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Bayesian inverse problems for functions and applications to fluid mechanics

机译:贝叶斯逆问题的功能及其在流体力学中的应用

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In this paper we establish a mathematical framework for a range of inverse problems for functions, given a finite set of noisy observations. The problems are hence underdetermined and are often ill-posed. We study these problems from the viewpoint of Bayesian statistics, with the resulting posterior probability measure being defined on a space of functions. We develop an abstract framework for such problems which facilitates application of an infinite-dimensional version of Bayes theorem, leads to a well-posedness result for the posterior measure (continuity in a suitable probability metric with respect to changes in data), and also leads to a theory for the istence of maximizing the posterior probability (MAP) estimators for such ayesian inverse problems on function space. A central idea underlying these results is that continuity properties and bounds on the forward model guide the choice of the prior measure for the inverse problem, leading to the desired results on well-posedness and MAP estimators; the PDE analysis and probability theory required are thus clearly dileneated, allowing a straightforward derivation of results. We show that the abstract theory applies to some concrete applications of interest by studying problems arising from data assimilation in fluid mechanics. The objective is to make inference about the underlying velocity field, on the basis of either Eulerian or Lagrangian observations.We study problems without model error, in which case the inference is on the initial condition, and problems with model error in which case the inference is on the initial condition and on the driving noise process or,equivalently, on the entire time-dependent velocity field. In order to undertake a relatively unclutteredmathematical analysis we consider the two-dimensional Navier–Stokes equation on a torus. The case of Eulerian observations—direct observations of the velocity field itself—is then a model for weather forecasting. The case of Lagrangian observations—observations of passive tracers advected by the flow—is then a model for data arising in oceanography. The methodology which we describe herein may be applied to many other inverse problems inwhich it is of interest to find, given observations, an infinitedimensional object, such as the initial condition for a PDE. A similar approach might be adopted, for example, to determine an appropriate mathematical
机译:在本文中,我们给出了一组有限的噪声观测值,为函数的一系列反问题建立了数学框架。因此,这些问题还没有得到很好的确定,而且往往是不适当地的。我们从贝叶斯统计的角度研究这些问题,并在函数空间上定义后验概率度量。我们针对此类问题开发了一个抽象框架,该框架有助于应用无穷大形式的贝叶斯定理,并为后测度(适当的概率度量相对于数据变化的连续性)带来了适定的结果,并且函数空间上这种艾依斯逆问题的后验概率(MAP)估计量最大化的存在理论。这些结果背后的中心思想是,正向模型的连续性和界限可指导对反问题的先验度量的选择,从而在正定性和MAP估计量上产生期望的结果。因此,所需的PDE分析和概率理论显然不适用,从而可以直接得出结果。我们通过研究流体力学中数据同化引起的问题,表明抽象理论适用于某些感兴趣的具体应用。目的是在欧拉或拉格朗日观测的基础上对基础速度场进行推论。我们研究没有模型误差的问题(在这种情况下,推论是在初始条件下),以及在模型误差的情况下,在这种情况下推论。处于初始状态和行驶噪声过程,或者等效地,取决于整个时间相关的速度场。为了进行相对整洁的数学分析,我们考虑圆环上的二维Navier-Stokes方程。欧拉观测的情况-速度场本身的直接观测-成为天气预报的模型。拉格朗日观测的案例(观测由水流平移的被动示踪剂)便是海洋学数据的模型。我们在此描述的方法可以应用于许多其他逆问题,在这些问题中,给定观察结果,发现一个无限维的物体(例如PDE的初始条件)是有意义的。例如,可以采用类似的方法来确定适当的数学方法。

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