论文标题

使用多重培训数据和转移学习来有效地构建地下流替代模型

Use of Multifidelity Training Data and Transfer Learning for Efficient Construction of Subsurface Flow Surrogate Models

论文作者

Jiang, Su, Durlofsky, Louis J.

论文摘要

数据同化提出了计算挑战,因为必须模拟许多高保真模型。已经开发了各种基于深度学习的替代建模技术,以降低与这些应用相关的模拟成本。但是,为了构建数据驱动的替代模型,可能需要数千个高保真模拟运行才能提供培训样本,并且这些计算可以使培训变得过于昂贵。为了解决这个问题,在这项工作中,我们提出了一个框架,其中大多数训练模拟都是在粗糙的地质模型上进行的。这些模型是使用基于流动的放大方法构建的。该框架需要使用转移学习过程,该过程包含在现有的剩余u-net体系结构中,在该过程中,将网络培训分为三个步骤。在第一步。在进行大部分训练的地方,仅使用低保真模拟结果。训练输出层和整体网络进行了微调的第二和第三步,需要相对较少的高保真模拟。在这里,我们使用2500次低保真跑步和200次高保真跑步,这导致训练模拟成本降低了约90%。该方法用于3D通道系统中的两相地下流,其流量由井驱动。训练有多重级数据的替代模型显示,仅在预测新地理位置中的动态压力和饱和场时,仅使用高保真数据训练的参考替代物与参考替代物一样准确。重要的是,该网络提供的结果比用于大多数训练的低保真模拟更准确。使用基于集合的过程,多额替代物也用于历史匹配,在该过程中,再次证明了相对于参考结果的准确性。

Data assimilation presents computational challenges because many high-fidelity models must be simulated. Various deep-learning-based surrogate modeling techniques have been developed to reduce the simulation costs associated with these applications. However, to construct data-driven surrogate models, several thousand high-fidelity simulation runs may be required to provide training samples, and these computations can make training prohibitively expensive. To address this issue, in this work we present a framework where most of the training simulations are performed on coarsened geomodels. These models are constructed using a flow-based upscaling method. The framework entails the use of a transfer-learning procedure, incorporated within an existing recurrent residual U-Net architecture, in which network training is accomplished in three steps. In the first step. where the bulk of the training is performed, only low-fidelity simulation results are used. The second and third steps, in which the output layer is trained and the overall network is fine-tuned, require a relatively small number of high-fidelity simulations. Here we use 2500 low-fidelity runs and 200 high-fidelity runs, which leads to about a 90% reduction in training simulation costs. The method is applied for two-phase subsurface flow in 3D channelized systems, with flow driven by wells. The surrogate model trained with multifidelity data is shown to be nearly as accurate as a reference surrogate trained with only high-fidelity data in predicting dynamic pressure and saturation fields in new geomodels. Importantly, the network provides results that are significantly more accurate than the low-fidelity simulations used for most of the training. The multifidelity surrogate is also applied for history matching using an ensemble-based procedure, where accuracy relative to reference results is again demonstrated.

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