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首页> 外文期刊>Agronomie >A methodology to test the pertinence of remote-sensing data assimilation into vegetation models for water and energy exchange at the land surface
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A methodology to test the pertinence of remote-sensing data assimilation into vegetation models for water and energy exchange at the land surface

机译:测试遥感数据同化到植被模型中以进行陆地水和能量交换的相关性的方法

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摘要

This paper presents a methodology to test the performance of assimilation of satellite data into models for the functioning of the continental surface. This methodology applies the Kalman Ensemble Filter to modelling of plant growth and senescence inconjunction with the water and energy exchanges at the land surface. It belongs to a family of methods known in meteorology and oceanography as the Observing System Simulation Experiment (OSSE) approach. By combining information from modelling and observation, the Kalman Ensemble Filter permits corrections in real time of the simulated state of the continental surface, as well as propagation in time of the associated uncertainties. The OSSE approach may present a first step in designing a decision support system, and also in predicting the usefulness of new types of satellite data.
机译:本文提出了一种方法来测试将卫星数据同化为大陆表面功能模型的性能。这种方法将卡尔曼集成滤波器应用于植物生长和衰老与陆地表面的水和能量交换结合的建模。它属于气象学和海洋学中称为观测系统模拟实验(OSSE)方法的方法系列。通过结合来自建模和观测的信息,卡尔曼组合滤波器可以实时校正大陆表面的模拟状态,并及时传播相关的不确定性。 OSSE方法可能是设计决策支持系统以及预测新型卫星数据的有用性的第一步。

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