Classification and Localization of Low-Frequency DAS Strain Rate Patterns with Convolutional Neural Networks

Mengyuan Chen, Jin Tang, D. Zhu, A. Daniel Hill
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Abstract

Distributed acoustic sensing (DAS) has been used in the oil and gas industry as an advanced technology for surveillance and diagnostics. Operators use DAS to monitor hydraulic fracturing activities, to examine well stimulation efficacy, and to estimate complex fracture system geometries. Particularly, low-frequency DAS can detect geomechanical events such as fracture-hits as hydraulic fractures propagate and create strain rate variations. Analysis of DAS data today is mostly done post-job and subject to interpretation methods. However, the continuous and dense data stream generated live by DAS offers the opportunity for more efficient and accurate real-time data-driven analysis. The objective of this study is to develop a machine learning-based workflow that can identify and locate fracture-hit events in simulated strain rate response that is correlated with low-frequency DAS data. In this paper, "fracture-hit" refers to a hydraulic fracture originated from a stimulated well intersecting an offset well. We start with building a single fracture propagation model to produce strain rate patterns observed at a hypothetical monitoring well. This model is then used to generate two sets of strain rate responses with one set containing fracture-hit events. The labeled synthetic data are then used to train a custom convolutional neural network (CNN) model for identifying the presence of fracture-hit events. The same model is trained again for locating the event with the output layer of the model replaced with linear units. We achieved near-perfect predictions for both event classification and localization. These promising results prove the feasibility of using CNN for real-time event detection from fiber optic sensing data. Additionally, we used image analysis techniques, including edge detection, for recognizing fracture-hit event patterns in strain rate images. The accuracy is also plausible, but edge detection is more dependent on image quality, hence less robust compared to CNN models. This comparison further supports the need for CNN applications in image-based real-time fiber optic sensing event detection.
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基于卷积神经网络的低频DAS应变率模式分类与定位
分布式声传感(DAS)作为一种先进的监测和诊断技术,已被应用于石油和天然气行业。作业人员使用DAS来监测水力压裂活动,检查油井增产效果,并估计复杂裂缝系统的几何形状。特别是,低频DAS可以检测地质力学事件,如水力裂缝扩展时的裂缝冲击,并产生应变率变化。今天对DAS数据的分析大多是在作业后完成的,并受到解释方法的影响。然而,由DAS实时生成的连续和密集的数据流为更有效和准确的实时数据驱动分析提供了机会。本研究的目的是开发一种基于机器学习的工作流程,该工作流程可以识别和定位与低频DAS数据相关的模拟应变率响应中的裂缝撞击事件。在本文中,“裂缝冲击”是指压裂井与邻井相交产生的水力裂缝。我们首先建立单个裂缝扩展模型,以产生在假设监测井中观察到的应变速率模式。然后使用该模型生成两组应变率响应,其中一组包含破裂冲击事件。然后使用标记的合成数据来训练自定义卷积神经网络(CNN)模型,以识别裂缝冲击事件的存在。将模型的输出层替换为线性单元,再次训练同一模型以定位事件。我们在事件分类和定位方面都取得了近乎完美的预测。这些有希望的结果证明了将CNN用于光纤传感数据实时事件检测的可行性。此外,我们使用图像分析技术,包括边缘检测,来识别应变率图像中的断裂事件模式。准确性也很合理,但边缘检测更依赖于图像质量,因此与CNN模型相比,鲁棒性较差。这一对比进一步支持了CNN在基于图像的实时光纤传感事件检测中的应用需求。
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