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Ensemble-based simultaneous state and parameter estimation for treatment of mesoscale model error:A real-data study

机译:基于集合的同时状态和参数估计用于中尺度模型误差的处理:实数据研究

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This study explores the treatment of model error and uncertainties through simultaneous state and parameter estimation (SSPE) with an ensemble Kalman filter (EnKF) in the simulation of a 2006 air pollution event over the greater Houston area during the Second Texas Air Quality Study (TexAQS-II). Two parameters in the atmospheric boundary layer parameterization associated with large model sensitivities are combined with standard prognostic variables in an augmented state vector to be continuously updated through assimilation of wind profiler observations. It is found that forecasts of the atmosphere with EnKF/ SSPE are markedly improved over experiments with no state and/or parameter estimation. More specifically, the EnKF/SSPE is shown to help alleviate a near-surface cold bias and to alter the momentum mixing in the boundary layer to produce more realistic wind profiles.
机译:这项研究在第二次德克萨斯州空气质量研究(TexAQS)期间,通过集成卡尔曼滤波器(EnKF)通过同时状态和参数估计(SSPE)和集成卡尔曼滤波器(EnKF)探索了模型误差和不确定性的处理方法-II)。大气边界层参数化中与大型模型敏感性相关的两个参数与增强状态向量中的标准预后变量结合在一起,可以通过对风廓线仪观测值的同化来不断更新。发现与没有状态和/或参数估计的实验相比,EnKF / SSPE对大气的预测有了显着改善。更具体地说,EnKF / SSPE可以帮助减轻近地表的冷偏,并改变边界层中的动量混合,以产生更逼真的风廓线。

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