工作流程
计算机科学
水位下降(水文)
提高采收率
非常规油
水力压裂
油页岩
储层建模
石油工程
地质学
含水层
岩土工程
数据库
地下水
古生物学
作者
Mohamed Mehana,Javier E. Santos,Chelsea W. Neil,J. William Carey,J. William Carey,Jeffery Hyman,Qinjun Kang,Satish Karra,Mathew Sweeney,Hongwu Xu,Hari Viswanathan
出处
期刊:Energy Reports
[Elsevier]
日期:2022-09-07
卷期号:8: 11192-11205
被引量:8
标识
DOI:10.1016/j.egyr.2022.08.229
摘要
Hydrocarbon production from shale reservoirs is inherently inefficient and challenging since these are low permeability plays. In addition, there is a limited understanding of the fundamentals and the controlling mechanisms, further complicating how to optimize these plays. Herein, we summarize our experimental and computational efforts to reveal unconventional shale fundamentals and devise development strategies to enhance extraction efficiency with a minimal environmental footprint. Integrating these fundamentals with machine learning, we outline a pathway to improve the predictive power of our models, which enhances the forecast quality of production, thereby improving the economics of operations in unconventional reservoirs. We will discuss the main processes involving the matrix, hydraulic fractures, enhanced oil recovery, and carbon dioxide sequestration. In addition, we present science-informed workflows and platforms to optimize pressure-drawdown at a site, enable real-time reservoir management, accelerate numerical modeling and quantify uncertainty. We summarize our insights on pressure-drawdown optimization to maximize recovery while considering the lifetime of the well. In addition, we demonstrate our work on the hybridization of physics-based prediction and machine learning, whereby accurate synthetic data (combined with available site data) can enable the application of machine learning methods for rapid forecasting and optimization. Consequently, the workflow and platform are readily extendable to operations at other sites, plays and basins.
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