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Sea surface salinity variability from a simplified mixed layer model of the global ocean

机译:来自全球海洋简化混合层模型的海表盐度变异性

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A bi-dimensional mixed layer model (MLM) of the global ocean is used to investigate the sea surface salinity (SSS) balance and variability at daily to seasonal scales. Thus a simulation over an average year is performed with daily climatological forcing fields. The forcing dataset combines air-sea fluxes from a meteorological model, geostrophic currents from satellite altimeters and in situ data for river run-offs, deep temperature and salinity. The model is based on the "slab mixed layer" formulation, which allows many simplifications in the vertical mixing representation, but requires an accurate estimate for the Mixed Layer Depth. Therefore, the model MLD is obtained from an original inversion technique, by adjusting the simulated temperature to input sea surface temperature (SST) data. The geographical distribution and seasonal variability of this "effective" MLD is validated against an in situ thermocline depth. This comparison proves the model results are consistent with observations, except at high latitudes and in some parts of the equatorial band. The salinity balance can then be analysed in all the remaining areas. The annual tendency and amplitude of each of the six processes included in the model are described, whilst providing some physical explanations. A map of the dominant process shows that freshwater flux controls SSS in most tropical areas, Ekman transport in Trades regions, geostrophic advection in equatorial jets, western boundary currents and the major part of subtropical gyres, while diapycnal mixing leads over the remaining subtropical areas and at higher latitudes. At a global scale, SSS variations are primarily caused by horizontal advection (46%), then vertical entrainment (24%), freshwater flux (22%) and lateral diffusion (8%). Finally, the simulated SSS variability is compared to an in situ climatology, in terms of distribution and seasonal variability. The overall agreement is satisfying, which confirms that the salinity balance is reliable. The simulation exhibits stronger gradients and higher variability, due to its fine resolution and high frequency forcing. Moreover, the SSS variability at daily scale can be investigated from the model, revealing patterns considerably different from the seasonal cycle. Within the perspective of the future satellite missions dedicated to SSS retrieval (SMOS and Aquarius/SAC-D), the MLM could be useful for determining calibration areas, as well as providing a first-guess estimate to inversion algorithms.
机译:使用全球海洋的二维混合层模型(MLM)来研究海表盐度(SSS)平衡和每日到季节性尺度的变化。因此,使用每日气候强迫场进行了平均年的模拟。强迫数据集结合了气象模型的海气通量,卫星高度计的地转流以及河流径流,深部温度和盐度的现场数据。该模型基于“平板混合层”公式,该公式可以简化垂直混合表示形式,但需要对混合层深度进行准确估算。因此,通过调整模拟温度以输入海表温度(SST)数据,可以从原始反演技术中获得模型MLD。这种“有效” MLD的地理分布和季节性变化是根据原位温跃层深度进行验证的。这种比较证明了模型结果与观测结果一致,除了在高纬度和赤道带的某些部分。然后可以在所有其余区域中分析盐度平衡。描述了模型中包含的六个过程中每个过程的年度趋势和幅度,同时提供了一些物理解释。主导过程的地图显示,多数热带地区的淡水通量控制着SSS,Trades地区的Ekman输运,赤道喷流的地转对流,西部边界洋流和亚热带回旋的主要部分,而洋流混合作用则主导了其余的亚热带地区和在较高的纬度。在全球范围内,SSS变化主要是由水平对流(46%),垂直夹带(24%),淡水通量(22%)和横向扩散(8%)引起的。最后,就分布和季节变化而言,将模拟的SSS变异性与就地气候学进行了比较。总体协议令人满意,这表明盐度平衡是可靠的。由于其精细的分辨率和高频强迫,该仿真具有更强的梯度和更高的可变性。此外,可以从模型中研究日尺度上的SSS变异性,揭示出与季节性周期显着不同的模式。在致力于SSS检索的未来卫星任务(SMOS和Aquarius / SAC-D)的角度来看,MLM可用于确定校准区域,并为反演算法提供初步估计。

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