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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Scaling Up Bayesian Uncertainty Quantification for Inverse Problems Using Deep Neural Networks
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Scaling Up Bayesian Uncertainty Quantification for Inverse Problems Using Deep Neural Networks

机译:Scaling Up Bayesian Uncertainty Quantification for Inverse Problems Using Deep Neural Networks

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摘要

Due to the importance of uncertainty quantification (UQ), the Bayesian approach to inverse problems has recently gained popularity in applied mathematics, physics, and engineering. However, traditional Bayesian inference methods based on Markov chain Monte Carlo (MCMC) tend to be computationally intensive and inefficient for such high-dimensional problems. To address this issue, several methods based on surrogate models have been proposed to speed up the inference process. More specifically, the calibration-emulation-sampling (CES) scheme has been proven to be successful in large dimensional UQ problems. In this work, we propose a novel CES approach for Bayesian inference based on deep neural network models for the emulation phase. The resulting algorithm is computationally more efficient and more robust against variations in the training set. Further, by using an autoencoder (AE) for dimension reduction, we have been able to speed up our Bayesian inference method up to three orders of magnitude. Overall, our method, henceforth called the dimension-reduced emulative autoencoder Monte Carlo (DREAMC) algorithm, is able to scale Bayesian UQ up to thousands of dimensions for inverse problems. Using two low-dimensional (linear and nonlinear) inverse problems, we illustrate the validity of this approach. Next, we apply our method to two high-dimensional numerical examples (elliptic and advection-diffusion) to demonstrate its computational advantages over existing algorithms.
机译:由于不确定性的重要性量化(UQ),贝叶斯方法逆问题最近得到普及在应用数学、物理和工程学。然而,传统的贝叶斯推理方法基于马尔可夫链蒙特卡罗(密度)倾向于是计算密集型和低效的这种高维问题。问题,基于代理模型的几种方法提出了加快推理吗的过程。calibration-emulation-sampling (CES)方案被证明是成功的很大空间UQ的问题。贝叶斯推理方法基于深神经网络模型仿真阶段。由此产生的算法计算有效的和更健壮的变化训练集。autoencoder (AE)降维,我们有能够加快我们的贝叶斯推理方法三个数量级。我们的方法,从此被称为dimension-reduced好胜的autoencoder蒙特卡洛(DREAMC)算法,能够规模贝叶斯UQ数以千计的维度逆问题。(线性和非线性)的逆问题,我们说明这种方法的有效性。我们运用我们的方法两个高维(椭圆和数值例子advection-diffusion)来展示自己计算现有优势算法。

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