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Deep residual U-net convolution neural networks with autoregressive strategy for fluid flow predictions in large-scale geosystems

机译:深度剩余U-Net卷积神经网络,具有大规模地质系统中流体流动预测的自回归策略

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摘要

The inherent complexity of the fluid flow in subsurface systems brings potential inevitable uncertainty in their characterization. Computationally intensive high-dimensional inversion problems often emerge in solving the fluid flow problems of various scenarios, which required to be probed. To improve the efficiency of solving such problems, surrogate strategies are widely used to quantify the uncertainty of underground multiphase flow models. In this paper, a deep learning surrogate model is developed for predicting the time-dependent dynamic multiphase flow in a two-dimensional (2D) channelized geological system. The surrogate model is combined with a residual U-net and an autoregressive strategy, which considers the output at the previous time step as input and predict the output at the current time step. The residual U-net has a symmetric network structure similar to U-net and contains extra residual units. The rich skip connections in the network can promote information dissemination and achieve better prediction performance with fewer parameters. We demonstrated the performance of the autoregressive residual U-net (AR-Runet) for predicting the migration of solute transport in heterogeneous 2D binary model. The result shows the AR-Runet surrogate model can provide an accurate approximation of saturation and pressure fields at different times. We also have demonstrated that with the autoregressive strategy this network can achieve similar predict results with relatively less training data. The performance of the AR-Runet network is also compared with the autoregressive Dense net (AR-Dense). The findings indicate that the AR-Runet can provide effective measures for developing surrogate model and uncertainty analysis in dynamic multiphase flow predictions of subsurface systems.
机译:地下系统中流体流动的固有复杂性带来了其特征中的潜在不可避免的不确定性。计算密集型的高维反演问题经常出现求解各种场景的流体流动问题,这需要探测。为了提高解决此类问题的效率,替代策略被广泛用于量化地下多相流动模型的不确定性。在本文中,开发了一种深度学习代理模型,用于预测二维(2D)信道化地质系统中的时间依赖动态多相流。代理模型与剩余U-Net和自回归策略相结合,其将前一步的输出作为输入,预测当前时间步骤中的输出。残差U-Net具有与U-Net类似的对称网络结构,并包含额外的残余单元。网络中的富跳过连接可以促进信息传播,并通过更少的参数实现更好的预测性能。我们证明了归共残留U-NET(AR-RENET)的性能,以预测异质2D二元模型中溶质转运的迁移。结果表明AR运行替代模型可以在不同时间提供饱和度和压力场的准确近似。我们还证明,随着自回归策略,该网络可以实现类似的预测结果,培训数据相对较少。还与自回归致密净(AR-DERED)进行了比较了AR-RUNET网络的性能。结果表明,AR卷卷可以提供用于在地下系统的动态多相流动预测中发展替代模型和不确定性分析的有效措施。

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