Improvement of Reservoir Management Efficiency Using Stochastic Capacitance Resistance Model

Tae Hyung Kim
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引用次数: 3

Abstract

Lost Hills is a dual permeability Diatomite reservoir that is distinct from conventional reservoirs. Application of numerical simulation has been limited throughout field life due to the complex nature of the diatomite including low permeability (∼ 1 md) but high porosity (∼ 50%) and weak rock strength (∼ 100,000 psi of Young's modulus). Thus, many reservoir management practices are based on trial and error methods which are sub-optimal. This work aims to enhance the efficiency of reservoir management activities. The usage of Capacitance Resistance Model (CRM) has been increasing due to its simple but effective capabilities of analyzing waterflooding performances. However, CRM has innate limitations as well. The core calculation of CRM is solving nonlinear regression. Solution of nonlinear regression is not unique since it is not guaranteed to find the global minimum and is affected by solver algorithms and initial guesses. In addition to the innate limitations, due to the lack of bottomhole pressure data in the Lost Hills and its high oil viscosity (∼ 20 °API), the accuracy of Lost Hills CRM solution is not enough to be used in daily operations. Stochastic CRM (SCRM) was developed to mitigate these limitations by combining bootstrap with CRM and provides stochastic answers. SCRM estimates probabilities of an initial solution using bootstrap, substitutes low probable parameter values with P50 values, and updates injector-producer connection pairs and its interwell connectivity. SCRM was developed for analyzing waterflooding operations such as identification of ineffective injector-producer connection pairs and estimation of reservoir pressure. SCRM analysis results were benchmarked against the Lost Hills tracer test data and demonstrated that SCRM provided a better solution than CRM. Compared to the fact that the deterministic solution from CRM found only 50% of connection pairs which tracer identified, SCRM solution identified 10 out of the 12 tracer identified connections. After the verification, SCRM was applied to find out connected injectors which cause Fluid Over Pump (FOP) wells. The existing workflow for identifying connected injectors was a trial and error method and hard to find connected injectors if connected injectors are located farther than 300 ft from FOP wells (chronic FOP wells). The novel workflow has been deployed so that FOP wells can be mitigated systematically and enable the optimization team to improve its reservoir management efficiency. In 2017, 10 chronic FOP wells were mitigated by identifying connected injectors with the novel workflow.
利用随机电容电阻模型提高水库管理效率
Lost Hills是一种双渗透硅藻土储层,与常规储层不同。由于硅藻土的复杂性质,包括低渗透率(~ 1md)、高孔隙度(~ 50%)和弱岩石强度(~ 100,000 psi的杨氏模量),数值模拟的应用在整个油田寿命期间受到限制。因此,许多油藏管理实践都是基于反复试验的方法,这些方法并不是最优的。这项工作的目的是提高水库管理活动的效率。电容电阻模型(CRM)由于其简单而有效的分析水驱性能的能力而得到越来越多的应用。然而,客户关系管理也有先天的局限性。CRM计算的核心是求解非线性回归问题。非线性回归的解不是唯一的,因为它不能保证找到全局最小值,并且受求解器算法和初始猜测的影响。除了固有的局限性外,由于Lost Hills缺乏井底压力数据,而且原油粘度很高(API为~ 20°),因此Lost Hills CRM解决方案的精度不足以用于日常作业。随机客户关系管理(SCRM)是为了减轻这些限制而发展起来的,它将自举法与客户关系管理相结合,并提供随机答案。SCRM使用自举法估计初始解决方案的概率,用P50值替代低概率参数值,并更新注入-生产连接对及其井间连通性。SCRM的开发是为了分析水驱作业,如识别无效的注采连接对和估计储层压力。SCRM分析结果与Lost Hills示踪剂测试数据进行了基准测试,并证明SCRM提供了比CRM更好的解决方案。与来自CRM的确定性解决方案仅发现50%的示踪剂识别的连接对的事实相比,SCRM解决方案识别了12个示踪剂识别的连接中的10个。验证后,应用SCRM找出了导致井液过泵(FOP)的连接注入管。现有的识别连接注入器的工作流程是一种反复试验的方法,如果连接的注入器位于距FOP井(长期FOP井)300英尺以上的地方,则很难找到连接的注入器。新的工作流程已经部署,因此可以系统地减轻油气井的影响,并使优化团队能够提高油藏管理效率。2017年,通过识别连接的注入器和新的工作流程,10口慢性油压井得到了缓解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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