科技报告详细信息
Measures of agreement between computation and experiment:validation metrics.
Barone, Matthew Franklin ; Oberkampf, William Louis
Sandia National Laboratories
关键词: Polyurethanes;    99 General And Miscellaneous//Mathematics, Computing, And Information Science;    Compressibility;    Computerized Simulation;    Pyrolysis;   
DOI  :  10.2172/876365
RP-ID  :  SAND2005-4302
RP-ID  :  AC04-94AL85000
RP-ID  :  876365
美国|英语
来源: UNT Digital Library
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【 摘 要 】

With the increasing role of computational modeling in engineering design, performance estimation, and safety assessment, improved methods are needed for comparing computational results and experimental measurements. Traditional methods of graphically comparing computational and experimental results, though valuable, are essentially qualitative. Computable measures are needed that can quantitatively compare computational and experimental results over a range of input, or control, variables and sharpen assessment of computational accuracy. This type of measure has been recently referred to as a validation metric. We discuss various features that we believe should be incorporated in a validation metric and also features that should be excluded. We develop a new validation metric that is based on the statistical concept of confidence intervals. Using this fundamental concept, we construct two specific metrics: one that requires interpolation of experimental data and one that requires regression (curve fitting) of experimental data. We apply the metrics to three example problems: thermal decomposition of a polyurethane foam, a turbulent buoyant plume of helium, and compressibility effects on the growth rate of a turbulent free-shear layer. We discuss how the present metrics are easily interpretable for assessing computational model accuracy, as well as the impact of experimental measurement uncertainty on the accuracy assessment.

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