论文标题
深度可逆网络的参数不确定性,储层表征的应用
Parameterizing uncertainty by deep invertible networks, an application to reservoir characterization
论文作者
论文摘要
全波反转的不确定性量化提供了问题不良条件的概率表征,包括解决方案相对于起始模型和数据噪声的敏感性。该分析允许评估对候选解决方案的置信度以及如何反映成像后通常执行的任务(例如,储层表征后的地层分割)。从经典上讲,不确定性以贝叶斯原则提出的概率分布的形式出现,我们寻求从中获得样本。一种流行的解决方案涉及蒙特卡洛抽样。在这里,我们提出了一种以训练深层网络为特征的方法,该方法“向前'推动”高斯随机输入到模型空间中(例如表示密度或速度),就好像它们是从实际的后验分布中取样一样。该网络旨在根据后验和网络输出分布之间的kullback-leibler差异解决变分优化问题。这项工作从根本上讲是基于可逆网络的最新发展。特殊的可逆体系结构,除了在传统网络方面具有计算有利的计算能力,还可以实现对输出密度函数的分析计算。因此,训练后,这些网络可以很容易地用作相关反转问题的新先验。这与仅产生样品的蒙特卡洛方法形成鲜明对比。我们通过应用将这些想法验证为锯齿射线参数分析,以进行储层表征。
Uncertainty quantification for full-waveform inversion provides a probabilistic characterization of the ill-conditioning of the problem, comprising the sensitivity of the solution with respect to the starting model and data noise. This analysis allows to assess the confidence in the candidate solution and how it is reflected in the tasks that are typically performed after imaging (e.g., stratigraphic segmentation following reservoir characterization). Classically, uncertainty comes in the form of a probability distribution formulated from Bayesian principles, from which we seek to obtain samples. A popular solution involves Monte Carlo sampling. Here, we propose instead an approach characterized by training a deep network that "pushes forward" Gaussian random inputs into the model space (representing, for example, density or velocity) as if they were sampled from the actual posterior distribution. Such network is designed to solve a variational optimization problem based on the Kullback-Leibler divergence between the posterior and the network output distributions. This work is fundamentally rooted in recent developments for invertible networks. Special invertible architectures, besides being computational advantageous with respect to traditional networks, do also enable analytic computation of the output density function. Therefore, after training, these networks can be readily used as a new prior for a related inversion problem. This stands in stark contrast with Monte-Carlo methods, which only produce samples. We validate these ideas with an application to angle-versus-ray parameter analysis for reservoir characterization.