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首页> 外文期刊>NDT & E International: Independent Nondestructive Testing and Evaluation >Metamodel-based Markov-Chain-Monte-Carlo parameter inversion applied in eddy current flaw characterization
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Metamodel-based Markov-Chain-Monte-Carlo parameter inversion applied in eddy current flaw characterization

机译:基于元的Markov-Chain-Monte-Carlo参数反演应用于涡流漏洞表征

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Flaw characterization in eddy current testing usually requires to solve a non-linear inverse problem. Due to high computational cost, Markov Chain Monte Carlo (MCMC) methods are hardly employed since often needing many forward evaluations. However, they have good potential in dealing with complicated forward models and they do not reduce to only providing the parameters sought. Here, we introduce a computationally-cheap surrogate forward model into a MCMC algorithm for eddy current flaw characterization. Due to the use of a database trained off-line, we benefit from the MCMC algorithm for getting more information and we do not suffer from the computational burden. Numerous experiments are carried out to validate the approach. The results include not only the estimated parameters, but also standard deviations, marginal densities and correlation coefficients between two parameters of interest.
机译:涡流测试中的缺陷表征通常需要解决非线性逆问题。 由于计算成本高,马尔可夫链蒙特卡罗(MCMC)方法几乎没有使用,因为通常需要许多前进评估。 然而,他们在处理复杂的前向模型方面具有良好的潜力,并且它们不会减少仅提供所寻求的参数。 在这里,我们将计算廉价的代理前向模型介绍为MCMC算法,用于涡流漏洞表征。 由于使用截止线路培训的数据库,我们受益于MCMC算法以获取更多信息,我们不会遭受计算负担。 进行了许多实验以验证该方法。 结果不仅包括估计的参数,而且包括两个兴趣参数之间的标准偏差,边缘密度和相关系数。

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