热带印度洋盐度观测系统实验框架:使用三颗卫星星座的案例研究

IF 2.3 3区 地球科学 Q2 OCEANOGRAPHY Deep-sea Research Part Ii-topical Studies in Oceanography Pub Date : 2023-10-22 DOI:10.1016/j.dsr2.2023.105345
Smitha Ratheesh , Neeraj Agarwal , Rashmi Sharma
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引用次数: 0

摘要

本文在观测系统实验(OSE)框架下,分析了SMOS、Aquarius和SMAP多卫星同化海面盐度(SSS)对北印度洋海洋数值模式模拟的影响。利用2015年4 - 5月的Aquarius、SMAP和SMOS的日数据集,利用集合最优插值技术对海洋模型进行约束。除了不同化卫星数据的控制模拟外,还进行了7次不同卫星SSS组合的同化实验。通过将模式模拟变量与现场观测值进行比较,分析了同化实验的影响。与对照组相比,同化卫星SSS导致SSS的均方根误差(RMSE)降低(~ 54%),地下盐度也降低(~ 21%)。同化SMAP观测对模式模拟的影响最大,误差降低了~ 54%。三颗卫星对地下盐度的改善效果更好,在盐斜区RMSE提高了~ 31%,比单颗卫星同化提高了~ 11%。SSS的同化也改善了模式地表、次地表温度和混合层深度的模拟。模式结果表明SSS观测能够补充其他海洋观测网。本研究的一个重要观察结果是,虽然同化一颗卫星的SSS观测结果与同化两颗或三颗卫星的SSS观测结果在校正模拟表面盐度方面的影响相当,但多颗卫星的同化对海洋较深层盐度的影响更大。
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An observing system experiment framework for the tropical Indian Ocean salinity: A case study using a constellation of three satellites

In this study impact of assimilating Sea Surface Salinity (SSS) from multi-satellites (SMOS, Aquarius and SMAP) on numerical ocean model simulations in the north Indian Ocean has been analysed under the observing system experiment (OSE) framework. Daily data sets of Aquarius, SMAP and SMOS, which were available for a common period of April–May 2015, are used to constrain the ocean model using ensemble optimal interpolation technique. Apart from the control simulation in which satellite data were not assimilated, a total of seven assimilation experiments using different combinations of satellite SSS were conducted. The impact of assimilation experiments is analysed by comparing the model-simulated variables with in situ observations. Assimilating satellite SSS results in a reduction in Root Mean Square Error (RMSE) in SSS (∼ 54%) and also in subsurface salinity (∼ 21%) over the control run. The impact of assimilating SMAP observations is maximum on model simulations with the errors reducing by ∼ 54%. Subsurface salinity improvement is better with three satellites with ∼31% improvement in RMSE in the halocline region, which was ∼11% more than single satellite assimilation. Assimilation of SSS also resulted in improved simulations of the model surface, subsurface temperature and mixed layer depth. Model results show the ability of SSS observations to complement other ocean observation networks. One important observation from this study is that while the impact of assimilating SSS observations from a single satellite was on par with the impact of assimilating SSS observations from two or three satellites in correcting simulated surface salinity, assimilation from more than one satellite had a larger impact in the salinity of deeper layers of the ocean.

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来源期刊
CiteScore
6.40
自引率
16.70%
发文量
115
审稿时长
3 months
期刊介绍: Deep-Sea Research Part II: Topical Studies in Oceanography publishes topical issues from the many international and interdisciplinary projects which are undertaken in oceanography. Besides these special issues from projects, the journal publishes collections of papers presented at conferences. The special issues regularly have electronic annexes of non-text material (numerical data, images, images, video, etc.) which are published with the special issues in ScienceDirect. Deep-Sea Research Part II was split off as a separate journal devoted to topical issues in 1993. Its companion journal Deep-Sea Research Part I: Oceanographic Research Papers, publishes the regular research papers in this area.
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