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首页> 外文期刊>Geoscientific Model Development Discussions >Comparison of different sequential assimilation algorithms for satellite-derived leaf area index using the Data Assimilation Research Testbed (version Lanai)
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Comparison of different sequential assimilation algorithms for satellite-derived leaf area index using the Data Assimilation Research Testbed (version Lanai)

机译:利用数据同化研究试验表(版本Lanai)的卫星衍生叶片区指数不同顺序同化算法的比较

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The leaf area index (LAI) is a crucial parameter for understanding the exchanges of mass and energy between terrestrial ecosystems and the atmosphere. In this study, the Data Assimilation Research Testbed (DART) has been successfully coupled to the Community Land Model with explicit carbon and nitrogen components (CLM4CN) by assimilating Global Land Surface Satellite (GLASS) LAI data. Within this framework, four sequential assimilation algorithms, including the kernel filter (KF), the ensemble Kalman filter (EnKF), the ensemble adjust Kalman filter (EAKF), and the particle filter (PF), are thoroughly analyzed and compared. The results show that assimilating GLASS LAI into the CLM4CN is an effective method for improving model performance. In detail, the assimilation accuracies of the EnKF and EAKF algorithms are better than those of the KF and PF algorithm. From the perspective of the average and RMSD, the PF algorithm performs worse than the EAKF and EnKF algorithms because of the gradually reduced acceptance of observations with assimilation steps. In other words, the contribution of the observations to the posterior probability during the assimilation process is reduced. The EAKF algorithm is the best method because the matrix is adjusted at each time step during the assimilation procedure. If all the observations are accepted, the analyzed LAI seem to be better than that when some observations are rejected, especially in low-latitude regions.
机译:叶面积指数(LAI)是理解陆地生态系统与大气之间的质量和能量交流的关键参数。在这项研究中,数据同化研究试验(DART)通过同化全球陆地卫星(玻璃)LAI数据,已成功地与具有显式碳和氮素成分(CLM4CN)的群体土地模型。在该框架内,彻底分析并比较了四个连续同化算法,包括内核滤波器(KF),集合滤波器(ENKF),集合调整卡尔曼滤波器(IAKF)和粒子过滤器(PF)。结果表明,同化玻璃Lai进入CLM4CN是改善模型性能的有效方法。详细地,ENKF和EAKF算法的同化精度优于KF和PF算法的算法。从平均值和RMSD的角度来看,PF算法比EAKF和ENKF算法进行差,因为逐渐降低了对同化步骤的观察的接受。换句话说,减少了观察结果在同化过程中对后验概率的贡献。极值算法是最好的方法,因为在同化过程中的每次步骤中调整矩阵。如果接受所有观察,则分析的Lai似乎比在拒绝某些观察的情况下更好,特别是在低纬度地区。

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