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Large scale data assimilation based on RRSQRT-filters; application on atmospheric chemistry models

机译:基于RRSQRT滤波器的大规模数据同化;在大气化学模型中的应用

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Concentration patterns of air pollutants are usually obtained from either measured concentrations, or from concentrations calculated with an atmospheric model. With the increase of available computing power, one is now able to combine the benefits of both with the aid of data assimilation techniques. The aim of data assimilation is to improve model predictions through incorporation of all available measurement data. A special formulation of the Kalman filter, the so-called RRSQRT-filter, has proven to be an efficient tool for assimilation of data in atmospheric transport models. Two special extensions of the RRSQRT filter have now been made, such that the technique is more robust, and can be applied to a model including non-linear chemistry. The extended filter technique seems to be a useful tool for the assimilation of data with atmospheric chemistry models.
机译:空气污染物的浓度模式通常是从实测浓度或大气模型计算得出的浓度中得出的。随着可用计算能力的提高,现在可以借助数据同化技术将两者的优点结合起来。数据同化的目的是通过合并所有可用的测量数据来改善模型预测。卡尔曼滤波器的一种特殊形式,即所谓的RRSQRT滤波器,已被证明是一种用于吸收大气传输模型中数据的有效工具。现在已经对RRSQRT滤波器进行了两个特殊的扩展,从而使该技术更加健壮,并且可以应用于包括非线性化学的模型。扩展的过滤器技术似乎是将数据与大气化学模型同化的有用工具。

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