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Data assimilation using an ensemble of models: a hierarchical approach

机译:数据同化使用模型的集合:分层方法

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One characteristic of biogeochemical models is uncertainty about their formulation. Data assimilation should take this uncertainty into account. A common approach is to use an ensemble of models. We must assign probabilities not only to the parameters of the models but also to the models themselves. The method of hierarchical modelling allows us to calculate these probabilities. This paper describes the approach, develops the algebra for the most common case and then applies it to the Atmospheric Tracer Transport Model Intercomparison Project (TransCom). We see that the discrimination among models is unrealistically strong, due to optimistic assumptions inherent in the underlying inversion. The weighted ensemble means and variances from the hierarchical approach are quite similar to the conventional values because the best model in the ensemble is also quite close to the ensemble mean. The approach can also be used for cross-validation in which some data are held back to test estimates obtained with the rest. We demonstrate this with a test of the TransCom inversions holding back the airborne data. We see a slight decrease in the tropical sink and a notably different preferred order of models.
机译:生物地球化学模型的一个特征是其配方的不确定性。数据同化应考虑到这种不确定性。一种常见的方法是使用模型的集合。我们必须将概率分配给模型的参数,而且还要分配给模型本身的参数。分层建模方法允许我们计算这些概率。本文介绍了这种方法,为最常见的情况开发代数,然后将其应用于大气示踪运输模型相互作用的项目(Transtcom)。我们认为模型之间的歧视是不切实际的强烈的,因为潜在的反转中固有的乐观假设。来自分层方法的加权集合装置和差异与传统值非常相似,因为集合中的最佳模型也非常接近集合均值。该方法还可用于交叉验证,其中一些数据被阻止以剩余的测试估计。我们展示了这一点,并通过遏制空气传播数据的Transcom逆转测试。我们看到热带水槽的略微减少和一个特别不同的型号的首选顺序。

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