首页> 外文期刊>ournal of the Meteorological Society of Japan >Applications of Data Assimilation to Analysis of the Ocean on Large Scales (gtSpecial IssueltData Assimilation in Meteology and Oceanography: Theory and Practice)
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Applications of Data Assimilation to Analysis of the Ocean on Large Scales (gtSpecial IssueltData Assimilation in Meteology and Oceanography: Theory and Practice)

机译:数据同化在大规模海洋分析中的应用(gtSpecial Issuelt气象和海洋学中的数据同化:理论与实践)

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It is commonplace to begin talks on this topic by noting that oceanographic data are too scarce and sparse to provide complete initial and boundary conditions for large-scale ocean models. Even considering the availability of remotely-sensed data such as radar altimetry from the TOPEX and ERS-1 satellites, a glance at a map of available subsurface data should convince most observers that this is still the case. Data are still too sparse for comprehensive treatment of interannual to interdecadal climate change through the use of models, since the new data sets have not been around for very long. In view of the dearth of data, we must note that the overall picture is changing rapidly. Recently, there have been a number of large scale ocean analysis and prediction efforts, some of which now run on an operational or at least quasi-operational basis, most notably the model based analyses of the tropical oceans. These programs are modeled on numerical weather prediction. Aside from the success of the global tide models, assimilation of data in the tropics, in support of prediction and analysis of seasonal to interannual climate change, is probably the area of large scale ocean modeling and data assimilation in which the most progress has been made. Climate change is a problem which is particularly suited to advanced data assimilation methods. Linear models are useful, and the linear theory can be exploited. For the most part, the data are sufficiently sparse that implementation of advanced methods is worthwhile. As an example of a large scale data assimilation experiment with a recent extensive data set, we present results of a tropical ocean experiment in which the Kalman filter was used to assimilate three years of altimetric data from Geosat into a coarsely resolved linearized long wave shallow water model. Since nonlinear processes dominate the local dynamic signal outside the tropics, subsurface dynamical quantities cannot be reliably inferred from surface height anomalies. Because of its potential for large scale synoptic coverage of the deep ocean, acoustic travel time data should be a natural complement to satellite altimetry. Satellite data give us vertical integrals associated with thermodynamic and dynamic processes, while acoustic travel times provide horizontal integrals from which dynamics of the deep ocean can be inferred. Linearized analysis indicates that detailed information can be retrieved by means of data assimilation from integral sources of data such as acoustic travel times. Static analysis of tomographic data without data assimilation cannot provide nearly so much detail. It can be shown that integrated quantities along the edges and diagonals of a simple square array combined with a linearized quasigeostrophic model is an observable system, down to scales much shorter than the dimensions of the array. Nonlinearities complicate the picture, but the linear results, along with a few preliminary numerical experiments give us cause for optimism.
机译:通过指出海洋学数据太稀少和稀疏而无法为大规模海洋模型提供完整的初始和边界条件,开始对此话题进行讨论是很平常的。即使考虑到来自TOPEX和ERS-1卫星的雷达测高等遥感数据的可用性,对可用地下数据地图的一瞥也应该使大多数观察者相信情况仍然如此。由于使用新模型的时间不长,因此对于使用年际到年代际气候变化进行综合处理的数据仍然太少。鉴于数据不足,我们必须注意总体情况正在迅速变化。近来,已经进行了许多大规模的海洋分析和预测工作,其中一些现在在运行或至少准运行的基础上进行,最值得注意的是对热带海洋的基于模型的分析。这些程序以数值天气预报为模型。除了全球潮汐模型的成功之外,热带地区的数据同化,以支持对季节至年际气候变化的预测和分析,可能是大规模海洋模拟和数据同化领域中取得最大进展的领域。 。气候变化是一个特别适合高级数据同化方法的问题。线性模型是有用的,并且可以利用线性理论。在大多数情况下,数据非常稀疏,因此值得实施高级方法。作为具有大量最新数据集的大规模数据同化实验的示例,我们介绍了一项热带海洋实验的结果,其中使用卡尔曼滤波器将来自Geosat的三年高空数据同化为粗分解的线性长波浅水区模型。由于非线性过程支配着热带以外的局部动态信号,因此不能从表面高度异常可靠地推断出地下动力量。由于其有可能对深海进行大规模天气覆盖,因此声波传播时间数据应该是卫星测高的自然补充。卫星数据为我们提供了与热力学和动力学过程相关的垂直积分,而声传播时间则提供了可以从中推断深海动力学的水平积分。线性分析表明,可以通过数据同化从整体数据源(如声波传播时间)中检索详细信息。没有数据同化的层析数据的静态分析无法提供太多细节。可以看出,沿着简单正方形阵列的边缘和对角线的积分量与线性拟准营养模型相结合是一个可观察到的系统,其尺度缩小到比阵列尺寸短得多。非线性使图片复杂化,但是线性结果以及一些初步的数值实验使我们感到乐观。

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