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GSMaP RIKEN Nowcast: Global Precipitation Nowcasting with Data Assimilation

机译:GSMap Riken Nowcast:全球降水Newactions与Data Assmilation一起播放

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?Since January 2016, RIKEN has run an extrapolation-based nowcasting system of global precipitation in real time. Although our previous paper reported the effectiveness of using data assimilation in a limited verification period, the long-term stability of the forecast accuracy through different seasons has not been investigated. In addition, the algorithm was updated seven times between January 2016 and March 2018. Therefore, this paper aims to examine how motion vectors can be derived more accurately, and how data assimilation can stably constrain an advection-diffusion model for extrapolation for the long-term operation. The Japan Aerospace Exploration Agency's Global Satellite Mapping of Precipitation (GSMaP) near-real-time product is the only input to the nowcasting system. The motion vectors of precipitation areas are computed by a cross-correlation method, and the Local Ensemble Transform Kalman Filter is used to generate a smooth, complete set of motion vectors. Precipitation areas are extrapolated in time up to 12 hours ahead, and the product, called GSMaP RIKEN Nowcast, is disseminated on a webpage in real time. Most of the algorithmic updates involved improving the estimation of the motion vectors, and the forecast accuracy was gradually and consistently improved by these updates. In particular, the threat scores increased the most at approximately 40°S and 40°N. A performance decrease in the northern hemisphere winter was also reduced by reducing noise in advection. The time series of the ensemble spread demonstrated that an increase in the number of available motion vectors by a system update led to a decrease in the ensemble spread, and vice versa.
机译:?自2016年1月以来,Riken实时运行了基于外推的全球降水系统。虽然我们之前的论文报告了在有限验证期间使用数据同化的有效性,但尚未调查通过不同季节预测精度的长期稳定性。此外,该算法于2016年1月至2018年3月七次更新了七次。因此,本文旨在检验如何更准确地推导运动矢量,以及数据同化如何稳定地限制用于长的外推的平流扩散模型。术语操作。日本航空航天勘探机构的降水(GSMAP)的全球卫星映射近实时产品是唯一对北卡斯特系统的输入。降水区域的运动矢量通过互相关方法计算,并且局部集合变换卡尔曼滤波器用于产生平滑,完整的运动矢量。降水区随着时间的推移,未来12小时,而且名为GSMap Riken Nowcast的产品实时在网页上传播。大多数算法更新涉及改善运动向量的估计,并且通过这些更新逐渐且始终得到预测精度。特别是,威胁得分最多在约40°S和40°N下增加。通过降低平流噪声,北半球冬季的性能降低。集合传播的时间序列表明,系统更新的可用运动矢量的数量增加导致集合扩散的减少,反之亦然。

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