Assessment of Model Validation, Calibration, and Prediction Approaches in the Presence of Uncertainty

IF 0.5 Q4 ENGINEERING, MECHANICAL Journal of Verification, Validation and Uncertainty Quantification Pub Date : 2019-07-19 DOI:10.1115/1.4056285
N. W. Whiting
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Abstract

Model validation is the process of determining the degree to which a model is an accurate representation of the true value in the real world. The results of a model validation study can be used to either quantify the model form uncertainty or to improve/calibrate the model. However, the model validation process can become complicated if there is uncertainty in the simulation and/or experimental outcomes. These uncertainties can be in the form of aleatory uncertainties due to randomness or epistemic uncertainties due to lack of knowledge. Four different approaches are used for addressing model validation and calibration: 1) the area validation metric (AVM), 2) a modified area validation metric (MAVM) with confidence intervals, 3) the standard validation uncertainty from ASME V&V 20, and 4) Bayesian updating of a model discrepancy term. Details are given for the application of the MAVM for accounting for small experimental sample sizes. To provide an unambiguous assessment of these different approaches, synthetic experimental values is generated from computational fluid dynamics simulations of a multi-element airfoil. A simplified model is then developed using thin airfoil theory. This simplified model is then assessed using the synthetic experimental data. Each of these validation/calibration approaches are assessed for the ability to tightly encapsulate the true value in nature at locations both where experimental results are provided and prediction locations where no experimental data are available.
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存在不确定性时模型验证、校准和预测方法的评估
模型验证是确定模型在多大程度上是真实世界中真实值的准确表示的过程。模型验证研究的结果既可以用来量化模型的不确定性,也可以用来改进/校准模型。然而,如果在模拟和/或实验结果中存在不确定性,则模型验证过程可能变得复杂。这些不确定性可以是由于随机性造成的选择性不确定性,也可以是由于缺乏知识造成的认知不确定性。采用四种不同的方法进行模型验证和校准:1)面积验证度量(AVM), 2)带置信区间的改进面积验证度量(MAVM), 3)来自ASME V&V 20的标准验证不确定度,以及4)模型差异项的贝叶斯更新。详细介绍了MAVM在小实验样本量情况下的应用。为了提供这些不同方法的明确评估,合成的实验值是由多元素翼型的计算流体动力学模拟产生的。然后利用薄翼型理论开发了一个简化模型。然后用综合实验数据对该简化模型进行评价。每一种验证/校准方法都要评估其在提供实验结果的地点和没有实验数据的预测地点紧密封装真实值的能力。
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来源期刊
CiteScore
1.60
自引率
16.70%
发文量
12
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