在未来气候条件下联合估计风速和风向的一种条件方法

Q1 Mathematics
Qiuyi Wu, J. Bessac, Whitney K. Huang, Jiali Wang, R. Kotamarthi
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引用次数: 2

摘要

摘要本研究开发了一种统计条件方法来评估气候模式在风速和风向方面的性能,并在美国大陆(CONUS)内陆和近海地区的代表性浓度路径(RCP) 8.5情景下预测其未来变化。所提出的条件方法通过结合表征风向分布和风向上的条件分布,扩展了现有研究的范围,从而能够评估风速和风向的联合分布及其变化。冯米塞斯混合分布用于模拟不同模式和气候条件下的风向。采用威布尔分布回归模型和分位数回归模型两种统计方法对风速分布进行估计,这两种统计方法对其估计结果的分布都施加了圆形约束。研究了与不同气候模式和模式内部变率相关的预估不确定性,并将其与气候变化信号进行了比较,以量化未来预估的稳健性。特别是,这项工作将气候平均值内部变率的概念扩展到标准偏差和高分位数,以评估其预估变化的相对幅度。评估结果表明,所研究的气候模式在内陆和近海都能较好地捕捉历史风速和风向及其依赖关系。在RCP8.5情景下,大部分研究地点冬季和夏季的平均风速变化不显著,而标准偏差和95分位数的变化在冬季的某些地点表现出较强的变化。具体来说,在我们的研究中,西北、科罗拉多和北部大平原地区冬季受风向影响的高风速(第95分位数)预计会减少。夏季,大平原南部受风向影响的高风速略有增加,而近海地区受风向影响的高风速变化不大。所提出的条件方法能够根据风向和风向分布对风速分布进行综合表征,这提供了一种灵活的替代方法,可以为速度和方向的联合评估提供额外的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A conditional approach for joint estimation of wind speed and direction under future climates
Abstract. 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 (RCP) 8.5 scenario over inland and offshore locations across the continental United States (CONUS). The proposed conditional approach extends the scope of existing studies by a combined characterization of the wind direction distribution and conditional distribution of wind on the direction, hence enabling an assessment of the joint wind speed and direction distribution and their changes. A von Mises mixture distribution is used to model wind directions across models and climate conditions. Wind speed distributions conditioned on wind direction are estimated using two statistical methods, i.e., a Weibull distributional regression model and a quantile regression model, both of which enforce the circular constraint to their resultant estimated distributions. Projected uncertainties associated with different climate models and model internal variability are investigated and compared with the climate change signal to quantify the robustness of the future projections. In particular, this work extends the concept of internal variability in the climate mean 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 captures both historical wind speed and wind direction and their dependencies reasonably well over both inland and offshore locations. Under the RCP8.5 scenario, most of the studied locations show no significant changes in the mean wind speeds in both winter and summer, while the changes in the standard deviation and 95th quantile show some robust changes over certain locations in winter. Specifically, high wind speeds (95th quantile) conditioned on direction in winter are projected to decrease in the northwestern, Colorado, and northern Great Plains locations in our study. In summer, high wind speeds conditioned on direction over the southern Great Plains increase slightly, while high wind speeds conditioned on direction over offshore locations do not change much. The proposed conditional approach enables a combined characterization of the wind speed distributions conditioned on direction and wind direction distributions, which offers a flexible alternative that can provide additional insights for the joint assessment of speed and direction.
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来源期刊
Advances in Statistical Climatology, Meteorology and Oceanography
Advances in Statistical Climatology, Meteorology and Oceanography Earth and Planetary Sciences-Atmospheric Science
CiteScore
4.80
自引率
0.00%
发文量
9
审稿时长
26 weeks
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