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Uncertainty Quantification and Output Prediction in Multi-level Problems: Submitted for inclusion in the Special Session on Model Validation and Uncertainty Quantification

机译:多级问题的不确定性量化和输出预测:提交纳入在模型验证和不确定性量化的特殊会议中

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The calibration of model parameters is essential to predict the output of a complicated system, but the lack of data at the system level makes it impossible to conduct this quantification directly. This situation drives analysts to obtain information on model parameters using experimental data at lower levels of complexity which share the same model parameters with the system of interest. To solve this multi-level problem, this paper first conducts model calibration using lower level data and Bayesian inference to obtain the posterior distribution of each model parameter. However, lower level models are not perfect; thus model validation is also needed to evaluate the model that was used in model calibration. In the model validation, this paper extends the model reliability metric by using a stochastic representation of model reliability, and model with multivariate output is also considered. Another contribution of this paper is the consideration of physical relevance through sensitivity analysis, in order to measure the extent to which a lower level test represents the physical characteristics of the actual system of interest so that the calibration results can be extrapolated to the system level. Finally all the information from calibration, validation and relevance analysis is integrated to quantify the uncertainty in the system level prediction.
机译:模型参数的校准对于预测复杂系统的输出至关重要,但系统级别的数据缺乏使得无法直接进行这种量化。这种情况驱动分析师使用实验数据在较低层次的复杂度下获得模型参数的信息,其与感兴趣的系统共享相同的模型参数。为了解决这个多级问题,本文首先使用较低级别数据和贝叶斯推理进行模型校准,以获得每个型号参数的后部分布。但是,较低级别的模型并不完美;因此,还需要模型验证来评估模型校准中使用的模型。在模型验证中,本文通过使用模型可靠性的随机表示扩展了模型可靠性度量,并且还考虑了具有多变量输出的模型。本文的另一个贡献是通过敏感性分析考虑物理相关性,以测量较低水平测试代表实际感兴趣系统的物理特征的程度,以便可以将校准结果推断到系统级别。最后集成了校准,验证和相关性分析的所有信息,以量化系统级预测中的不确定性。

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