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Robust bivariate error detection in skewed data with application to historical radiosonde winds

机译:偏斜数据中的稳健双变量错误检测及其在历史无线电探空仪风中的应用

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摘要

The global historical radiosonde archives date back to the 1920s and contain the only directly observed measurements of temperature, wind, and moisture in the upper atmosphere, but they contain many random errors. Most of the focus on cleaning these large datasets has been on temperatures, but winds are important inputs to climate models and in studies of wind climatology. The bivariate distribution of the wind vector does not have elliptical contours but is skewed and heavy-tailed, so we develop two methods for outlier detection based on the bivariate skew-t (BST) distribution, using either distance-based or contour-based approaches to flag observations as potential outliers. We develop a framework to robustly estimate the parameters of the BST and then show how the tuning parameter to get these estimates is chosen. In simulation, we compare our methods with one based on a bivariate normal distribution and a nonparametric approach based on the bagplot. We then apply all four methods to the winds observed for over 35,000 radiosonde launches at a single station and demonstrate differences in the number of observations flagged across eight pressure levels and through time. In this pilot study, the method based on the BST contours performs very well.
机译:全球历史无线电探空仪档案可以追溯到1920年代,其中包含唯一直接观测到的高层大气温度,风和湿度的测量值,但是它们包含许多随机误差。清洁这些大数据集的大部分重点都放在温度上,但是风是气候模型和风气候学研究的重要输入。风矢量的二元分布不具有椭圆形轮廓,但存在偏斜和重尾现象,因此我们基于基于距离或基于轮廓的方法,基于二元偏斜-t(BST)分布开发了两种离群值检测方法将观察结果标记为潜在异常值。我们开发了一个框架来稳健地估计BST的参数,然后说明如何选择用于获取这些估计的调整参数。在仿真中,我们将我们的方法与基于二元正态分布的方法和基于风标图的非参数方法进行了比较。然后,我们将所有四种方法应用于在单个站点上观测到的35,000多枚探空仪发射的风,并证明在八个压力水平和整个时间范围内标记的观测数量存在差异。在这项初步研究中,基于BST轮廓的方法效果很好。

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