首页> 外文期刊>Journal of Petroleum Science & Engineering >Application of predictive data analytics to model daily hydrocarbon production using petrophysical, geomechanical, fiber-optic, completions, and surface data: A case study from the Marcellus Shale, North America
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Application of predictive data analytics to model daily hydrocarbon production using petrophysical, geomechanical, fiber-optic, completions, and surface data: A case study from the Marcellus Shale, North America

机译:预测数据分析在使用岩石物理学,地质力学,光纤,完井和表面数据模型日常碳氢化合物生产的应用 - 以北美Marcellus Shale的一个案例研究

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Predicting gas production from stimulated unconventional reservoirs has always been a challenge to oil and gas companies because the physics of fluid flow through such reservoirs is not well understood. On the other hand, modeling gas production from shale reservoirs is a complex multi-variate problem that requires proper integration of data from multiple disciplines, such as geology, petrophysics, geomechanics, completions, and surface-based measurements, etc. This study demonstrates the application of data-driven machine learning algorithms, integrating geoscientific, distributed acoustic sensing (DAS), distributed temperature sensing (DTS) fiber-optic, completions, flow scanner production log, and surface data to model daily gas production from a 28-stage stimulated horizontal well drilled in the Marcellus Shale of the Appalachian basin in North America. In addition, this study aims to utilize the data from a fiber-optic monitoring system, such as DAS and DTS to evaluate the well performance. We build supervised data-driven machine learning models using Random Forest (RF), Artificial Neural Network (ANN), and Support Vector Machine (SVM) algorithms to understand the well performance and forecast the daily gas production. The study compares the forecasted results, tests the level of accuracy, and addresses different issues with these machine learning algorithms. A spatio-temporal database is constructed and used to perform sensitivity analyses to identify the key drivers for gas production. The results show that RF and ANN algorithms can be used to predict daily gas production with significantly high accuracy; however, RF algorithm is the best predictor in terms of highest accuracy (96%), less computational time and cost. Based on sensitivity analysis, it appears that Poisson's ratio, minimum horizontal stress, DAS, casing pressure, gamma log are the most important parameters to predict gas production.
机译:预测来自刺激的非传统水库的天然气生产一直是石油和天然气公司的挑战,因为通过这种储层的流体流动的物理尚未得到很好的理解。另一方面,来自页岩水库的建模天然气生产是一个复杂的多变化问题,需要从多个学科的数据正式集成数据,例如地质,剥离,地质力学,完成和基于表面的测量等。本研究表明了这一研究数据驱动机器学习算法的应用,集成地球科学,分布式声学传感(DAS),分布式温度传感(DAS)光纤,完井,流量扫描仪生产日志和表面数据从28级刺激模拟日常气体生产水平良好钻井在阿巴拉契亚盆地的Marcellus页岩在北美洲。此外,本研究旨在利用来自光纤监控系统的数据,例如DAS和DTS来评估井的性能。我们使用随机森林(RF),人工神经网络(ANN),支持向量机(SVM)算法来构建监督数据驱动的机器学习模型,以了解井的性能和预测日常气体生产。该研究比较了预测结果,测试了准确性水平,并解决了这些机器学习算法的不同问题。构建并用于执行敏感性分析的时空数据库,以确定气体生产的关键驱动因素。结果表明,RF和ANN算法可用于预测日常气体生产,精度明显高;然而,在最高精度(96%),计算时间和成本方面,RF算法是最佳预测因素。基于灵敏度分析,似乎泊松比,最小水平应力,DA,套管压力,伽马日志是预测天然气生产的最重要参数。

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