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Impacts of Initial Estimate and Observation Availability on Convective-Scale Data Assimilation with an Ensemble Kalman Filter

机译:初始估计值和观测可用性对采用集合卡尔曼滤波的对流尺度数据同化的影响

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The ensemble Kalman filter (EnKF) uses an ensemble of short-range forecasts to estimate the flow-dependent background error covariances required in data assimilation. The feasibility of the EnKF for convective-scale data assimilation has been previously demonstrated in perfect-model experiments using simulated observations of radial velocity from a supercell storm. The present study further explores the potential and behavior of the EnKF at convective scales by considering more realistic initial analyses and variations in the availability and quality of the radar observations. Assimilation of simulated radial-velocity observations every 5 min where there is significant reflectivity using 20 ensemble members proves to be successful in most realistic observational scenarios for simulated supercell thunderstorms, although the same degree of success may not be readily expected with real observations and an imperfect model, at least with the present EnKF implementation. Even though the filter converges toward the truth simulation faster from a better initial estimate, an experiment with the initial estimate of the supercell displaced by 10 km still yields an accurate estimate of the storm for both observed and unobserved variables within 40 min. Similarly, radial-velocity observations below 2 km are certainly beneficial to capturing the storm (especially the detailed cold pool structure), but in their absence the assimilation scheme can still achieve a comparably accurate estimate of the state of the storm given a slightly longer assimilation period. An experiment with radar observations only above 4 km fails to assimilate the storm properly, but, with the addition of a hypothetical surface mesonet taking wind and temperature observations, the EnKF can again provide a good estimate of the storm. The supercell can also be successfully assimilated in the case of radar observations only below 4 km (such as those from the ground-based mobile radars). More frequent observations can help the storm assimilation initially, but the benefit diminishes after half an hour. Results presented here indicate that the vertical resolution and the uncertainty of observations, for the typical range of most of the observational radars, would have little impact on the overall performance of the EnKF in assimilating the storm.
机译:集合卡尔曼滤波器(EnKF)使用短距离预测的集合来估计数据同化所需的与流量相关的背景误差协方差。 EnKF用于对流尺度数据同化的可行性先前已通过使用超级单体风暴的径向速度的模拟观测结果在完美模型实验中得到证明。本研究通过考虑更现实的初始分析以及雷达观测的可用性和质量的变化,进一步探索了对流尺度上EnKF的潜力和行为。在大多数模拟超级单体雷暴的真实观测场景中,使用20个合奏成员每5分钟对具有显着反射率的模拟径向速度观测进行同化被证明是成功的,尽管对于真实观测和不完全观测可能不容易获得相同程度的成功至少在目前的EnKF实施中使用该模型。即使滤波器从更好的初始估计值更快地收敛到真值模拟,但是将超级小区的初始估计值偏移10 km的实验仍然可以在40分钟内对观察到的和未观察到的变量产生风暴的准确估计。同样,在2 km以下的径向速度观测当然有利于捕获风暴(尤其是详细的冷池结构),但是在缺少它们的情况下,如果同化时间稍长,则同化方案仍可以实现对风暴状态的比较准确的估计期。仅用4 km以上的雷达观测进行的实验无法正确地吸收风暴,但是,通过添加假设的地面子集进行风和温度观测,EnKF可以再次很好地评估风暴。在仅低于4 km的雷达观测(例如来自地面移动雷达的观测)中,超级小区也可以被成功地吸收。更频繁的观察最初可以帮助风暴同化,但半小时后收益会减少。此处给出的结果表明,对于大多数观测雷达的典型范围而言,垂直分辨率和观测的不确定性对EnKF吸收风暴的整体性能几乎没有影响。

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