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Exploring methods for combining altimetry with other data to extend the 20-year altimetric record onto a 50 year timescale

机译:探索将高度测量与其他数据相结合的方法,将20年的高度记录扩展到50年的时间尺度

摘要

Ocean satellite altimetry has provided global sets of sea level data for the last two decades, allowing determination of spatial patterns in global sea level. For reconstructions going back further than this period, tide gauge data can be used as a proxy for the model. We examine different methods of combining satellite altimetry and tide gauge data usingoptimal weighting of tide gauge data, linear regression and EOFs, including automatic quality checks of the tide gauge time series. We attempt to test the sensibility of reconstruction using known and existing datasets and to test the important of augmenting the model using various proxies such as climate indices like the NAO and PDO. We will also investigate alternativetransformations such as maximum autocorrelation factors (MAF), which better take into account the spatio-temporal structure of the variation. Whereas a traditional EOF analysis tries to explain as much variance as possible, the MAF transform considers noise to be uncorrelated with a spatially or temporally shifted version of itself, unlike the desired signal which willexhibit autocorrelation. For the application to global dataset it is necessary to consider and account for wrap-around of spatial shifts. Parameters from physical oceanography will be incorporated using ocean models (i.e., DRAKKAR; SODA) for a preliminary reference. Our focus is on a timescale going back approximately 50 years, allowing reasonable global availabilityof model and tide gauge data. This allows for better sensitivity analysis with respect to spatial distribution, and tide gauge data.
机译:海洋卫星测高仪提供了过去二十年的全球海平面数据集,从而可以确定全球海平面的空间格局。对于比该时期更早的重建,潮汐计数据可以用作模型的代理。我们使用潮汐计数据的最佳加权,线性回归和EOF(包括潮汐计时间序列的自动质量检查),研究了将卫星测高仪和潮汐计数据相结合的不同方法。我们尝试使用已知和现有的数据集来测试重建的敏感性,并使用诸如NAO和PDO之类的气候指数来测试增强模型的重要性。我们还将研究替代变换,例如最大自相关因子(MAF),它可以更好地考虑变化的时空结构。传统的EOF分析试图解释尽可能多的方差,而MAF变换则认为噪声与其自身的空间或时间上的变化形式不相关,这与期望的信号表现出自相关不同。对于应用于全局数据集,有必要考虑并考虑空间移位的折回。物理海洋学的参数将使用海洋模型(即DRAKKAR; SODA)合并,以提供初步参考。我们的重点是可以追溯到大约50年的时间尺度,从而可以合理地在全球范围使用模型和潮汐仪数据。这样可以对空间分布和潮汐仪数据进行更好的灵敏度分析。

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