首页> 外文期刊>Journal of marine systems: journal of the European Association of Marine Sciences and Techniques >Combining Argo and remote-sensing data to estimate the ocean three-dimensional temperature fields - a first approach based on simulated observations
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Combining Argo and remote-sensing data to estimate the ocean three-dimensional temperature fields - a first approach based on simulated observations

机译:结合Argo和遥感数据估计海洋三维温度场-基于模拟观测的第一种方法

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The study aims to analyze the contribution of the combination of high-resolution sea level and sea surface temperature satellite data with accurate but sparse in situ temperature profile data as given by At-go to the reconstruction of the large-scale, monthly mean, 200-m depth temperature fields. The main issue is to reconstruct instantaneous temperature fields at high temporal and spatial resolution and thus improve the representation of the large-scale and low-frequency temperature fields at the given depth. The method is developed and presented for the temperature field at 200-m depth but can be applied to any depth and also to the salinity field. The study uses outputs and profiling float simulations derived from a state-of-the-art, eddy-resolving (1/6degrees-resolution) primitive equation model of the North Atlantic. Synthetic 200-m temperatures are first derived from simulated altimeter and SST data through a multiple linear regression; they are then combined with individual Argo 200-m simulated temperatures. The optimal merging uses an objective analysis method that takes into account analyzed errors on the observations and, particularly, correlated errors on synthetic temperatures deduced from remote-sensing data. Results indicate that the optimal combination is instrumental in reducing the aliasing due to the mesoscale variability and in adjusting the high-resolution combined fields to the in situ data. The rms of mapping error of the large-scale and low-frequency temperature fields at 200-m depth is largely reduced (by a factor of 4 in large mesoscale variability regions) when combining both data types, as compared to the results obtained using only in situ profiles. (C) 2004 Elsevier B.V. All rights reserved.
机译:该研究旨在分析高分辨率海平面和海面温度卫星数据与At-go所提供的准确但稀疏的原地温度剖面数据相结合对重建大规模月平均200的贡献。 -m深度温度场。主要问题是在高时空分辨率下重建瞬时温度场,从而改善给定深度下大规模和低频温度场的表示。该方法是针对200 m深度的温度场开发和提出的,但可以应用于任何深度,也可以应用于盐度场。这项研究使用了从北大西洋最先进的涡旋分辨(分辨率为1/6度)原始方程模型得到的输出和轮廓浮标模拟。首先通过多重线性回归从模拟的高度计和SST数据中得出200 m的合成温度。然后将它们与单独的Argo 200-m模拟温度结合在一起。最佳合并使用一种客观分析方法,该方法考虑到观测值的分析误差,尤其是从遥感数据推导出的合成温度相关误差。结果表明,最佳组合有助于减少因中尺度变化而引起的混叠,并有助于将高分辨率组合场调整为原位数据。与仅使用两种数据类型相结合的结果相比,将两种数据类型组合在一起时,在200 m深度处的大型和低频温度场的映射误差的均方根值将大大降低(在较大的中尺度可变性区域中,系数降低了4倍)原位轮廓。 (C)2004 Elsevier B.V.保留所有权利。

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