基于灵敏度算子的大气污染物三维运移转化模型数据同化算法

IF 0.9 Q4 OPTICS
A. V. Penenko, A. V. Gochakov, P. N. Antokhin
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引用次数: 0

摘要

三维传输和转换模式使考虑大气过程的垂直非均质性成为可能。然而,它们的使用需要设置大量的参数和大量的计算资源,特别是在求解逆和数据同化问题时。针对未知发射源的三维输运转换模型,提出了一种新的数据同化算法。该算法采用了一种基于灵敏度算子和伴随方程解集成的方法,该方法已在分布式存储计算机IMDAF逆建模系统中实现。在贝加尔湖地区的实际场景中,该算法基于模拟遥感数据的综合垂直测量数据,使浓度场误差降低了15%。在给定的源位置垂直水平下,浓度场和源内的误差分别降低了93%和85%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Data Assimilation Algorithm Based on the Sensitivity Operator for a Three-Dimensional Model of Transport and Transformation of Atmospheric Contaminants

Data Assimilation Algorithm Based on the Sensitivity Operator for a Three-Dimensional Model of Transport and Transformation of Atmospheric Contaminants

Three-dimensional transport and transformation models make it possible to take into account the vertical heterogeneity of atmospheric processes. However, their use requires setting a large number of parameters and significant computing resources, especially when solving inverse and data assimilation problems. A new data assimilation algorithm for a three-dimensional transport and transformation model with unknown emission sources is presented. The algorithm uses an approach based on sensitivity operators and ensembles of solutions of adjoint equations implemented in the IMDAF inverse modeling system for distributed memory computers. When tested in a realistic Baikal region scenario, the algorithm, based on the data of integrated vertical measurements simulating remote sensing data, enabled reducing the error in the concentration field by 15%. With the given vertical level of the source location, the errors in the concentration field and in the source were reduced by 93% and 85%, respectively.

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来源期刊
CiteScore
2.40
自引率
42.90%
发文量
84
期刊介绍: Atmospheric and Oceanic Optics  is an international peer reviewed journal that presents experimental and theoretical articles relevant to a wide range of problems of atmospheric and oceanic optics, ecology, and climate. The journal coverage includes: scattering and transfer of optical waves, spectroscopy of atmospheric gases, turbulent and nonlinear optical phenomena, adaptive optics, remote (ground-based, airborne, and spaceborne) sensing of the atmosphere and the surface, methods for solving of inverse problems, new equipment for optical investigations, development of computer programs and databases for optical studies. Thematic issues are devoted to the studies of atmospheric ozone, adaptive, nonlinear, and coherent optics, regional climate and environmental monitoring, and other subjects.
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