基于深度变分自编码器模型和数据空间压缩的集成时移ERT反演

A. Vinciguerra, M. Aleardi
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引用次数: 1

摘要

延时电阻率层析成像(TL-ERT)旨在成像地下电阻率的变化。这是一个病态的非唯一逆问题,因此模型不确定性的估计是至关重要的。为了减少概率反演的计算成本,可以将模型和数据重新参数化到低维空间中,这样可以更有效地计算逆解。在众多压缩方法中,基于深度生成模型的深度学习算法提供了一种有效的方法来减少模型和数据空间。在这里,我们提出了一种TL-ERT概率反演,其中数据和模型空间通过深度变分自编码器压缩,而优化过程由具有多重数据同化的集成平滑器驱动,这是一种基于迭代集成的算法,在每次迭代中执行贝叶斯更新步骤。该方法通过迭代更新我们根据先前定义的先验模型和空间变异性模式生成的初始模型集合,为不确定性的量化提供了多种实现。有限元代码构成正向运算符。我们在一个示意图地下模型上计算的合成数据上测试了该方法。我们的实验证明了所提出的TL-ERT反演的适用性和可靠性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble-Based Time-Lapse ERT Inversion with Model and Data Space Compression Through Deep Variational Autoencoders
Summary Time-lapse electrical resistivity tomography (TL-ERT) aims to image resistivity changes in the subsurface. This is an ill-posed and non-unique inverse problem and hence the estimation of the model uncertainties is of crucial importance. To reduce the computational cost of the probabilistic inversion, model and data can be re-parameterized into low-dimensional spaces where the inverse solution can be computed more efficiently. Among the many compression methods, deep learning algorithms based on deep generative models provide an efficient approach to reduce model and data spaces. Here, we propose a TL-ERT probabilistic inversion where the data and model spaces are compressed through deep variational autoencoders, while the optimization procedure is driven by the ensemble smoother with multiple data assimilation, an iterative ensemble-based algorithm that performs a Bayesian updating step at each iteration. This method provides multiple realizations for the quantification of the uncertainty by iteratively updating an initial ensemble of models that we generate according to previously defined prior model and spatial variability pattern. A finite-element code constitutes the forward operator. We test the method on synthetic data computed over a schematic subsurface model. Our tests demonstrate the applicability and the reliability of the proposed TL-ERT inversion.
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