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Critical evaluation of parameter consistency and predictive uncertainty in hydrological modeling: A case study using Bayesian total error analysis

机译:在水文模型中对参数一致性和预测不确定性的关键评估:使用贝叶斯总误差分析的案例研究

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摘要

The lack of a robust framework for quantifying the parametric and predictive uncertainty of conceptual rainfall-runoff (CRR) models remains a key challenge in hydrology. The Bayesian total error analysis (BATEA) methodology provides a comprehensive framework to hypothesize, infer, and evaluate probability models describing input, output, and model structural error. This paper assesses the ability of BATEA and standard calibration approaches (standard least squares (SLS) and weighted least squares (WLS)) to address two key requirements of uncertainty assessment: (1) reliable quantification of predictive uncertainty and (2) reliable estimation of parameter uncertainty. The case study presents a challenging calibration of the lumped GR4J model to a catchment with ephemeral responses and large rainfall gradients. Postcalibration diagnostics, including checks of predictive distributions using quantile-quantile analysis, suggest that while still far from perfect, BATEA satisfied its assumed probability models better than SLS and WLS. In addition, WLS/SLS parameter estimates were highly dependent on the selected rain gauge and calibration period. This will obscure potential relationships between CRR parameters and catchment attributes and prevent the development of meaningful regional relationships. Conversely, BATEA provided consistent, albeit more uncertain, parameter estimates and thus overcomes one of the obstacles to parameter regionalization. However, significant departures from the calibration assumptions remained even in BATEA, e.g., systematic overestimation of predictive uncertainty, especially in validation. This is likely due to the inferred rainfall errors compensating for simplified treatment of model structural error.
机译:缺乏用于量化概念性降雨径流(CRR)模型的参数性和预测性不确定性的可靠框架仍然是水文学中的主要挑战。贝叶斯总误差分析(BATEA)方法提供了一个全面的框架,用于假设,推断和评估描述输入,输出和模型结构误差的概率模型。本文评估了BATEA和标准校准方法(标准最小二乘法(SLS)和加权最小二乘(WLS))满足不确定性评估的两个关键要求的能力:(1)可靠地预测性不确定性量化和(2)可靠地估计不确定性参数不确定性。案例研究提出了集总GR4J模型具有短暂响应和大降雨梯度的集水区的挑战性校准。校准后的诊断,包括使用分位数-分位数分析检查预测分布,表明尽管距离理想状态还很遥远,但BATEA比SLS和WLS更好地满足了其假定的概率模型。此外,WLS / SLS参数估计高度取决于所选的雨量计和校准周期。这将掩盖CRR参数与流域属性之间的潜在关系,并阻止有意义的区域关系的发展。相反,BATEA提供了一致的参数估计值,尽管不确定性更大,因此克服了参数区域化的障碍之一。但是,即使在BATEA中,也仍然与校准假设有很大的出入,例如系统地高估了预测不确定性,尤其是在验证中。这可能是由于推断的降雨误差补偿了模型结构误差的简化处理。

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  • 来源
    《Water resources research》 |2009年第12期|W00B14.1-W00B14.22|共22页
  • 作者单位

    School of Engineering, University of Newcastle, Callaghan, NSW 2308, Australia;

    School of Engineering, University of Newcastle, Callaghan, NSW 2308, Australia;

    School of Engineering, University of Newcastle, Callaghan, NSW 2308, Australia;

    School of Engineering, University of Newcastle, Callaghan, NSW 2308, Australia;

    School of Engineering, University of Newcastle, Callaghan, NSW 2308, Australia;

    Water Division, Bureau of Meteorology, GPO Box 1289, Melbourne, Vic 3001, Australia;

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