Optimization of Oil Field Development using a Surrogate Model: Case of Miscible Gas Injection

M. Simonov, A. Shubin, A. Penigin, D. Perets, E. Belonogov, A. Margarit
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引用次数: 6

Abstract

The topic of the paper is an approach to find optimal regimes of miscible gas injection into the reservoir to maximize cumulative oil production using a surrogate model. The sector simulation model of the real reservoir with a gas cap, which is in the first stage of development, was used as a basic model for surrogate model training. As the variable (control) parameters of the surrogate model parameters of gas injection into injection wells and the limitation of the gas factor of production wells were chosen. The target variable is the dynamics of oil production from the reservoir. A set of data has been created to train the surrogate model with various input parameters generated by the Latin hypercube. Several machine learning models were tested on the data set: ARMA, SARIMAX and Random Forest. The Random Forest model showed the best match with simulation results. Based on this model, the task of gas injection optimization was solved in order to achieve maximum oil production for a given period. The optimization issue was solved by Monte Carlo method. The time to find the optimum based on the Random Forest model was 100 times shorter than it took to solve this problem using a simulator. The optimal solution was tested on a commercial simulator and it was found that the results between the surrogate model and the simulator differed by less than 9%.
用替代模型优化油田开发:以混相注气为例
本文的主题是利用替代模型找到油藏注混相气的最佳方案,以最大限度地提高累积产油量。以处于开发第一阶段的真实含气顶油藏扇形模拟模型为基础模型进行代理模型训练。作为替代模型的可变(控制)参数,选取了注气井注气参数和生产井含气系数限值。目标变量是油藏产油量的动态变化。已经创建了一组数据,用拉丁超立方体生成的各种输入参数训练代理模型。在数据集上测试了几个机器学习模型:ARMA, SARIMAX和Random Forest。随机森林模型与仿真结果吻合较好。在此模型的基础上,解决了给定周期内以最大产油量为目标的注气优化问题。采用蒙特卡罗方法求解优化问题。基于随机森林模型找到最优的时间比使用模拟器解决这个问题的时间短100倍。在商业模拟器上对最优解进行了测试,发现代理模型与模拟器的结果相差不到9%。
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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