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首页> 外文期刊>Inverse Problems: An International Journal of Inverse Problems, Inverse Methods and Computerised Inversion of Data >A Bayesian filtering approach to layer stripping for electrical impedance tomography
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A Bayesian filtering approach to layer stripping for electrical impedance tomography

机译:电气阻抗断层扫描层剥离的贝叶斯过滤方法

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摘要

Layer stripping is a method for solving inverse boundary value problems for elliptic PDEs, originally proposed in the literature for solving the Calderon problem of electrical impedance tomography (EIT), where the data consist of the Neumann-to-Dirichlet operator on the boundary. Defining a tangent-normal coordinate system near the boundary, the data are extended to a family of boundary operators on tangential surfaces inside the body, and it is shown that the operators satisfy a non-linear Riccati type differential equation with respect to the normal coordinate. The layer stripping process consists of a sequence of two alternating steps: the conductivity near the current boundary is estimated from the spatial high-frequency limit of the boundary data, and the boundary operator is propagated through a thin layer further into the domain via the Riccati equation. This way, the unknown conductivity in the interior of the domain is estimated layer by layer starting from the boundary and moving inward. The ill-posedness of the EIT problem manifests itself in such high sensitivity of the backwards Riccati equation to errors in the boundary data to cause the solutions to blow up in finite time, thus requiring regularization. In this article, we formulate the layer stripping process in the framework of Bayesian inverse problems, and we revisit the implementation in the light of Bayesian filtering. More specifically, we recast the related inverse boundary value problem as a state estimation problem, and propose an algorithm for its numerical solution based on ensemble Kalman filtering (EnKF). The new Bayesian layer stripping approach that we propose is quite robust, derivative-free and intrinsically suited for the quantification of uncertainties in the estimate. Furthermore, we show that the algorithm can be extended to realistic data collected by using a finite number of contact electrodes.
机译:层剥离是一种求解椭圆PDE的逆边值问题的方法,最初提出的用于求解电阻抗断层扫描(EIT)的火山孔问题,其中数据由边界上的Neumann-to-Dirichlet算子组成。定义边界附近的切线正态坐标系,数据将延伸到身体内切面上的边界操作员系列,并且示出了操作员满足相对于正常坐标的非线性Riccati型微分方程。层剥离过程包括两个交替步骤的序列:从边界数据的空间高频极限估计电流边界附近的电导率,边界操作员通过Riccati进一步进入域的薄层传播到域中传播方程。这样,通过从边界开始并向向内移动域的内部的未知导电率估计层。 EIT问题的不良呈现在向后Riccati方程的这种高灵敏度中表现为边界数据中的错误,以使解决方案在有限时间内爆炸,因此需要正规化。在本文中,我们制定了贝叶斯逆问题框架中的层剥离过程,我们根据贝叶斯过滤的光线重新审视实施。更具体地,我们重新开始相关的逆边值问题作为状态估计问题,并基于集合Kalman滤波(ENKF)的数值解决方案提出了一种算法。我们提出的新贝叶斯层剥离方法是非常强大,无衍生的,并且本质上适用于在估计中的不确定性的量化。此外,我们表明该算法可以扩展到通过使用有限数量的接触电极收集的现实数据。

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