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Stochastic-Expansions-Based Model-Assisted Probability of Detection Analysis of the Spherically-Void-Defect Benchmark Problem

机译:基于随机扩展的模型辅助球体缺陷基准问题检测分析的概率

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Probability of detection (POD) is used for reliability analysis in nondestructive testing (NDT) area. Traditionally, it is determined by experimental tests, while it can be enhanced by physics-based simulation models, which is called model-assisted probability of detection (MAPOD). However, accurate physics-based models are usually expensive in time. In this paper, we implement a type of stochastic polynomial chaos expansions (PCE), as alternative of actual physics-based model for the MAPOD calculation. State-of-the-art least-angle regression method and hyperbolic sparse technique are integrated within PCE construction. The proposed method is tested on a spherically-void-defect benchmark problem, developed by the World Federal Nondestructive Evaluation Center. The benchmark problem is added with two uncertainty parameters, where the PCE model usually requires about 100 sample points for the convergence on statistical moments, while direct Monte Carlo method needs more than 10000 samples, and Kriging based Monte Carlo method is oscillating. With about 100 sample points, PCE model can reduce root mean square error to be within 1% standard deviation of test points, while Kriging model cannot reach that level of accuracy even with 200 sample points.
机译:检测概率(POD)用于无损检测(NDT)区域中的可靠性分析。传统上,它是通过实验测试确定的,而它可以通过基于物理的仿真模型来增强,这称为模型辅助检测概率(MAPOD)。但是,准确的基于物理的模型通常在时间上很昂贵。在本文中,我们实现了一种随机多项式混沌扩展(PCE),作为基于物理的实际模型的MAPOD计算的替代方法。最新的最小角度回归方法和双曲稀疏技术已集成到PCE结构中。该方法在由世界联邦无损评估中心开发的球形缺陷基准问题上进行了测试。基准问题增加了两个不确定性参数,其中PCE模型通常需要大约100个样本点才能在统计矩上收敛,而直接蒙特卡洛方法需要10000个以上样本,而基于Kriging的蒙特卡洛方法正在振荡。使用大约100个采样点,PCE模型可以将均方根误差减小到测试点的标准偏差的1%以内,而即使使用200个采样点,Kriging模型也无法达到该精度水平。

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