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Model Validation: Model Parameter and Measurement Uncertainty

机译:模型验证:模型参数和测量不确定度

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Our increased dependence on complex models for engineering design, coupled with our decreased dependence on experimental observation, leads to the question: How does one know that a model is valid? As models become more complex (i.e., multiphysics models), the ability to test models over the full range of possible applications becomes more difficult. This difficulty is compounded by the uncertainty that is invariably present in the experimental data used to test the model; the uncertainties in the parameters that are incorporated into the model; and the uncertainties in the model structure itself. Here, the issues associated with model validation are discussed and methodology is presented to incorporate measurement and model parameter uncertainty in a metric for model validation through a weighted r{sup}2 norm. The methodology is based on first-order sensitivity analysis coupled with the use of statistical models for uncertainty. The result of this methodology is compared to results obtained from the more computationally expensive Monte Carlo method. The methodology was demonstrated for the nonlinear Burgers' equation, the convective-dispersive equation, and for conduction heat transfer with contact resistance. Simulated experimental data was used for the first two cases, and true experimental data was used for the third. The results from the sensitivity analysis approach compared well with those for the Monte Carlo method. The results show that the metric presented can discriminate between valid and invalid models. The metric has the advantage that it can be applied to multivariate, correlated data.
机译:我们对工程设计中复杂模型的依赖性增加,再加上对实验观察结果的依赖性下降,导致了一个问题:人们如何知道模型是有效的?随着模型变得越来越复杂(即多物理场模型),在所有可能的应用程序中测试模型的能力变得更加困难。用于测试模型的实验数据中始终存在不确定性,使这一困难更加复杂。纳入模型的参数的不确定性;以及模型结构本身的不确定性。在此,讨论了与模型验证相关的问题,并提出了将度量和模型参数不确定性纳入度量的度量中的方法,以通过加权r {sup} 2范数进行模型验证。该方法基于一阶敏感性分析以及使用不确定性的统计模型。将该方法的结果与从计算上更昂贵的蒙特卡洛方法获得的结果进行比较。对非线性Burgers方程,对流-弥散方程以及具有接触电阻的传导传热方法进行了论证。前两种情况使用模拟的实验数据,第三种情况使用真实的实验数据。灵敏度分析方法的结果与蒙特卡洛方法的结果进行了很好的比较。结果表明,所提出的度量可以区分有效模型和无效模型。该度量标准具有可以应用于多元,相关数据的优势。

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