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The impact of considering uncertainty in measured calibration/validation data during auto-calibration of hydrologic and water quality models

机译:在水文模型和水质模型的自动校准过程中,在测量的校准/验证数据中考虑不确定性的影响

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摘要

The importance of uncertainty inherent in measured calibration/validation data is frequently stated in literature, but it is not often considered in calibrating and evaluating hydrologic and water quality models. This is due to the limited amount of data available to support relevant research and the limited scientific guidance on the impact of measurement uncertainty. In this study, the impact of considering measurement uncertainty during model auto-calibration was investigated in a case study example using previously published uncertainty estimates for streamflow, sediment, and NH4-N. The results indicated that inclusion of measurement uncertainty during the auto-calibration process does impact model calibration results and predictive uncertainty. The level of impact on model predictions followed the same pattern as measurement uncertainty: streamflow < sediment < NH4-N; however, the direction of that impact (increasing or decreasing) was not consistent. In addition, inclusion rate and spread results did not indicate a clear relationship between predictive uncertainty and the magnitude of measurement uncertainty. The purpose of this study was not to show that inclusion of measurement uncertainty produces better calibration results or parameter estimation. Rather, this study demonstrated that uncertainty in measured calibration/validation data can play a crucial role in parameter estimation during auto-calibration and that this important source of predictive uncertainty should be not be ignored as it is in typical model applications. Future modeling applications related to watershed management or scenario analysis should consider the potential impact of uncertainty in measured calibration/validation data, as model predictions influence decision-making, policy formulation, and regulatory action.
机译:经常在文献中指出测量的校准/验证数据中固有的不确定性的重要性,但在校准和评估水文和水质模型时却常常不考虑不确定性的重要性。这是由于可用于支持相关研究的数据量有限,以及对测量不确定性影响的科学指导也有限。在本研究中,在一个案例研究示例中,使用先前发布的流量,沉积物和NH4-N不确定度估计值,研究了在模型自动校准期间考虑测量不确定度的影响。结果表明,在自动校准过程中包含测量不确定度确实会影响模型校准结果和预测不确定度。对模型预测的影响程度遵循与测量不确定性相同的模式:水流<沉积物

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