基于朗格万动力学的统计有限元

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2022-12-05 DOI:10.1137/21m1463094
Ömer Deniz Akyildiz, Connor Duffin, Sotirios Sabanis, Mark Girolami
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引用次数: 0

摘要

SIAM/ASA不确定度量化杂志,第10卷,第4期,第1560-1585页,2022年12月。摘要。最近的统计有限元方法(statFEM)提供了一个连贯的统计框架来将有限元模型与观测数据综合起来。通过在控制方程中嵌入不确定性,更新有限元解以给出一个后验分布,该分布量化了与模型相关的所有不确定性来源。然而,为了纳入所有不确定性的来源,必须整合与模型参数相关的不确定性,即已知的不确定性量化的前向问题。在本文中,我们利用Langevin动力学来解决statFEM正演问题,研究了unadjusted Langevin算法(ULA),一种无大都会马尔可夫链蒙特卡罗采样器的应用,以建立一个基于样本的表征。由于statFEM问题的结构,这些方法无需显式的全PDE解即可求解正演问题,只需要稀疏矩阵向量积。ULA也是基于梯度的,因此提供了一种可扩展到高自由度的方法。利用基于langevin的采样器背后的理论,我们为采样器的性能提供了理论保证,证明了Kullback-Leibler散度和Wasserstein-2中先验和后验的收敛性,并进一步研究了预处理的效果。还提供了数值实验,以证明采样器的有效性,还包括一个Python包。
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Statistical Finite Elements via Langevin Dynamics
SIAM/ASA Journal on Uncertainty Quantification, Volume 10, Issue 4, Page 1560-1585, December 2022.
Abstract. The recent statistical finite element method (statFEM) provides a coherent statistical framework to synthesize finite element models with observed data. Through embedding uncertainty inside of the governing equations, finite element solutions are updated to give a posterior distribution which quantifies all sources of uncertainty associated with the model. However to incorporate all sources of uncertainty, one must integrate over the uncertainty associated with the model parameters, the known forward problem of uncertainty quantification. In this paper, we make use of Langevin dynamics to solve the statFEM forward problem, studying the utility of the unadjusted Langevin algorithm (ULA), a Metropolis-free Markov chain Monte Carlo sampler, to build a sample-based characterization of this otherwise intractable measure. Due to the structure of the statFEM problem, these methods are able to solve the forward problem without explicit full PDE solves, requiring only sparse matrix-vector products. ULA is also gradient-based, and hence provides a scalable approach up to high degrees-of-freedom. Leveraging the theory behind Langevin-based samplers, we provide theoretical guarantees on sampler performance, demonstrating convergence, for both the prior and posterior, in the Kullback–Leibler divergence and in Wasserstein-2, with further results on the effect of preconditioning. Numerical experiments are also provided, to demonstrate the efficacy of the sampler, with a Python package also included.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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