Markov Chain Monte Carlo Solution of the Implicit Nonlinear Inverse Problem with Application to Curve Fitting and Filter Estimation

IF 1.9 4区 地球科学 Q2 GEOCHEMISTRY & GEOPHYSICS
William Menke
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Abstract

We adapt the Metropolis–Hastings (MH) algorithm to facilitate construction of the ensemble solution of the nonlinear implicit inverse problem. The solution variable is the aggregation of the parameters of interest (model parameters) and the data. The prior probability density function (pdf) is the possibly-non-Normal joint pdf of the prior model parameters and the noisy data, and is defined in a high-dimensional space. The posterior pdf of the solution (estimated model parameter and predicted data) is the prior pdf evaluated on the lower-dimensional manifold defined by the theory. We adapt the MH algorithm to ensure that successors always satisfy the theory (that is, are on the manifold) and provide a rule for computing the probability of a given successor. Key parts of this adaption are the use of singular value decomposition to identify subspaces tangent to the manifold, and orthogonal projection, to move a preliminary estimate of a successor onto the manifold. We apply the adapted methodology to three exemplary problems: fitting a straight line to (x,y) data, when both x and y have measurement noise; fitting a circle to noisy (x,y) data, and finding a filter that takes one noisy time series into another. In these cases, the scatter of the ensemble solution about the linearized maximum likelihood solution is roughly consistent with the linearized posterior covariance, but with some non-Normal behavior. We demonstrate the usefulness of the ensemble solutions by computing empirical pdfs of several informative statistical parameters, the calculation of which would be difficult by traditional means.

Abstract Image

隐式非线性反问题的马尔可夫链蒙特卡罗解及其在曲线拟合和滤波器估计中的应用
我们采用Metropolis-Hastings (MH)算法来方便地构造非线性隐式反问题的集合解。解决方案变量是感兴趣的参数(模型参数)和数据的集合。先验概率密度函数(pdf)是先验模型参数与噪声数据的可能-非正态联合pdf,定义在高维空间中。解的后验概率(估计的模型参数和预测的数据)是在理论定义的低维流形上评估的先验概率。我们调整了MH算法,以确保后继者总是满足理论(即在流形上),并提供了计算给定后继者概率的规则。这种适应的关键部分是使用奇异值分解来识别与流形相切的子空间,以及正交投影,将后继空间的初步估计移动到流形上。我们将调整后的方法应用于三个示例性问题:当x和y都有测量噪声时,拟合(x,y)数据的直线;对有噪声的(x,y)数据拟合一个圆,并找到一个滤波器,将一个有噪声的时间序列转换为另一个。在这些情况下,关于线性化最大似然解的集合解的散点与线性化后验协方差大致一致,但具有一些非正态行为。我们通过计算几个信息统计参数的经验pdf来证明集成解决方案的有用性,这些参数的计算用传统方法是困难的。
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来源期刊
pure and applied geophysics
pure and applied geophysics 地学-地球化学与地球物理
CiteScore
4.20
自引率
5.00%
发文量
240
审稿时长
9.8 months
期刊介绍: pure and applied geophysics (pageoph), a continuation of the journal "Geofisica pura e applicata", publishes original scientific contributions in the fields of solid Earth, atmospheric and oceanic sciences. Regular and special issues feature thought-provoking reports on active areas of current research and state-of-the-art surveys. Long running journal, founded in 1939 as Geofisica pura e applicata Publishes peer-reviewed original scientific contributions and state-of-the-art surveys in solid earth and atmospheric sciences Features thought-provoking reports on active areas of current research and is a major source for publications on tsunami research Coverage extends to research topics in oceanic sciences See Instructions for Authors on the right hand side.
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