明气候条件下的统计较低技能:价值完美预测器实验的合成

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

>VALUE is a network that developed a framework to evaluate statistical downscaling methods including model output statistics such as simple bias correction and quantile mapping; perfect prognosis methods such as regression models and analog methods; and weather generators. The first experiment addresses the downscaling performance in present climate with perfect predictors. This paper presents a synthesis of the VALUE special issue, with a focus on the results of this first experiment. This paper presents a synthesis of the results. Model output statistics performs mostly well, but requires predictors at a resolution close to the target one. Perfect prog performance depends crucially on model structure and predictor choice. Weather generators perform in principle well for all aspects that can be expressed by the available model structure. Inter‐annual variability is underrepresented by both perfect prog and weather generator approaches. Spatial variability is poorly represented by almost all participating methods (inherited by model output statistics from the driving model, not represented by the perfect prog and weather generator methods). Further studies are required to systematically assess (a) the role of predictor choice for perfect prog; (b) the performance of spatial weather generators, to study the performance based on GCM predictors; (c) downscaling skill in simulated future climates; and (d) the credibility of simulated predictors in a future climate.
机译: >值是一种网络,该网络开发了一种评估统计缩减方法,包括模型输出统计数据,如简单的偏置校正和定量映射等框架;完美预后方法,如回归模型和模拟方法;和天气发电机。第一个实验解决了当前气候的令人沮丧的性能,具有完美的预测因子。本文提出了价值特殊问题的合成,重点关注第一次实验的结果。本文提出了结果的合成。模型输出统计信息主要良好,但需要在靠近目标的分辨率处的预测器。完美的页面性能大致取决于模型结构和预测指标选择。天气发生器原则上表现出可通过可用模型结构表达的所有方面。完美的PROG和天气发生器方法都是持年年度变异性的代表性。空间可变性几乎所有参与方法都表示不好(由驾驶模型的模型输出统计)继承,而不是由完美的Prog和天气发生器方法表示)。进一步的研究是系统地评估(a)预测器选择对完美的作用的作用; (b)空间天气发生器的性能,研究基于GCM预测因子的性能; (c)模拟未来气候的镇压技能; (d)在未来的气候中模拟预测因子的可信度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
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