通过被动和主动完井控制优化Tengiz平台含酸气注入和生产

Shusei Tanaka, M. Rousset, Y. Ghomian, A. Azhigaliyeva, Chingiz Bopiyev, Ilyas Yechshanov, K. Dehghani
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引用次数: 0

摘要

自2008年以来,Tengiz已经开始实施含硫注气作业,并将作为未来发展项目的一部分进行扩展。由于天然气处理能力有限,在高GOR下生产井一直是一个挑战,导致潜在的停产。本研究的目的是建立一个有效的优化工作流程,以改善垂直/区域扫描,从而在操作限制下最大化采收率。这将通过在许多生产/注水井中安装的一致性控制完井来实现。采用具有先进现场管理(FM)逻辑的双孔双渗(DPDK)成分模拟模型进行研究。在模型中实施了垂直一致性控制,每口井可以控制4个隔室。定义了基于模型的优化工作流程,以最大限度地提高采收率。考虑的目标函数是1)5年后的增量恢复,2)让步结束时的增量恢复。考虑优化的控制参数有:1)注入分配率,2)产量分配率,3)注水井和生产商的垂直完井隔室。不同的优化技术,如遗传算法和机器学习采样方法的组合以迭代的方式被利用。人们很快意识到,由于混合分类和连续控制参数的数量以及仿真响应的非线性,优化问题几乎是不可行的。此外,由于多个时变操作约束,问题也变得更加复杂。重新研究了控制变量的参数化,如调度和/或FM规则优化。本研究的一个观察结果是,考虑基于时间表的优化的混合方法是最大化短期目标的最佳方法,而基于规则的FM优化是长期目标函数改进的最佳选择。这种混合方法有助于提高将优化结果应用于现场作业指南的实用性。该研究使用概念和全油田Tengiz模型测试了几种优化技术,实现了一些技术在许多现场控制参数中的实用性。然而,所有这些优化技术都需要超过2000次的模拟运行才能达到最优结果,由于计算时间的限制,这对于本研究来说是不现实的。观察到,通过进行500次模拟运行,将控制参数限制在50左右有助于实现目标函数的最佳结果。这些有限数量的参数是从流量诊断和重要分析中选择的,这些参数来自原始的800多个控制参数池。本研究的新颖之处包括三个方面:1)本研究获得的基于模型的优化结果已在现场作业中实施,并观察到采收率的提高;2)调度和操作规则的混合优化在优化性能和应用于现场作业方面提供了实用性;3)提供了从传统遗传算法到机器学习支持技术等优化技术应用的经验教训。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Injection and Production Optimization for Tengiz Platform Sour Gas Injection by Reactive and Proactive Conformance Completions Control
Sour gas injection operation has been implemented in Tengiz since 2008 and will be expanded as part of a future growth project. Due to limited gas handling capacity, producing wells at high GOR has been a challenge, resulting in potential well shutdowns. The objective of this study was to establish an efficient optimization workflow to improve vertical/areal sweep, thereby maximizing recovery under operation constraints. This will be enabled through conformance control completions that have been installed in many production/injection wells. A Dual-Porosity and Dual-Permeability (DPDK) compositional simulation model with advanced Field Management (FM) logic was used to perform the study. Vertical conformance control was implemented in the model enabling completion control of 4 compartments per well. A model-based optimization workflow was defined to maximize recovery. Objective functions considered were incremental recovery 1) after 5 years, and 2) at the end of concession. Control parameters considered for optimization are 1) injection allocation rate, 2) production allocation rate, 3) vertical completion compartments for injectors and producers. A combination of different optimization techniques e.g., Genetic Algorithm and Machine-Learning sampling method were utilized in an iterative manner. It was quickly realized that due to the number of mixed categorical and continuous control parameters and non-linearity in simulation response, the optimization problem became almost infeasible. In addition, the problem also became more complex with multiple time-varying operational constraints. Parameterization of the control variables, such as schedule and/or FM rules optimization were revisited. One observation from this study was that a hybrid approach of considering schedule-based optimization was the best way to maximize short term objectives while rule-based FM optimization was the best alternative for long term objective function improvement. This hybrid approach helped to improve practicality of applying optimization results into field operational guidelines. Several optimization techniques were tested for the study using both conceptual and full-field Tengiz models, realizing the utility of some techniques that could help in many field control parameters. However, all these optimization techniques required more than 2000 simulation runs to achieve optimal results, which was not practical for the study due to constraints in computational timing. It was observed that limiting control parameters to around 50 helped to achieve optimal results for the objective functions by conducting 500 simulation runs. These limited number of parameters were selected from flow diagnostics and heavy-hitter analyses from the pool of original 800+ control parameters. The novelty of this study includes three folds: 1) The model-based optimization outcome obtained in this study has been implemented in the field operations with observation of increased recovery 2) the hybrid optimization of both schedule and operation rule provided practicality in terms of optimization performance as well as application to the field operation 3) provides lessons learned from the application of optimization techniques ranging from conventional Genetic Algorithm to Machine-Learning supported technique.
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