Characterization of Fracture-Driven Interference and the Application of Machine Learning to Improve Operational Efficiency

R. Klenner, Guoxiang Liu, Hayley Stephenson, Glen Murrell, N. Iyer, Nurali Virani, Anveshi Charuvaka
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引用次数: 5

Abstract

Frac hits are a form of fracture-driven interference (FDI) that occur when newly drilled wells communicate with existing wells during completion, and which may negatively or positively affect production. An analytics and machine-learning approach is presented to characterize and aid understanding of the root causes of frac hits. The approach was applied to a field data set and indicated that frac hits can be quantitatively attributed to operational or subsurface parameters such as spacing or depletion. The novel approach analyzed a 10-well pad comprising two ‘parent’ producers and eight ‘child’ infills. The analysis included the following data types: microseismic, completion, surface and bottomhole pressure, tracers, production, and petrophysical logs. The method followed a three-step process: 1) use analytics to assess interference during the hydraulic fracturing and during production, 2) catalogue or extract feature engineering attributes for each stage (offset distance, petrophysics, completion, and depletion) and 3) apply machine-learning techniques to identify which attributes (operations or subsurface) are significant in the causation and/or enhancement of inter-well communication. Information fusion with multi-modal data was also used to determine the probability of well-to-well communication. The data fusion technique integrated multiple sensor data to obtain a lower detection error probability and a higher reliability by using data from multiple sources. The results showed that the infill wells completed in closest proximity to the depleted parents exhibit strong communication. The machine-learning classification creates rules that enable better understanding of control variables to improve operational efficiency. Furthermore, the methodology lends a framework that enables the development of visualization, continuous learning, and real-time application to mitigate communication during completions.
裂缝驱动干涉的表征及机器学习在提高作业效率中的应用
压裂冲击是一种裂缝驱动干扰(FDI),在完井过程中,当新钻的井与现有井连通时,就会发生这种情况,这可能会对产量产生积极或消极的影响。提出了一种分析和机器学习方法来描述和帮助理解压裂命中的根本原因。将该方法应用于现场数据集,结果表明,压裂命中可以定量地归因于作业或地下参数,如间距或耗尽。这种新方法分析了一个10口井的区块,包括两个“母”井和8个“子”井。分析包括以下数据类型:微地震、完井、地面和井底压力、示踪剂、生产和岩石物理测井。该方法分为三个步骤:1)使用分析来评估水力压裂和生产过程中的干扰;2)对每个阶段(偏移距离、岩石物理、完井和枯竭)的特征工程属性进行分类或提取;3)应用机器学习技术来识别哪些属性(操作或地下)对井间通信的因果关系和/或增强具有重要意义。利用多模态数据的信息融合来确定井间通信的概率。数据融合技术将多个传感器数据集成在一起,利用多源数据获得较低的检测误差概率和较高的可靠性。结果表明,在最接近枯竭母层的位置完成的充填井表现出较强的连通性。机器学习分类创建了能够更好地理解控制变量以提高操作效率的规则。此外,该方法还提供了一个框架,可以实现可视化、持续学习和实时应用的开发,从而减少完井期间的通信。
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