Uncertainty quantification for goal-oriented inverse problems via variational encoder-decoder networks

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-06-03 DOI:10.1088/1361-6420/ad5373
B. Afkham, Julianne Chung, Matthias Chung
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Abstract

In this work, we describe a new approach that uses variational encoder-decoder (VED) networks for efficient uncertainty quantification for goal-oriented inverse problems. Contrary to standard inverse problems, these approaches are goal-oriented in that the goal is to estimate some quantities of interest (QoI) that are functions of the solution of an inverse problem, rather than the solution itself. Moreover, we are interested in computing uncertainty metrics associated with the QoI, thus utilizing a Bayesian approach for inverse problems that incorporates the prediction operator and techniques for exploring the posterior. This may be particularly challenging, especially for nonlinear, possibly unknown, operators and nonstandard prior assumptions. We harness recent advances in machine learning, i.e., VED networks, to describe a data-driven approach to large-scale inverse problems. This enables a real-time uncertainty quantification for the QoI. One of the advantages of our approach is that we avoid the need to solve challenging inversion problems by training a network to approximate the mapping from observations to QoI. Another main benefit is that we enable uncertainty quantification for the QoI by leveraging probability distributions in the latent and target spaces. This allows us to efficiently generate QoI samples and circumvent complicated or even unknown forward models and prediction operators. Numerical results from medical tomography reconstruction and nonlinear hydraulic tomography demonstrate the potential and broad applicability of the approach.
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通过变分编码器-解码器网络实现面向目标的逆问题的不确定性量化
在这项工作中,我们介绍了一种新方法,该方法利用变分编码器-解码器(VED)网络对面向目标的逆问题进行高效的不确定性量化。与标准逆问题不同,这些方法以目标为导向,其目标是估计作为逆问题解的函数的一些相关量(QoI),而不是解本身。此外,我们还对计算与 QoI 相关的不确定性度量感兴趣,因此利用贝叶斯方法解决逆问题,该方法结合了预测算子和探索后验的技术。这可能特别具有挑战性,尤其是对于非线性、可能未知的算子和非标准先验假设。我们利用机器学习(即 VED 网络)的最新进展,描述了大规模逆问题的数据驱动方法。这样就能对 QoI 进行实时不确定性量化。我们的方法的优势之一是,我们无需通过训练网络来近似从观测到 QoI 的映射,从而解决具有挑战性的反演问题。另一个主要优点是,我们利用潜空间和目标空间的概率分布,实现了 QoI 的不确定性量化。这使我们能够高效地生成 QoI 样本,避开复杂甚至未知的前向模型和预测算子。医学层析成像重建和非线性水力层析成像的数值结果证明了这种方法的潜力和广泛适用性。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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