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Considering rating curve uncertainty in water level predictions

机译:在水位预测中考虑额定曲线的不确定性

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Streamflow cannot be measured directly and is typically derived with a rating curve model. Unfortunately, this causes uncertainties in the streamflow data and also influences the calibration of rainfall-runoff models if they are conditioned on such data. However, it is currently unknown to what extent these uncertainties propagate to rainfall-runoff predictions. This study therefore presents a quantitative approach to rigorously consider the impact of the rating curve on the prediction uncertainty of water levels. The uncertainty analysis is performed within a formal Bayesian framework and the contributions of rating curve versus rainfallrunoff model parameters to the total predictive uncertainty are addressed. A major benefit of the approach is its independence from the applied rainfall-runoff model and rating curve. In addition, it only requires already existing hydrometric data. The approach was successfully demonstrated on a small catchment in Poland, where a dedicated monitoring campaign was performed in 2011. The results of our case study indicate that the uncertainty in calibration data derived by the rating curve method may be of the same relevance as rainfall-runoff model parameters themselves. A conceptual limitation of the approach presented is that it is limited to water level predictions. Nevertheless, regarding flood level predictions, the Bayesian framework seems very promising because it (i) enables the modeler to incorporate informal knowledge from easily accessible information and (ii) better assesses the individual error contributions. Especially the latter is important to improve the predictive capability of hydrological models.
机译:流量无法直接测量,通常使用额定曲线模型得出。不幸的是,如果以降雨径流模型为基础,这会导致流量数据的不确定性,并且还会影响降雨径流模型的校准。但是,目前尚不清楚这些不确定性会在多大程度上传播到降雨径流预测中。因此,本研究提出了一种定量方法,可以严格考虑评级曲线对水位预测不确定性的影响。不确定性分析是在正式的贝叶斯框架内进行的,评估了额定曲线与降雨径流模型参数对总预测不确定性的贡献。该方法的主要优点是它与应用的降雨径流模型和等级曲线无关。此外,它仅需要已经存在的水文数据。该方法已在波兰的一个小流域成功进行了演示,该流域于2011年进行了专门的监测活动。我们的案例研究结果表明,通过等级曲线法得出的校准数据的不确定性可能与降雨相关-径流模型参数本身。所提出方法的概念限制是它仅限于水位预测。尽管如此,就洪水位预测而言,贝叶斯框架似乎非常有前途,因为它(i)使建模者能够将来自易于获取的信息的非正式知识纳入其中,以及(ii)更好地评估各个错误的贡献。特别是后者对于提高水文模型的预测能力很重要。

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