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An efficient Bayesian inference approach to inverse problems based on an adaptive sparse grid collocation method

机译:一种基于自适应稀疏网格配置方法的有效贝叶斯逆方法

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摘要

A new approach to modeling inverse problems using a Bayesian inference method is introduced. The Bayesian approach considers the unknown parameters as random variables and seeks the probabilistic distribution of the unknowns. By introducing the concept of the stochastic prior state space to the Bayesian formulation, we reformulate the deterministic forward problem as a stochastic one. The adaptive hierarchical sparse grid collocation (ASGC) method is used for constructing an interpolant to the solution of the forward model in this prior space which is large enough to capture all the variability/uncertainty in the posterior distribution of the unknown parameters. This solution can be considered as a function of the random unknowns and serves as a stochastic surrogate model for the likelihood calculation. Hierarchical Bayesian formulation is used to derive the posterior probability density function (PPDF). The spatial model is represented as a convolution of a smooth kernel and a Markov random field. The state space of the PPDF is explored using Markov chain Monte Carlo algorithms to obtain statistics of the unknowns. The likelihood calculation is performed by directly sampling the approximate stochastic solution obtained through the ASGC method. The technique is assessed on two nonlinear inverse problems: source inversion and permeability estimation in flow through porous media.
机译:介绍了一种使用贝叶斯推理方法建模反问题的新方法。贝叶斯方法将未知参数视为随机变量,并寻求未知数的概率分布。通过将随机先验状态空间的概念引入贝叶斯公式中,我们将确定性正向问题重构为随机问题。自适应分层稀疏网格配置(ASGC)方法用于在此先验空间中构造正向模型解的插值,该插值足够大以捕获未知参数的后验分布中的所有可变性/不确定性。该解决方案可以被认为是随机未知数的函数,并且可以用作可能性计算的随机替代模型。贝叶斯分层公式用于导出后验概率密度函数(PPDF)。空间模型表示为光滑核和马尔可夫随机场的卷积。使用马尔可夫链蒙特卡洛算法探索PPDF的状态空间,以获得未知数的统计信息。通过直接采样通过ASGC方法获得的近似随机解来执行似然性计算。该技术是针对两个非线性反问题进行评估的:源反演和通过多孔介质流动的渗透率估算。

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