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Objectively mapping HF radar-derived surface current data using measured and idealized data covariance matrices

机译:使用测得的和理想化的数据协方差矩阵来客观地映射源自高频雷达的表面电流数据

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Surface currents measured by high-frequency radars are objectively mapped using covariance matrices computed from hourly surface current vectors spanning two years. Since retrievals of surface radial velocities are inherently gappy in space and time, the irregular density of surface current data leads to negative eigenvalues in the sample covariance matrix. The number and the magnitude of the negative eigenvalues depend on the degree of data continuity used in the matrix computation. In a region of 90% data coverage, the negative eigenvalues of the sample covariance matrix are small enough to be removed by adding a noise term to the diagonal of the matrix. The mapping is extended to regions of poorer data coverage by applying a smoothed covariance matrix obtained by spatially averaging the sample covariance matrix. This approach estimates a stable covariance matrix of surface currents for regions with the intermittent radar coverage. An additional benefit is the removal of baseline errors that often exist between two radar sites. The covariance matrices and the correlation functions of the surface currents are exponential in space rather than Gaussian, as is often assumed in the objective mapping of oceanographic data sets. Patterns in the decorrelation length scale provide the variabilities of surface currents and the insights on the influence of topographic features (bathymetry and headlands). The objective mapping approach presented herein lends itself to various applications, including the Lagrangian transport estimates, dynamic analysis through divergence and vorticity of current vectors, and statistical models of surface currents.
机译:高频雷达测得的地表电流是使用根据两年跨度的每小时地表电流矢量计算出的协方差矩阵来客观绘制的。由于表面径向速度的获取在空间和时间上固有地不完整,因此表面电流数据的不规则密度导致样本协方差矩阵中的负特征值。负特征值的数量和大小取决于矩阵计算中使用的数据连续性程度。在数据覆盖率为90%的区域中,样本协方差矩阵的负特征值足够小,可以通过在矩阵的对角线上添加噪声项来消除。通过应用通过对样本协方差矩阵进行空间平均而获得的平滑协方差矩阵,可以将映射扩展到数据覆盖范围较差的区域。该方法估计具有间歇雷达覆盖范围的区域的表面电流的稳定协方差矩阵。另一个好处是消除了两个雷达站点之间经常存在的基线误差。海洋数据集的目标映射中经常假设,协方差矩阵和表面电流的相关函数在空间中是指数级的,而不是高斯型。去相关长度标度中的图案提供了表面电流的变化性,并提供了对地形特征(测深法和岬角)影响的见解。本文介绍的客观映射方法适用于各种应用,包括拉格朗日输运估计,通过电流矢量的发散和涡度进行的动态分析以及表面电流的统计模型。

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