Deep Bayesian Neural Networks for Fault Identification and Uncertainty Quantification

L. Mosser, S. Purves, E. Naeini
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引用次数: 8

Abstract

Summary The interpretation of faults within a geological basin or reservoir from seismic data is a time-consuming, and often manual task associated with high uncertainties. Recently, numerous approaches using machine learning, especially various types of convolutional neural networks, have been presented to automate the process of identifying fault planes within seismic images, which have been shown to outperform traditional fault detection techniques. While these proposed methods show good performance, many of these approaches do not allow investigation of the associated uncertainties that arise in the fault identification process. In this study, we present an application of Bayesian deep convolutional neural networks for identifying faults within seismic datasets. Using an approximate Bayesian inference method a Bayesian deep neural network was trained on a large dataset of synthetic faulted seismic images. The model is then applied to a benchmark dataset and a real data case from NW shelf Australia to identify fault planes, and to investigate the associated uncertainty in the predictive distribution.
基于深度贝叶斯神经网络的故障识别与不确定性量化
从地震数据中解释地质盆地或储层中的断层是一项耗时的工作,而且往往是一项人工任务,具有很高的不确定性。最近,已经提出了许多使用机器学习的方法,特别是各种类型的卷积神经网络,用于自动识别地震图像中的断层面过程,这些方法已被证明优于传统的故障检测技术。虽然这些提出的方法表现出良好的性能,但其中许多方法不允许调查故障识别过程中出现的相关不确定性。在这项研究中,我们提出了贝叶斯深度卷积神经网络在地震数据集中识别断层的应用。采用近似贝叶斯推理方法,在大型合成断层地震图像数据集上训练贝叶斯深度神经网络。然后将该模型应用于基准数据集和来自澳大利亚西北大陆架的实际数据案例,以识别断层面,并研究预测分布中相关的不确定性。
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