耦合油藏流体和地质力学模拟器中dfit的数值模拟-对完井优化的见解

L. Ji, V. Sen, K. Min, R. Sullivan
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引用次数: 2

摘要

介绍了一种新型的DFIT模拟器,该模拟器将3D水力压裂模型与储层流动和地质力学建模无缝耦合在一个软件中,并用于非常规储层的DFIT数值分析。该工作流程包括在存在压力相关泄漏的情况下,将处理或注入压力(裂缝扩展)和关井(裂缝关闭)压力与水力裂缝的三维增长相匹配。这些都是表征动态刺激油藏体积或DSRV增长的基本过程(Sen等人,2018,Min等人,2018),因此dfit可以用来更好地预测致密储层中DSRV增长的潜力。这种模块化的DFIT模拟器将有限差分油藏模拟与有限元地质力学建模在一个软件中迭代耦合,因此可以在诱导动态SRV内保持裂缝张开、扩展、闭合以及应力相关的泄漏和渗透率演化之间的重要一致性。DFIT注入和关闭过程都进行了数值模拟,根据我们选择固定和干扰的模型参数,我们可以预先估计成功增产的潜力及其可能的规模。即使在没有大量生产数据的情况下,也可以在油田/段开发的早期阶段,在开始主要的钻井和完井活动之前获得这个估计。为优化主压裂设计和井距提供了指导。该方法不依赖或不受广泛使用的DFIT分析方法的假设约束,因此更灵活,更好地捕捉非常规油藏的增产物理特性。早期了解定义非常规储层增产(DSRV有效性)的关键地质力学指标,使我们能够建立压裂参数与压裂后产量之间的定向关系,而无需扩展生产趋势记录。这加快了完井优化的持续学习和自适应过程,包括泵送量、簇间距和井落层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Numerical Simulation of DFITs Within a Coupled Reservoir Flow and Geomechanical Simulator - Insights Into Completions Optimization
A novel DFIT simulator comprising a 3D hydraulic fracturing model seamlessly coupled within one software with reservoir flow and geomechanical modeling is described and used to numerically analyze DFITs in unconventional reservoirs. This workflow involves history matching treatment or injection pressures (fracture propagation) and shut-in (fracture closure) pressures consistent with 3D growth of hydraulic fractures in the presence of pressure dependent leak-off. These are the same fundamental processes which characterize Dynamic Stimulated Reservoir Volume or DSRV growth (Sen et al., 2018, Min et al., 2018) and DFITs can therefore be used to get a better early prognosis on the potential of DSRV growth in a tight reservoir. This modular DFIT simulator iteratively couples a finite-difference reservoir simulation with a finite- element geomechanical modeling within one software and can therefore maintain important consistencies between fracture opening, propagation, closure and the stress dependent leak-off and permeability evolution inside the induced dynamic SRV. Both DFIT injection and closure processes are numerically modeled - and depending on which model parameters we choose to fix and which we perturb, we can preemptively estimate the potential for a successful stimulation and its possible dimensions. This estimate can be obtained at the early stages of a field /section development, before embarking on major drilling and completion campaigns, even in the absence of substantial production data. And it provides guidance for optimizing major fracturing design and well spacing. This approach is not reliant or bound by the assumptions underlying widely-used analytical DFIT analyzing methods, and is therefore more flexible and better captures the physics of stimulation in unconventional reservoirs. An early understanding of the key geomechanical metrics defining unconventional reservoir enhancement (DSRV effectiveness) allows us to build a directional relationship between fracturing parameters and post-fracture production without the need for an extended record of production trends. This speeds up the continuous learning and adaptive process of completion optimization involving pumped volumes, cluster spacing and well landing zones.
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