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Minimax filtering for sequential aggregation: Application to ensemble forecast of ozone analyses

机译:用于顺序聚合的Minimax过滤:在臭氧分析的总体预报中的应用

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This paper presents a new algorithm for sequential aggregation of an ensemble of forecasts. At any forecasting step, the aggregation consists of (1) computing new weights for the ensemble members represented by different numerical models and (2) forecasting with a weighted linear combination of the ensemble members. We assume that the time evolution of the weights is described by a linear equation with uncertain parameters and apply a minimax filter (and also Kalman filter, for comparison) in order to estimate the vector of weights given "observations". The "observation" equation for the filter compares the aggregated forecast with the analysis determined in a data assimilation cycle together with its variance. The minimax approach allows one to work with flexible uncertainty description: deterministic bounding sets for uncertain parameters in weight's equation, and error covariance matrices for the "observational" errors. Our key contribution is an uncertainty estimate of the aggregated forecast, for which we introduce an evaluation test. The performance of the method is assessed for the forecast of ground-level ozone daily peaks over Europe, for the year 2001. Compared to forecasts generated by classical data assimilation, the root mean square error is decreased by 16% for prediction of the analyses and by 20% for prediction of the observations. Key Points The minimax filter is applied for sequential aggregation of ensemble forecasts The approach allows to forecast 2D ozone analyses, with uncertainty estimation The filter is compared to Kalman filter and to discounted ridge regression
机译:本文提出了一种新的算法,用于预测集合的顺序聚合。在任何预测步骤中,聚合包括(1)为由不同数值模型表示的集合成员计算新的权重,以及(2)使用集合成员的加权线性组合进行预测。我们假设权重的时间演化是由带有不确定参数的线性方程式描述的,并应用了极小极大值滤波器(以及用于比较的卡尔曼滤波器),以便在给定“观测值”的情况下估计权重的向量。过滤器的“观察”方程将汇总的预测与数据同化周期中确定的分析及其方差进行比较。 minimax方法允许使用灵活的不确定性描述进行工作:权重方程中不确定参数的确定性边界集,以及“观测”误差的误差协方差矩阵。我们的主要贡献是对汇总预测的不确定性估计,为此我们引入了评估测试。对该方法的性能进行了评估,以预测2001年欧洲整个地面的臭氧日峰值。与经典数据同化产生的预测相比,均方根误差降低了16%,可用于分析和预测。预测的观测值减少了20%。关键点minimax滤波器适用于总体预报的顺序汇总。该方法可以预测2D臭氧分析,并具有不确定性估计。该滤波器与Kalman滤波器和折现岭回归进行比较

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