首页> 外文期刊>International journal for uncertainty quantifications >VARIABLE-SEPARATION BASED ITERATIVE ENSEMBLE SMOOTHER FOR BAYESIAN INVERSE PROBLEMS IN ANOMALOUS DIFFUSION REACTION MODELS
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VARIABLE-SEPARATION BASED ITERATIVE ENSEMBLE SMOOTHER FOR BAYESIAN INVERSE PROBLEMS IN ANOMALOUS DIFFUSION REACTION MODELS

机译:基于可变分离的迭代集合光滑,用于异常扩散反应模型中的贝叶斯逆问题

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摘要

The iterative ensemble smoother (IES) has been widely used to estimate parameters and states of dynamic models where the data are collected at all observation steps simultaneously. A large number of IES ensemble samples may be required in the estimation. This implies that we need to repeatedly compute the forward model corresponding to the ensemble samples. This leads to slow efficiency for large-scale and strongly nonlinear models. To accelerate the posterior inference in the estimation, a low rank approximation using a variable-separation (VS) method is presented to reduce the cost of computing the forward model. It will be efficient to construct a surrogate model based on the low rank approximation, which gives a separated representation of the solution for the stochastic partial differential equations (SPDEs). The separated representation is the product of deterministic basis ftnctions and stochastic basis functions. For the anomalous diffusion reaction equations, the solution of the next moment depends on all of the previous moments, and this causes expensive computation for the Bayesian inverse problem. The presented VS can avoid this process through a few deterministic basis functions. The surrogate model can work well as the iteration moves on because the stochastic basis becomes more accurate when the uncertainty of random parameters decreases. To enhance the applicability in Bayesian inverse problems, we apply the VS-based IES method to complex structure patterns, which can be parameterized by discrete cosine transform (DCT). The post-processing technique based on a regularization method is employed after the iterations to improve the connectivity of the main features. In the paper, we focus on the time fractional diffusion reaction models in porous media and investigate their Bayesian inverse problems using the VS-based IES. A few numerical examples are presented to show the performance of the proposed IES method by taking account of structure inversion in permeability fields, parameters in permeability and reaction fields, and source ftinctions.
机译:迭代集合更顺畅(IES)已被广泛用于估计在所有观察步骤中收集数据的动态模型的参数和状态。在估计中可能需要大量IES集合样本。这意味着我们需要重复计算与集合样本对应的前向模型。这导致大规模和强烈非线性模型的效率慢。为了加速估计的后部推理,呈现使用可变分离(VS)方法的低秩近似以降低计算前向模型的成本。基于低秩近似构建代理模型将是有效的,这给出了随机偏微分方程(SPDES)的解决方案的分离表示。分离的表示是确定性基础FTNICE和随机基本功能的产物。对于异常的扩散反应方程,下一瞬间的解决方案取决于所有前一刻,这导致贝叶斯逆问题的昂贵计算。呈现的VS可以通过几个确定性基本功能避免此过程。替代模型可以很好地工作,因为迭代导通,因为随机参数的不确定度减小时随机基础变得更准确。为提高贝叶斯逆问题的适用性,我们将基于VS的IES方法应用于复杂的结构模式,可以通过离散余弦变换(DCT)来参数化。基于正则化方法的后处理技术在迭代之后采用以提高主要特征的连接。在论文中,我们专注于多孔介质的时间分数扩散反应模型,并使用基于VS的IES调查其贝叶斯逆问题。提出了几个数值示例以通过考虑渗透性场的结构反演,渗透率和反应场的参数和源极性来表示提出的IES方法的性能。

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