利用遗传算法选择采收率最大化的最优水/气混合注入方案

S. Kord, Omid Ourahmadi, Arman Namaee-Ghasemi
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引用次数: 0

摘要

油藏的生产策略对油田的优化开发具有重要的意义,可以最大限度地提高采收率和经济效益。为此,自适应优化算法是必要的,因为大量的变量和穷举模拟运行所需的过多时间。因此,本文采用遗传算法(GA),目标函数定义为净现值(NPV)。在开发了合适的程序代码并与商业模拟器耦合后,使用合成储层确保了代码的准确性。随后,该方案被应用于伊朗西南部的一个油藏,以获得一次和二次生产的最佳方案。研究了不同的水/气混合注入方案,优化了每口井的井型、井数、井配合/井位和流量(生产/注入)。比较了这两种方案的结果,发现同时注入水和气(SWAG)具有最高的总体利润,其NPV约为281亿美元。自动化优化程序的应用可以在更少的时间消耗下包含额外的决策变量,从而进一步推动优化项目的范围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Selection of an Optimal Hybrid Water/Gas Injection Scenario for Maximization of Oil Recovery Using Genetic Algorithm
Production strategy from a hydrocarbon reservoir plays an important role in optimal field development in the sense of maximizing oil recovery and economic profits. To this end, self-adapting optimization algorithms are necessary due to the great number of variables and the excessive time required for exhaustive simulation runs. Thus, this paper utilizes genetic algorithm (GA), and the objective function is defined as net present value (NPV). After developing a suitable program code and coupling it with a commercial simulator, the accuracy of the code was ensured using a synthetic reservoir. Afterward, the program was applied to an Iranian southwest oil reservoir in order to attain the optimum scenario for primary and secondary production. Different hybrid water/gas injection scenarios were studied, and the type of wells, the number of wells, well coordination/location, and the flow rate (production/injection) of each well were optimized. The results from these scenarios were compared, and simultaneous water and gas (SWAG) injection was found to have the highest overall profit representing an NPV of about 28.1 billion dollars. The application of automated optimization procedures gives rise to the possibility of including additional decision variables with less time consumption, and thus pushing the scopes of optimization projects even further.
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