Research on the method of constructing sea surface blended wind product considering vorticity and divergence variation

Yuan Liu, Jianxia Guo
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Abstract

The sea surface vector winds drive and modulate the heat and momentum transfer through the oceanatmosphere interface, influence the thermal and dynamical properties of ocean water body, and consequently determine the water cycle, ocean circulation and climate change on global scale. The spatial variation of sea surface winds is an important driving force for ocean dynamics. The vorticity of sea surface winds drives the ocean circulation through Sverdrup transport on basin scale, the divergence of surface winds efficiently affects the Ekman pumping, and thus the physical and biological processes over the global oceans.With the increasing sampling frequencies of satellite-borne scatterometer, it is vitally important to construct a long-time series of sea surface blended wind product for climate studies and numerical modeling studies as the forcing field. Previous studies have shown that wind fields with different spatial and temporal resolution have an apparent influence on numerical model results. Using the scatterometer winds and operational numerical model winds, this thesis aims to find an optimal wind blending method to merge winds from different sources, while effectively to retain the vorticity and divergence information in the blended wind products. The main findings of the thesis are listed as follows:Based on the 2-dimensional varational method (2DVAR) for wind blending, regularized terms for wind vorticity and divergence were introduced in the methodology to overcome the over-fitting problems associated with the 2DVAR method, and to retain the fine structure of scatterometer observed wind vorticity and divergence.Using the insitu wind observations in South China Sea, the QuikSCAT scatterometer winds and the global operational numerical prediction model winds of National Oceanic and Atmospheric Administratiton (NOAA) of the United States were evaluated. The analysis indicates that the accuracy and spatial/temporal variation of the sea surface winds are both reasonably good.Sensitivity studies of 2DVAR method with and without regularization of wind vorticity and divergence were performed for a typhoon case in 2008. The sensitivity studies show that 2DVAR with regularization effectively overcomes the over-fitting problems with smoother blended wind field. The spurious structure of false vorticity and divergence was effectively removed.The blended wind products with and without regularization terms in 2DVAR method were then evaluated using wind observations from an automatic meteorological observatorythan that produced from simple 2DVAR method, in terms of small bias and small root mean square errors (RMSE).As a final remark, the method described in this study can in South China Sea. The blended wind with regularization is more accurate in comparison with the insitu observation significantly reduce the noise level of scatterometer winds and keep the necessary information of wind vorticity and divergence. It is expected that the 2DVAR wind blending method with regularization terms can be implemented in the operational blended sea surfaced wind products in the future.
考虑涡度和辐散变化的海面混合风产品构造方法研究
海面矢量风驱动和调节海洋大气界面的热量和动量传递,影响海洋水体的热力和动力特性,从而决定全球尺度上的水循环、海洋环流和气候变化。海面风的空间变化是海洋动力学的重要驱动力。海表风涡度通过盆地尺度的Sverdrup输送驱动海洋环流,海表风辐散有效影响Ekman抽运,从而影响全球海洋的物理和生物过程。随着星载散射仪采样频率的增加,构建长时间的海面混合风产品序列作为强迫场对于气候研究和数值模拟研究至关重要。以往的研究表明,不同时空分辨率的风场对数值模式的结果有明显的影响。利用散射计风和实际数值模式风,寻找一种最优的混合风方法,在有效保留混合风产品中的涡度和散度信息的同时,将不同来源的风合并在一起。本文的主要研究成果如下:在二维变分方法(2DVAR)的基础上,引入了正则化的风涡度和散度项,克服了二维变分方法的过拟合问题,并保留了散射计观测到的风涡度和散度的精细结构。利用南海现场风观测资料,对QuikSCAT散射计风和美国国家海洋和大气管理局(NOAA)全球业务数值预测模式风进行了评价。分析表明,海面风的精度和时空变化都比较好。对2008年一次台风进行了风涡度和散度正则化和非正则化的2DVAR方法敏感性研究。灵敏度研究表明,正则化后的2DVAR有效地克服了平滑混合风场的过拟合问题。有效地消除了假涡度和假散度的虚假结构。然后利用自动气象台的风观测值对2DVAR方法中带正则化项和不带正则化项的混合风产品进行评估,得到偏差小、均方根误差(RMSE)小的结果。最后,本文所描述的方法适用于南海。与原位观测相比,正则化后的混合风精度更高,显著降低了散射计风的噪声水平,保留了必要的风涡度和散度信息。期望具有正则化项的2DVAR混风方法能够在未来实际混风海面产品中得到应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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