Uncertainty quantification is crucial to inverse problems, as it could provide decision-makers with valuable information about the inversion results. For example, seismic inversion is a notoriously ill-posed inverse problem due to the band-limited and noisy nature of seismic data. It is therefore of paramount importance to quantify the uncertainties associated to the inversion process to ease the subsequent interpretation and decision making processes. Within this framework of reference, sampling from a target posterior provides a fundamental approach to quantifying the uncertainty in seismic inversion. However, selecting appropriate prior information in a probabilistic inversion is crucial, yet non-trivial, as it influences the ability of a sampling-based inference in providing geological realism in the posterior samples. To overcome such limitations, we present a regularized variational inference framework that performs posterior inference by implicitly regularizing the Kullback-Leibler divergence loss with a CNN-based denoiser by means of the Plug-and-Play methods. We call this new algorithm Plug-and-Play Stein Variational Gradient Descent (PnP-SVGD) and demonstrate its ability in producing high-resolution, trustworthy samples representative of the subsurface structures, which we argue could be used for post-inference tasks such as reservoir modelling and history matching. To validate the proposed method, numerical tests are performed on both synthetic and field post-stack seismic data.
翻译:不确定性的量化对于反向问题至关重要,因为它可以为决策者提供关于反向结果的宝贵信息。例如,地震倒流是一个臭名昭著的反向问题,因为地震数据具有带宽和吵闹的性质,因此,至关重要的是要量化与反向进程相关的不确定性,以方便随后的解释和决策过程。在此参照框架内,从目标后继者取样为量化地震倒流不确定性提供了基本方法。然而,在概率转换中选择适当的先前信息至关重要,但非三重性,因为它影响基于抽样的推论能力,在后继抽样中提供地质真实性。为了克服这些局限性,我们提出了一个定期变异推论框架,通过隐含地规范库尔贝克-利韦贝尔差异损失,通过拟议的普卢格和普利方法将基于CNNC的脱音器损失量化。我们称这个新的算法Plug和lay Stein Variation是非三重力的,因为它的抽样推导推导能力在远端平基底部(PnPl-Prational Variental)的后代度测试,可以显示其高分辨率的平基底结构,并显示其高分辨率的平基测试。