Assimilation of satellite swaths versus daily means of sea ice concentration in a regional coupled ocean–sea ice model

M. D. Moro, A. Sperrevik, T. Lavergne, Laurent Bertino, Y. Gusdal, S. C. Iversen, Jozef Rusin, M. D. Moro
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引用次数: 2

Abstract

Abstract. Operational forecasting systems routinely assimilate daily means of sea ice concentration (SIC) from microwave radiometers in order to improve the accuracy of the forecasts. However, the temporal and spatial averaging of the individual satellite swaths into daily means of SIC entails two main drawbacks: (i) the spatial resolution of the original product is blurred (especially critical in periods with strong sub-daily sea ice movement), and (ii) the sub-daily frequency of passive microwave observations in the Arctic are not used, providing less temporal resolution in the data assimilation (DA) analysis and, therefore, in the forecast. Within the SIRANO (Sea Ice Retrievals and data Assimilation in NOrway) project, we investigate how challenges (i) and (ii) can be avoided by assimilating individual satellite swaths (level 3 uncollated) instead of daily means (level 3) of SIC. To do so, we use a regional configuration of the Barents Sea (2.5 km grid) based on the Regional Ocean Modeling System (ROMS) and the Los Alamos Sea Ice Model (CICE) together with the ensemble Kalman filter (EnKF) as the DA system. The assimilation of individual swaths significantly improves the EnKF analysis of SIC compared to the assimilation of daily means; the mean absolute difference (MAD) shows a 10 % improvement at the end of the assimilation period and a 7 % improvement at the end of the 7 d forecast period. This improvement is caused by better exploitation of the information provided by the SIC swath data, in terms of both spatial and temporal variance, compared to the case when the swaths are combined to form a daily mean before assimilation.
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区域海洋-海冰耦合模型中卫星扫面与海冰浓度日均值的同化
摘要。业务预报系统通常会吸收微波辐射计的海冰浓度(SIC)日均值,以提高预报的准确性。然而,将单个卫星扫面的时空平均值转化为海冰浓度日均值有两个主要缺点:(i) 原始产品的空间分辨率模糊(在海冰次日运动强烈的时期尤为关键),(ii) 北极地区被动微波观测的次日频率未被使用,从而降低了数据同化分析的时间分辨率,因此也降低了预报的时间分辨率。在 SIRANO(NOrway 中的海冰检索和数据同化)项目中,我们研究了如何通过同化单个卫星扫面(第 3 级无ollated)而不是 SIC 的日均值(第 3 级)来避免挑战(i)和(ii)。为此,我们使用了基于区域海洋模拟系统(ROMS)和洛斯阿拉莫斯海冰模式(CICE)的巴伦支海区域配置(2.5 公里网格),并使用集合卡尔曼滤波器(EnKF)作为数据分析系统。与日均值同化相比,单个扇面同化显著提高了 EnKF 对 SIC 的分析能力;平均绝对差值(MAD)显示,同化期结束时提高了 10%,7 天预报期结束时提高了 7%。与同化前将各切面合并成日平均值的情况相比,这种改进是由于更好地利用了 SIC 切面数据在空间和时间方差方面提供的信息。
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