Experimental and Simulation Investigation on Ball-Sealer Transport and Diversion Performance Aided by Machine Learning Method

IF 3.2 3区 工程技术 Q1 ENGINEERING, PETROLEUM SPE Journal Pub Date : 2023-11-01 DOI:10.2118/218010-pa
Hai Qu, Ying Liu, Chengying Li, Zhijun Zeng, Xu Liu, Zhelun Li
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Abstract

Summary Ball-sealer diversion has been proven to be an effective and economical way to increase fractures and fracturing volume in multistage hydraulic fracturing and matrix acidizing treatments. However, designing and implementing a successful ball-sealer diversion treatment is still challenging. Typically, operators rely on empirical data to determine diversion parameters and need an understanding of accurate ball transport and diversion behaviors. A model for optimizing operating parameters, including fluid and ball properties, and predicting the diversion performance of ball sealers before treatment is needed for designing the fracturing process. In this work, we systematically investigated ball-sealer diversion using experimental and numerical methods. The resolved model of computational fluid dynamics (CFD) and discrete element method (DEM) is first developed to simulate the transport of a large ball in a horizontal wellbore with side holes. The experimental results validated the numerical model. The effects of the ball position in the pipe, flow ratio of the hole to pipe, injection flow rate, and ball density on the diversion performance were studied under field parameters. The results show that the ball sealer easily misses the heel-side perforation due to the inertial effect and travels to the toe side due to the large inertia and turbulent flow. The ball position and flow rate ratio are crucial for the diversion performance. There is a threshold value of the ball position under the specific condition, and the ball successfully turns to the perforation only when the threshold distance is met. A ball sealer closer to the perforation will have a larger probability of blocking the hole than the ball at the other side of the wellbore. The larger the flow rate ratio, the more the drag force on the ball, and the ball can successfully divert to the perforation despite the ball being far from the hole. The injection flow rate and ball density negatively correlate with the diversion performance due to the large inertia and gravity. The best classification result with the F1 score of 87.0% in the prediction set was achieved using the random forest (RF) algorithm. It provides new insight into developing ball sealers and adjusting fracturing parameters based on machine learning (ML) methods.
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基于机器学习方法的球封机输导性能实验与仿真研究
在多级水力压裂和基质酸化处理中,球密封导流是一种经济有效的增产方法。然而,设计和实施一种成功的密封球转移处理仍然具有挑战性。通常情况下,作业者依靠经验数据来确定导流参数,需要了解准确的球运移和导流行为。在设计压裂工艺时,需要一个优化操作参数的模型,包括流体和球的特性,以及在处理前预测球密封剂的导流性能。在这项工作中,我们采用实验和数值方法系统地研究了球密封转移。首次建立了计算流体力学(CFD)和离散元法(DEM)的解析模型,用于模拟带侧孔的水平井筒中大球的运移。实验结果验证了数值模型的正确性。在现场参数下,研究了球在管内位置、孔管流量比、注入流量和球密度对导流性能的影响。结果表明:由于惯性效应,密封球容易漏过足跟侧的射孔,而由于较大的惯性和紊流,密封球容易向足跟侧移动;球的位置和流量比对导流效果至关重要。在特定条件下,球的位置存在一个阈值,只有满足阈值距离,球才能成功转向射孔。靠近射孔的密封球比位于井筒另一侧的密封球堵塞井眼的可能性更大。流量比越大,对球的阻力越大,即使球离井眼较远,也能成功转向射孔。由于惯性和重力较大,注入流量和球密度与导流性能呈负相关。采用随机森林(RF)算法,预测集F1得分为87.0%,分类效果最好。它为开发球密封器和基于机器学习(ML)方法调整压裂参数提供了新的见解。
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来源期刊
SPE Journal
SPE Journal 工程技术-工程:石油
CiteScore
7.20
自引率
11.10%
发文量
229
审稿时长
4.5 months
期刊介绍: Covers theories and emerging concepts spanning all aspects of engineering for oil and gas exploration and production, including reservoir characterization, multiphase flow, drilling dynamics, well architecture, gas well deliverability, numerical simulation, enhanced oil recovery, CO2 sequestration, and benchmarking and performance indicators.
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