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Novel parameter update for a gradient based MCMC method for solid-void interface detection through elastodynamic inversion

机译:基于梯度基于MCMC方法的新颖参数更新,通过弹性动力反转进行固体void接口检测

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摘要

A method is developed for the explicit identification of solid-void interfaces in a Bayesian framework using a statistically efficient gradient based Markov Chain Monte Carlo (MCMC) algorithm called Hamiltonian Monte Carlo (HMC). The elastodynamic inversion is carried out in a Finite Element discretized domain considering parameterized representations of the actual interface between the elastic solid and void embedded in the solid itself. Using a reference configuration, a parameter update procedure is designed, to ensure reversibility of the HMC algorithm, thereby satisfying the detailed balance condition. The quality of mesh at every parameter update is maintained through a simple mesh moving strategy that introduces volume scaled Elastic modulus in the mesh moving stage. HMC gradient computation procedure is detailed for a general parameterization of the interface. Integration of these techniques with the HMC algorithm enables the continuous variation of parameters and maintains continuity of the Hamiltonian. The performance of the proposed method is investigated with respect to two solid-void interface identification problems, one of well-defined and the other of arbitrary geometry. Results show that the proposed method performs well, maintaining a good mesh quality after each parameter update. The Markov chains converge and statistical descriptions of the inferred parameters are obtained.
机译:开发了一种方法,用于使用称为Hamiltonian Monte Carlo(HMC)的统计有效的基于梯度基于Markov链蒙特卡罗(MCMC)算法在贝叶斯框架中明确识别贝叶斯框架中的固态界面。考虑到在固体本身中嵌入的弹性固体和空隙之间的实际接口的参数化表示,在有限元分离子域中进行弹性动力反转。使用参考配置,设计参数更新过程,以确保HMC算法的可逆性,从而满足详细的平衡条件。每个参数更新的网格质量通过简单的网格移动策略来维护,该策略在网格移动阶段引入体积缩放的弹性模量。 HMC梯度计算过程详细介绍了接口的一般参数化。使用HMC算法的这些技术的集成使得参数的连续变化并保持汉密尔顿人的连续性。研究了所提出的方法的性能,研究了两个固体无效界面识别问题,其中一个定义的良好和另一个任意几何形状。结果表明,所提出的方法表现良好,在每个参数更新后保持良好的网格质量。获得的Markov链接收敛和推断参数的统计描述。

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