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A Sequential Sensor Selection Strategy for Hyper-Parameterized Linear Bayesian Inverse Problems

机译:超参数化线性贝叶斯逆问题的顺序传感器选择策略

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We consider optimal sensor placement for hyper-parameterized linear Bayesian inverse problems, where the hyper-parameter characterizes nonlinear flexibilities in the forward model, and is considered for a range of possible values. This model variability needs to be taken into account for the experimental design to guarantee that the Bayesian inverse solution is uniformly informative. In this work we link the numerical stability of the maximum a posterior point and A-optimal experimental design to an observability coefficient that directly describes the influence of the chosen sensors. We propose an algorithm that iteratively chooses the sensor locations to improve this coefficient and thereby decrease the eigenvalues of the posterior covariance matrix. This algorithm exploits the structure of the solution manifold in the hyper-parameter domain via a reduced basis surrogate solution for computational efficiency. We illustrate our results with a steady-state thermal conduction problem.
机译:我们考虑了超参数化线性贝叶斯逆问题的最佳传感器放置,其中超参数表征了前向模型中的非线性灵活性,并且被认为是一系列可能的值。 需要考虑到实验设计,以确保贝叶斯逆解决方案均匀地提供均匀的信息。 在这项工作中,我们将最大后点的数值稳定性与直接描述所选传感器的影响的可观察性系数联系起最大后点和最佳实验设计。 我们提出了一种算法,其迭代地选择传感器位置以改善该系数,从而降低后协方差矩阵的特征值。 该算法通过减少的基础代理解决方案来利用超参数域中解决方案歧管的结构进行计算效率。 我们用稳态的热传导问题说明了我们的结果。

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