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Effect of correlated observation error on parameters, predictions, and uncertainty

机译:相关观测误差对参数,预测和不确定性的影响

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摘要

[1] Correlations among observation errors are typically omitted when calculating observation weights for model calibration by inverse methods. We explore the effects of omitting these correlations on estimates of parameters, predictions, and uncertainties. First; we develop a new analytical expression for the difference in parameter variance estimated with and without error correlations for a simple one-parameter two-observation inverse model. Results indicate that omitting error correlations from both the weight matrix and the variance calculation can either increase or decrease the parameter variance, depending on the values of error correlation (ρ) and the ratio of dimensionless scaled sensitivities (r_(dss)). For small ρ, the difference in variance is always small, but for large ρ, the difference varies widely depending on the sign and magnitude of r_(dss). Next, we consider a groundwater reactive transport model of denitrification with four parameters and correlated geochemical observation errors that are computed by an error-propagation approach that is new for hydrogeologic studies. We compare parameter estimates, predictions, and uncertainties obtained with and without the error correlations. Omitting the correlations modestly to substantially changes parameter estimates, and causes both increases and decreases of parameter variances, consistent with the analytical expression. Differences in predictions for the models calibrated with and without error correlations can be greater than parameter differences when both are considered relative to their respective confidence intervals. These results indicate that including observation error correlations in weighting for nonlinear regression can have important effects on parameter estimates, predictions, and their respective uncertainties.
机译:[1]在通过逆向方法计算模型校准的观测权重时,通常会忽略观测误差之间的相关性。我们探索了忽略这些相关性对参数,预测和不确定性估计的影响。第一;我们为一个简单的一参数二观测逆模型开发了一个新的解析表达式,用于估计有无误差相关的参数方差的差异。结果表明,根据误差相关值(ρ)和无量纲缩放灵敏度的比率(r_(dss)),从权重矩阵和方差计算中都忽略误差相关性可以增大或减小参数方差。对于小ρ,方差差异始终很小,但对于大ρ,差异取决于r_(dss)的符号和幅值而变化很大。接下来,我们考虑具有四个参数和相关地球化学观测误差的反硝化地下水反应性运移模型,该模型通过误差传播方法计算得出,这是水文地质研究的新方法。我们比较有无误差相关性时获得的参数估计,预测和不确定性。适度地省略相关以实质上改变参数估计,并且导致参数方差的增大和减小,这与解析表达式一致。当考虑到两者相对于它们各自的置信区间时,对带有和不带有误差相关的校准模型的预测的差异可能大于参数差异。这些结果表明,在非线性回归加权中包括观察误差相关性可能对参数估计,预测及其各自的不确定性产生重要影响。

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  • 来源
    《Water resources research》 |2013年第10期|6339-6355|共17页
  • 作者单位

    Water Resources Discipline, U.S. Geological Survey, 345 Middlefield Rd., Menlo Park, CA 94025, USA;

    Water Resources Discipline, U.S. Geological Survey, Menlo Park, California, USA;

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