粒子群优化
喷油器
石油工程
尼日尔三角洲
差异进化
储层模拟
油田
注入井
石油生产
环境科学
提高采收率
净现值
计算机模拟
计算机科学
数学优化
三角洲
模拟
工程类
生产(经济)
数学
算法
机械工程
航空航天工程
经济
宏观经济学
作者
Idahosa Osahon Ehibor,Gbenga Maku,Magnus Amafuna,Suraju Oyekade,Johnson Agbo,Eresinkumo Goodhead,O. Ogbe David,Emeka Emmanuel Okoro,Olalekan Olafuyi
出处
期刊:SPE Nigeria Annual International Conference and Exhibition
日期:2024-08-05
摘要
Abstract Efficient development tactics for oil fields, including well placement, pattern, and quantity, are critical to optimizing oil and gas production yields in mature reservoirs worldwide. However, because of the different API density of the crude oils in the reservoir, enormous number of grid blocks and multiple proxy tests that must be generated, optimizing well placement becomes difficult for reservoirs with significantly larger areal extent. The objective of this study is to optimize the placements of injector and producer wells in the Field XY field, a heavy oil reservoir under chemical flooding and production in the Niger- Delta region, adopting NPV as the objective function. The optimal configurations of the injection and producer wells are chosen using the differential evolution approach and particle swarm optimization techniques. The technique was programmed for the numerical simulator CMG STARS. The outcomes of the numerical simulation is produced by the CMOST AI-based CMG artificial intelligence optimization technique. The EOR project's net present value has increased by 57%, according to the optimization method's results. Additionally, following production and injection during a 20-year simulation period, the differential evolution optimization method outperformed the particle swarm optimization.
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