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CrocO_v1.0: a particle filter to assimilate snowpack observations in a spatialised framework

机译:Croco_v1.0:粒子过滤器,以在空间化框架中同化积雪观测

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Monitoring the evolution of snowpack properties in mountainous areas is crucial for avalanche hazard forecasting and water resources management. In situ and remotely sensed observations provide precious information on the state of the snowpack but usually offer limited spatio-temporal coverage of bulk or surface variables only. In particular, visible–near-infrared (Vis–NIR) reflectance observations can provide information about the snowpack surface properties but are limited by terrain shading and clouds. Snowpack modelling enables the estimation of any physical variable virtually anywhere, but it is affected by large errors and uncertainties. Data assimilation offers a way to combine both sources of information and to propagate information from observed areas to non-observed areas. Here, we present CrocO (Crocus-Observations), an ensemble data assimilation system able to ingest any snowpack observation (applied as a first step to the height of snow (HS) and Vis–NIR reflectances) in a spatialised geometry. CrocO uses an ensemble of snowpack simulations to represent modelling uncertainties and a particle filter (PF) to reduce them. The PF is prone to collapse when assimilating too many observations. Two variants of the PF were specifically implemented to ensure that observational information is propagated in space while tackling this issue. The global algorithm ingests all available observations with an iterative inflation of observation errors, while the klocal algorithm is a localised approach performing a selection of the observations to assimilate based on background correlation patterns. Feasibility testing experiments are carried out in an identical twin experiment setup, with synthetic observations of HS and Vis–NIR reflectances available in only one-sixth of the simulation domain. Results show that compared against runs without assimilation, analyses exhibit an average improvement of the snow water equivalent continuous rank probability score (CRPS) of 60?% when assimilating HS with a 40-member ensemble and an average 20?% CRPS improvement when assimilating reflectance with a 160-member ensemble. Significant improvements are also obtained outside the observation domain. These promising results open a possibility for the assimilation of real observations of reflectance or of any snowpack observations in a spatialised context.
机译:监测山区积雪物业的演变对于雪崩危险预测和水资源管理至关重要。原位和远程感知的观察结果提供有关积雪状态的珍贵信息,但通常仅提供散装或表面变量的有限的时空覆盖范围。特别地,可见近红外(Vis-NIR)反射率观察可以提供有关积雪表面特性的信息,但受到地形着色和云的限制。 SnowPack建模使得几乎可以随时随地估计任何物理变量,但它受到大错误和不确定性的影响。数据同化提供了一种结合信息来源的方法,并将来自观察区域的信息传播到未观察到的区域。在这里,我们呈现Croco(Crocus-Dealing),一个能够摄取任何积雪观察的集合数据同化系统(作为第一步到雪(HS)高度和Vis-Nir反射的高度)中的空间几何形状。 Croco使用积雪模拟的集合来表示建模不确定性和粒子过滤器(PF)以减少它们。在吸收太多观察时,PF易于崩溃。专门实施PF的两个变体,以确保在解决此问题的同时在空间中传播观测信息。全局算法对观察误差的迭代充气进行了摄取了所有可用的观察,而kcoL算法是一种局部方法,其执行基于背景相关模式来共聚的观察的选择。可行性测试实验是在相同的双实验设置中进行的,具有HS和Vis-Nir反射的合成观察,仅在仿真结构域中提供。结果表明,与不同化的不同化,分析表现出雪水当量连续等级概率得分(CRP)的平均改善60〜%,当同化40成员的集合时,在同化反射率时平均20?%CRPS改进有一个160-成员合奏。在观察结构域外也可以获得显着的改进。这些有希望的结果开辟了在空间化背景下同化反射率或任何积雪观测的真正观察的可能性。

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