首页> 外文会议>Ninth Joint International Symposium on Atmospheric and Ocean Optics/Atmospheric Physics. Part II: Laser Sensing and Atmospheric Physics Jul 2-5, 2002 Tomsk, Russia >Polynomial algorithm of the spatial forecast of atmospheric state parameters based on the Kalman filtering and its application
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Polynomial algorithm of the spatial forecast of atmospheric state parameters based on the Kalman filtering and its application

机译:基于卡尔曼滤波的大气状态参数空间预测多项式算法及其应用

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In the paper, the problem of spatial forecast of mesoscale fields at the point of space uncovered by meteorological information is discussed. The algorithms for estimating and forecasting the atmospheric parameters based on Kalman filtering theory. The offered algorithm takes into account horizontal statistical structure of a field at separate atmospheric levels and its time dynamics. The atmospheric parameter in a point is defined on the basis of a second-order polynomial model. The offered algorithm of the spatial forecast is investigated on the data long-term balloon observations for layer-by-layer averaging of temperature, zonal and meridional 1 wind velocity components.
机译:本文讨论了气象信息未揭示的中尺度场空间预测问题。基于卡尔曼滤波理论的大气参数估计和预报算法。所提供的算法考虑了在单独的大气水平下一个场的水平统计结构及其时间动态。基于二阶多项式模型定义点中的大气参数。对提供的空间预测算法进行了长期的气球观测数据研究,以逐层平均计算温度,纬向和经向1风速分量。

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