Deep neural networks offer numerous potential applications across geoscience, for example, one could argue that they are the state-of-the-art method for predicting faults in seismic datasets. In quantitative reservoir characterization workflows, it is common to incorporate the uncertainty of predictions thus such subsurface models should provide calibrated probabilities and the associated uncertainties in their predictions. It has been shown that popular Deep Learning-based models are often miscalibrated, and due to their deterministic nature, provide no means to interpret the uncertainty of their predictions. We compare three different approaches to obtaining probabilistic models based on convolutional neural networks in a Bayesian formalism, namely Deep Ensembles, Concrete Dropout, and Stochastic Weight Averaging-Gaussian (SWAG). These methods are consistently applied to fault detection case studies where Deep Ensembles use independently trained models to provide fault probabilities, Concrete Dropout represents an extension to the popular Dropout technique to approximate Bayesian neural networks, and finally, we apply SWAG, a recent method that is based on the Bayesian inference equivalence of mini-batch Stochastic Gradient Descent. We provide quantitative results in terms of model calibration and uncertainty representation, as well as qualitative results on synthetic and real seismic datasets. Our results show that the approximate Bayesian methods, Concrete Dropout and SWAG, both provide well-calibrated predictions and uncertainty attributes at a lower computational cost when compared to the baseline Deep Ensemble approach. The resulting uncertainties also offer a possibility to further improve the model performance as well as enhancing the interpretability of the models.
翻译:例如,深心神经网络在地球科学中提供了许多潜在应用,例如,人们可以争辩说,它们是预测地震数据集断层的最先进的预测方法。在数量储油层定性工作流程中,通常会纳入预测的不确定性,因此,这种地下模型应提供校准的概率及其预测中的相关不确定性。已经表明,流行的深心学习模型往往被错误校准,由于其确定性,无法解释其预测的不确定性。我们比较了三种不同的方法,以获得基于巴伊西亚正规主义中革命性神经网络的概率模型,即深团、混凝土流出和斯托查斯-韦奇格-加西安(SWAGAG),这是很常见的。这些方法一直用于调查案例研究,即深心研究利用独立训练的模型来提供错误的概率性能,而具体下降模型则代表了流行性下降方法以近似贝伊斯低神经网络,最后,我们采用SWAGG, 将最近的一种方法,即深度的不确定性和定性方法,也作为SBAVI的准确性结果。