论文标题
在整个美国,在未来气候下,统计的统计联合评估风速和指导
Station-wise statistical joint assessment of wind speed and direction under future climates across the United States
论文作者
论文摘要
这项研究开发了一种统计条件方法,以在风速和方向上评估气候模型的性能,并在美国大陆的内陆和海上位置的代表性集中途径下将未来的变化投射出来。提出的条件方法通过表征关节风速和方向分布的全部变化来扩展现有研究的范围。使用两种统计方法估算了定向风速分布:Weibull分布回归模型和一个分位数回归模型,这两者都对其对方向分布的估计进行了圆形约束。研究了与不同气候模型和模型内部变异性相关的预计不确定性,并将其与气候变化信号进行了比较,以量化未来预测的统计意义。特别是,这项工作将内部变异性的概念扩展到标准偏差和高分位数,以评估其预期变化的相对幅度。评估结果表明,所研究的气候模型捕获了在内陆和近海位置相当很好的依赖性风速,风向及其依赖性。将来,尽管冬季的标准偏差和95量Quantile的变化在冬季,大多数位置在冬季和夏季都没有显示出平均风速的显着变化。提出的条件方法可以表征定向风速分布,这为速度和方向的联合评估提供了其他见解。
This study develops a statistical conditional approach to evaluate climate model performance in wind speed and direction and to project their future changes under the representative concentration pathway 8.5 scenario over inland and offshore locations across the Continental United States. The proposed conditional approach extends the scope of existing studies by characterizing the changes of the full range of the joint wind speed and direction distribution. Directional wind speed distributions are estimated using two statistical methods: a Weibull distributional regression model and a quantile regression model, both of which enforce the circular constraint to their resulting estimates of directional distributions. Projected uncertainties associated with different climate models and model internal variability are investigated and compared with the climate change signal to quantify the statistical significance of the future projections. In particular this work extends the concept of internal variability to the standard deviation and high quantiles to assess the relative magnitudes to their projected changes. The evaluation results show that the studied climate model capture both historical wind speed, wind direction, and their dependencies reasonably well over both inland and offshore locations. In the future, most of the locations show no significant changes in mean wind speeds in both winter and summer, although the changes in standard deviation and 95th-quantile show some robust changes over certain locations in winter. The proposed conditional approach enables the characterization of the directional wind speed distributions, which offers additional insights for the joint assessment of speed and direction.