基于时空机器学习的远场光纤分布式声传感DAS响应估计及水力裂缝几何特征的改进

Kildare George Ramos Gurjao, E. Gildin, R. Gibson, M. Everett
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引用次数: 0

摘要

分布式声学传感(DAS)是一种光纤技术,与点传感器(即检波器)等传统地球物理方法相比,它具有广泛的空间覆盖范围、高频数据采集和广泛的电缆部署选项,包括危险/恶劣环境,正在彻底改变非常规油藏监测技术。然而,由于该技术的灵敏度仅限于监测井附近的区域,因此配备光纤的单井无法获得远场应变响应。在本文中,我们开发了一种人工智能(AI)算法来估计任何时空输入的远场DAS响应的大小。此外,我们确定了裂缝撞击后位移结果的不连续,这被解释为岩石塑性变形的影响,并且我们首次证明了它可能与裂缝宽度有关。因此,我们的算法的输出是用来估计这种几何性质随时间在多个位置。我们使用基于位移不连续法(DDM)的内部代码生成切线位移分量(y)(与监测井平行)。几口监测井被纳入到以单个和多个水力裂缝为特征的物理场景模拟中。对于每个特定的场景,我们训练和测试一个人工神经网络(ANN),以位置和时间作为输入变量,轴向位移作为输出。机器学习(ML)模型设计为7个隐藏层,每层最大神经元数为100,双曲正切为激活函数。最后,利用预测方法:(1)获取分布式声传感(DAS)数据,在空间和时间上依次推导;(2)根据不连续程度估计裂缝宽度。训练阶段避免了过拟合,最小化了人工神经网络损失函数。在测试阶段,在整个瀑布图区域,真实变量与预测变量之间的误差可以忽略不计,除了在作业井开始压裂的初始时间步长,监测井收集的轴向位移值非常小,在10-6量级甚至更小。在这种情况下,我们怀疑这些微小的监督值可能对损失函数的影响最小,因此回归模型的权重和偏差几乎没有更新,以考虑这些输出的影响。在裂缝宽度估计方面,所有位置的误差都随着时间的推移不断减小,接近0%。据我们所知,这是第一个能够根据位置和时间输入来估计水力压裂过程中产生的应变场的ML算法。利用合成数据开发的模型有助于在现场部署多口监测井,以增强近井区域以外已形成裂缝系统的几何特征,并可能识别与裂缝扩展相关的关键模式,从而最终实现生产优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimation of Far-Field Fiber Optics Distributed Acoustic Sensing DAS Response Using Spatio-Temporal Machine Learning Schemes and Improvement of Hydraulic Fracture Geometric Characterization
Distributed Acoustic Sensing (DAS) is a fiber optics method that is revolutionizing the unconventional reservoir monitoring technology with substantial spatial coverage, high frequency data acquisition, and broad cable deployment options including hazardous/harsh environments compared to traditional geophysical methods such as point sensors (i.e., geophones). However, a single well equipped with fiber cannot acquire the far-field strain response since the sensitivity of this technique is restricted to a region near the monitor well. In this paper, we develop an Artificial Intelligence (AI) algorithm to estimate the magnitude of the far-field DAS response for any spatio-temporal input. Moreover, we identify a discontinuity in displacement results following fracture hit, which is interpreted as an effect of rock plastic deformation, and for the first time we demonstrate that it may be related to fracture width. Therefore, the output of our algorithm is used to estimate such geometric property along time in multiple locations. We generate the tangent displacement component (uy) (parallel to monitor well) using an in-house code based on Displacement Discontinuity Method (DDM). Several monitor wells are incorporated in the simulation of physical scenarios characterized by single and multiple hydraulic fractures. For each specific scenario we train and test an Artificial Neural Network (ANN) with position and time as input variables, and axial displacement as output. The Machine Learning (ML) model is designed with 7 hidden layers, 100 the maximum number of neurons per layer and hyperbolic tangent as activation function. Finally, predicted uy is used to: (1) obtain Distributed Acoustic Sensing (DAS) data deriving it sequentially in space and time; and (2) estimate fracture width based on discontinuity magnitude. Training stage is performed avoiding overfitting and minimizing ANN loss function. In the testing phase, error between true and predicted variables is negligible in the entire waterfall plot region, except at initial time steps where fracture treatment starts at operation well and magnitude of axial displacement collected at monitor well is very small on the order of 10-6 or even lower. In this case, we suspect that these tiny supervisor values may have minimal impact on the loss function, and consequently weights and biases of regression model are barely updated to consider the effect of such outputs. Regarding fracture width estimation, error reduces consistently along time at all locations reaching values near 0%. To the best of our knowledge this is the first work that creates a ML algorithm able to estimate strain fields generated during hydraulic fracturing treatments merely based on position and time inputs. The model developed with synthetic data is an incentive for the deployment of multiple monitor wells in the field to enhance beyond the near wellbore region geometric characterization of created fracture systems, and possibly identify critical patterns associated with fracture propagation that ultimately can lead to production optimization.
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