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首页> 外文期刊>Journal of Climate >Statistical downscaling prediction of sea surface winds over the global ocean.
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Statistical downscaling prediction of sea surface winds over the global ocean.

机译:全球海洋表面海风的统计缩减预测。

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摘要

The statistical prediction of local sea surface winds from large-scale, free-tropospheric fields is investigated at a number of locations over the global ocean using a statistical downscaling model based on multiple linear regression. The predictands (the mean and standard deviation of both vector wind components and wind speed) calculated from ocean buoy observations on daily, weekly, and monthly scales are regressed on upper-level predictor fields from reanalysis products. It is found that in general the mean vector wind components are more predictable than mean wind speed in the North Pacific and Atlantic, while in the tropical Pacific and Atlantic the difference in predictive skill between mean vector wind components and wind speed is not substantial. The predictability of wind speed relative to vector wind components is interpreted by an idealized model of the wind speed probability density function, which indicates that in the midlatitudes the mean wind speed is more sensitive to the vector wind standard deviations (which generally are not well predicted) than to the mean vector winds. In the tropics, the mean wind speed is found to be more sensitive to the mean vector winds. While the idealized probability model does a good job of characterizing month-to-month variations in the mean wind speed in terms of the vector wind statistics, month-to-month variations in the standard deviation of speed are not well modeled. A series of Monte Carlo experiments demonstrates that the inconsistency in the characterization of wind speed standard deviation is the result of differences of sampling variability between the vector wind and wind speed statistics.
机译:使用基于多元线性回归的统计缩减模型,在全球海洋中的多个位置,研究了来自大规模自由对流层场的局部海面风的统计预测。从每天,每周和每月尺度上的海洋浮标观测值计算出的预测值(矢量风分量和风速的均值和标准差)在重新分析产品的高层预测器字段上进行回归。发现在北太平洋和大西洋中,平均矢量风分量通常比平均风速更可预测,而在热带太平洋和大西洋中,平均矢量风分量和风速之间的预测技能差异并不明显。风速相对于矢量风分量的可预测性由风速概率密度函数的理想化模型解释,该模型表明在中纬度地区,平均风速对矢量风标准偏差更敏感(通常无法很好地预测) )而不是平均风向。在热带地区,平均风速被发现对平均矢量风更为敏感。虽然理想化的概率模型在根据矢量风统计数据描述平均风速的逐月变化方面做得很好,但对速度标准偏差的逐月变化却没有很好的建模。一系列的蒙特卡洛实验表明,风速标准偏差的表征不一致是矢量风和风速统计数据之间采样变量差异的结果。

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