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Conceptual model uncertainty in groundwater modeling: Combining generalized likelihood uncertainty estimation and Bayesian model averaging

机译:地下水建模中的概念模型不确定性:结合广义似然不确定性估计和贝叶斯模型平均

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摘要

Uncertainty assessments in groundwater modeling applications typically attribute all sources of uncertainty to errors in parameters and inputs, neglecting what may be the primary source of uncertainty, namely, errors in the conceptualization of the system.Confining the set of plausible system representations to a single model leads to underdispersive and prone-to-bias predictions. In this work, we present a general and flexible approach that combines generalized likelihood uncertainty estimation (GLUE) and Bayesian model averaging (BMA) to assess uncertainty in model predictions that arise from errors in model structure, inputs, and parameters. In a prior analysis, a set of plausible models is selected, and the joint prior input and parameter space is sampled to form potential simulators of the system. For each model, the likelihood measures of acceptable simulators, assigned to thembased on their ability to reproduce observed systembehavior, are integrated over the joint input and parameter space to obtain the integrated model likelihood. The latter is used to weight the predictions of the respective model in the BMA ensemble predictions. For illustrative purposes, we applied the methodology to a three-dimensional hypothetical setup. Results showed that predictions of groundwater budget terms varied considerably among competing models; despite this, a set of 16 head observations used for conditioning did not allow differentiating between the models. BMA provided average predictions that were more conservative than individual predictions obtained for individual models. Conceptual model uncertainty contributed up to 30% of the total uncertainty. The results clearly indicate the need to consider alternative conceptualizations to account for model uncertainty.
机译:地下水建模应用中的不确定性评估通常将所有不确定性源归因于参数和输入中的误差,而忽略了可能是不确定性的主要根源,即系统概念化中的误差。将一组合理的系统表示形式限制在一个模型中导致分散不充分和容易产生偏见的预测。在这项工作中,我们提出了一种通用灵活的方法,该方法结合了广义似然不确定性估计(GLUE)和贝叶斯模型平均(BMA)来评估由于模型结构,输入和参数中的错误而引起的模型预测中的不确定性。在先验分析中,选择了一组合理的模型,并对联合的先验输入和参数空间进行了采样,以形成系统的潜在模拟器。对于每个模型,基于可接受的仿真器的重现观察到的系统行为的能力而分配给它们的似然性度量,会在联合输入和参数空间上进行积分以获得集成的模型似然性。后者用于加权BMA集成预测中各个模型的预测。出于说明目的,我们将该方法应用于三维假设设置。结果表明,在竞争模型之间,地下水预算条款的预测差异很大。尽管如此,用于调节的16个头部观察结果集却无法区分模型。 BMA提供的平均预测比针对个别模型获得的个别预测更为保守。概念模型的不确定性占总不确定性的30%。结果清楚地表明需要考虑替代概念以解决模型的不确定性。

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