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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 >Goal-oriented optimal design of experiments for large-scale Bayesian linear inverse problems
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Goal-oriented optimal design of experiments for large-scale Bayesian linear inverse problems

机译:面向目标的大型贝叶斯线性逆问题实验的最优设计

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We develop a framework for goal-oriented optimal design of experiments (GOODE) for large-scale Bayesian linear inverse problems governed by PDEs. This framework differs from classical Bayesian optimal design of experiments (ODE) in the following sense: we seek experimental designs that minimize the posterior uncertainty in the experiment end-goal, e.g. a quantity of interest (QoI), rather than the estimated parameter itself. This is suitable for scenarios in which the solution of an inverse problem is an intermediate step and the estimated parameter is then used to compute a QoI. In such problems, a GOODE approach has two benefits: the designs can avoid wastage of experimental resources by a targeted collection of data, and the resulting design criteria are computationally easier to evaluate due to the often low-dimensionality of the QoIs. We present two modified design criteria, A-GOODE and D-GOODE, which are natural analogues of classical Bayesian A-and D-optimal criteria. We analyze the connections to other ODE criteria, and provide interpretations for the GOODE criteria by using tools from information theory. Then, we develop an efficient gradient-based optimization framework for solving the GOODE optimization problems. Additionally, we present comprehensive numerical experiments testing the various aspects of the presented approach. The driving application is the optimal placement of sensors to identify the source of contaminants in a diffusion and transport problem. We enforce sparsity of the sensor placements using an l(1)-norm penalty approach, and propose a practical strategy for specifying the associated penalty parameter.
机译:我们开发了目标导向的框架,用于实验(Goode)的实验(Goode),用于PDE管理的大型贝叶斯线性逆问题。该框架与以下意义上的实验(颂歌)的经典贝叶斯最佳设计不同:我们寻求实验设计,以最小化实验期末目标的后部不确定性,例如,一定数量的兴趣(Qoi),而不是估计的参数本身。这适用于逆问题的解决方案是中间步骤的场景,然后使用估计的参数来计算Qoi。在这些问题中,一种善良的方法有两个好处:设计可以通过目标的数据集合来避免使用实验资源的浪费,并且由于Qois的往往低维度,所得到的设计标准更容易评估。我们提出了两个改进的设计标准,A-Goode和D-Goode,这些设计标准是古典贝叶斯A-and D-Optimal标准的自然模式。我们分析与其他颂标准的连接,并通过使用信息理论的工具为善意标准提供解释。然后,我们开发了一个有效的基于梯度的优化框架,用于解决Goode优化问题。此外,我们提供了综合的数值实验,测试了所提出的方法的各个方面。驾驶应用是传感器的最佳放置,以识别扩散和运输问题中的污染物源。我们使用L(1)-norm惩罚方法强制执行传感器展示的稀疏性,并提出了一种用于指定相关惩罚参数的实际策略。

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