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Water quality model structure identification using dynamic linear modeling: River Cam case study revisited

机译:基于动态线性建模的水质模型结构识别:重新研究River Cam案例

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This paper investigates the use of dynamic linear modeling and maximum likelihood estimator for water quality model structure identification. In addition to the posterior trajectories of model's parameters, the proposed method also examines the trajectory of the estimated prediction error variance. The premise is that the model predictability should be improved as we move down in a time series. If absurd variation in either the trajectories of model's parameter or the trajectory of the model's prediction error variance is observed, the adequacy of the candidate model should be questioned. This method is applied to three candidate models using the time series data from the River Cam, and it is shown that both the trajectories of model's parameters and the trajectory of prediction standard deviation are important in exposing the structural weakness of a candidate model.
机译:本文研究了动态线性建模和最大似然估计器在水质模型结构识别中的应用。除了模型参数的后向轨迹外,所提出的方法还检查了估计的预测误差方差的轨迹。前提是,随着时间序列的推移,模​​型的可预测性应提高。如果在模型参数的轨迹或模型的预测误差方差的轨迹中观察到荒谬的变化,则应质疑候选模型的适当性。该方法利用来自River Cam的时间序列数据应用于三个候选模型,结果表明,模型参数的轨迹和预测标准偏差的轨迹对于揭示候选模型的结构弱点都是重要的。

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