An Efficient Deep Learning-Based Workflow Incorporating a Reduced Physics Model for Subsurface Imaging in Unconventional Reservoirs

Tsubasa Onishi, Hongquan Chen, A. Datta-Gupta, Srikanta Mishra
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引用次数: 1

Abstract

We present a novel deep learning-based workflow incorporating a reduced physics model that can efficiently visualize well drainage volume and pressure front propagation in unconventional reservoirs in near real-time. The visualizations can be readily used for qualitative and quantitative characterization and forecasting of unconventional reservoirs. Our aim is to develop an efficient workflow that allows us to ‘see’ within the subsurface given measured data, such as production data. The most simplistic way to achieve the goal will be to merely train a deep learning-based regression model where the input consists of some measured data, and the output is a subsurface image, such as pressure field. However, the high output dimension that corresponds to spatio-temporal steps makes the training inefficient. To address this challenge, an autoencoder network is applied to discover lower dimensional latent variables that represent high dimensional output images. In our approach, the regression model is trained to predict latent variables, instead of directly constructing an image. In the prediction step, the trained regression model first predicts latent variables given measured data, then the latent variables will be used as inputs of the trained decoder to generate a subsurface image. In addition, fast marching-method (FMM)-based rapid simulation workflow which transforms original 2D or 3D problems into 1D problems is used in place of full-physics simulation to efficiently generate datasets for training. The capability of the FMM-based rapid simulation allows us to generate sufficient datasets within realistic simulation times, even for field scale applications. We first demonstrate the proposed approach using a simple illustrative example. Next, the approach is applied to a field scale reservoir model built after the publicly available data on the Hydraulic Fracturing Test Site-I (HFTS-I), which is sufficiently complex to demonstrate the power and efficacy of the approach. We will further demonstrate the utility of the approach to account for subsurface uncertainty. Our approach, for the first time, allows data-driven visualization of unconventional well drainage volume in 3D. The novelty of our approach is the framework which combines the strengths of deep learning-based models and the FMM-based rapid simulation. The workflow has flexibility to incorporate various spatial and temporal data types.
结合简化物理模型的高效深度学习工作流程用于非常规油藏地下成像
我们提出了一种新的基于深度学习的工作流程,该流程结合了简化的物理模型,可以近乎实时地有效地可视化非常规油藏的井排量和压力前传播。可视化技术可以很容易地用于非常规储层的定性和定量表征和预测。我们的目标是开发一种高效的工作流程,使我们能够“看到”地下给定的测量数据,例如生产数据。实现这一目标的最简单的方法是仅仅训练一个基于深度学习的回归模型,其中输入由一些测量数据组成,输出是地下图像,例如压力场。然而,对应于时空阶跃的高输出维数使得训练效率低下。为了解决这一挑战,应用自编码器网络来发现代表高维输出图像的低维潜在变量。在我们的方法中,回归模型被训练来预测潜在变量,而不是直接构建图像。在预测步骤中,训练后的回归模型首先预测给定测量数据的潜在变量,然后将潜在变量作为训练后的解码器的输入来生成地下图像。此外,采用基于快速进步法(fast marching-method, FMM)的快速仿真工作流,将原来的二维或三维问题转化为一维问题,代替全物理仿真,高效生成训练数据集。基于fmm的快速模拟功能使我们能够在现实的模拟时间内生成足够的数据集,即使是现场规模的应用。我们首先使用一个简单的说明性示例来演示所提出的方法。接下来,将该方法应用于一个现场规模的油藏模型,该模型是根据水力压裂试验场i (htfs - i)上的公开数据建立的,该模型非常复杂,足以证明该方法的有效性。我们将进一步证明该方法在解释地下不确定性方面的实用性。我们的方法首次实现了非常规井排液量的三维数据可视化。该方法的新颖之处在于该框架结合了基于深度学习的模型和基于fmm的快速仿真的优势。工作流可以灵活地合并各种空间和时间数据类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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