首页> 外文期刊>Journal of Petroleum Science & Engineering >An optimization methodology of alkaline-surfactant-polymer flooding processes using field scale numerical simulation and multiple surrogates
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An optimization methodology of alkaline-surfactant-polymer flooding processes using field scale numerical simulation and multiple surrogates

机译:基于现场规模数值模拟和多种替代方法的碱性表面活性剂-聚合物驱工艺优化方法

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After conventional waterflood processes the residual oil in the reservoir remains as a discontinuous phase in the form of oil drops trapped by capillary forces and is likely to be around 70% of the original oil in placg (OOIP).The EOR method so-called alkaline-surfactant-polymer (ASP) flooding has proved to be effective in reducing the oil residual saturation in laboratory experiments and field projects through the reduction of interfacial tension and mobility ratio between oil and water phases. A critical step to make ASP floodings more effective is to find the optimal values of design variables that will maximize a given performance measure (e.g.,net present value,cumulative oil recovery) considering a heterogeneous and multiphase petroleum reservoir.Previously reported works using reservoir numerical simulation have been limited to sensitivity analyses at core and field scale levels because the formal optimization problem includes computationally expensive objective function evaluations (field scale numerical simulations).This work presents a surrogate-based optimization methodology to overcome this shortcoming. The proposed approach estimates the optimal values for a set of design variables (e.g.,slug size and concentration of the chemical agents) to maximize the cumulative oil recovery from a heterogeneous and multiphase petroleum reservoir subject to an ASP flooding.The surrogate-based optimization approach has been shown to be useful in the optimization of computationally expensive simulation-based models in the aerospace,automotive,and oil industries.In this work,we improve upon this approach along two directions:(i) using multiple surrogates for optimization,and (ii) incorporating an adaptive weighted average model of the individual surrogates. The cited approach involves the coupled execution of a global optimization algorithm and fast surrogates (i.e.,based on Polynomial Regression,Kriging,Radial Basis Functions and a Weighted Average Model) constructed from field scale numerical simulation data.The global optimization program implements the DIRECT algorithm and the reservoir numerical simulations are conducted using the UTCHEM program from the University of Texas at Austin. The effectiveness and efficiency of the proposed methodology is demonstrated using a field scale case study.
机译:在常规注水工艺之后,油藏中的残余油以毛细作用力捕获的油滴形式保留为不连续相,很可能约为压入原始油(OOIP)的70%.EOR方法称为碱性表面活性剂-聚合物(ASP)驱油通过降低界面张力和油水相之间的迁移率,被证明可有效减少实验室实验和现场项目中的油残余饱和度。考虑到非均质和多相石油储层,使ASP驱更有效的关键步骤是找到设计变量的最佳值,该变量将最大化给定的性能指标(例如,净现值,累积油采收率)。由于形式优化问题包括计算量大的目标函数评估(场规模数值模拟),因此模拟仅限于核心和领域尺度的敏感性分析。这项工作提出了一种基于替代的优化方法,以克服这一缺点。拟议的方法估算了一组设计变量(例如塞子的大小和化学试剂的浓度)的最佳值,以最大程度地利用ASP驱油从多相和多相石油储层中累积采油量。基于替代的优化方法已显示在航空航天,汽车和石油工业中基于计算的昂贵仿真模型的优化中非常有用。在这项工作中,我们在两个方向上对这种方法进行了改进:(i)使用多个代理进行优化,以及( ii)合并单个代理的自适应加权平均模型。引用的方法涉及全局优化算法的耦合执行和从现场规模数值模拟数据构造的快速替代方案(即,基于多项式回归,Kriging,径向基函数和加权平均模型)。全局优化程序实现了DIRECT算法使用德克萨斯大学奥斯汀分校的UTCHEM程序进行储层数值模拟。通过现场案例研究证明了所提出方法的有效性和效率。

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