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Connectionist approach estimates gas-oil relative permeability in petroleum reservoirs: Application to reservoir simulation

机译:连通论方法估算石油储层中油气相对渗透率:在储层模拟中的应用

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摘要

Relative permeability of the petroleum reservoirs is a key parameter for various aspects of the petroleum engineering area like as reservoir simulation, history matching and etc. Due to this fact, various approaches such as experimental, theoretical and numerical approaches have been studied however; such experimental methods are time consuming, complicated and expensive. Based on the addressed disadvantages, robust, rapid, simple and accurate model is needed to represent gas/oil relative permeability through petroleum reservoirs. In this research communication we utilized the concept of various intelligent approaches such as least square support vector machine (LSSVM) which is high attended branches of artificial intelligent approaches. To develop and test the proposed LSSVM approach massive experimental relative permeability data from literature survey was faced to the addressed model. The suggested LSSVM method has low deviation from relevant measured values and statistical factors of the addressed model solutions were calculated. According to the determined statistical factors, the results of the proposed LSSVM approach prove and certify the high performance and low uncertainty of the addressed model in prediction gas/oil relative permeability in petroleum reservoirs. Finally, the suggested LSSVM model could help us to prepare more precise and accurate relative permeability curves without extensive experiment and furthermore, could lead to provide high performance reservoir simulation with low uncertainty.
机译:石油储层的相对渗透率是石油工程领域各个方面的关键参数,例如储层模拟,历史匹配等。因此,已经研究了各种方法,例如实验方法,理论方法和数值方法。这种实验方法耗时,复杂且昂贵。基于所解决的缺点,需要鲁棒,快速,简单和准确的模型来表示通过石油储层的气/油相对渗透率。在本研究通讯中,我们利用了各种智能方法的概念,例如最小二乘支持向量机(LSSVM),它是人工智能方法的高参与度分支。为了开发和测试所提出的LSSVM方法,将来自文献调查的大量实验相对渗透率数据面向该模型。建议的LSSVM方法与相关测量值的偏差小,并且可以计算出所寻址模型解决方案的统计因子。根据确定的统计因素,所提出的LSSVM方法的结果证明并证明了该模型在预测油气藏中气/油相对渗透率方面的高性能和低不确定性。最后,所建议的LSSVM模型可以帮助我们在不进行大量实验的情况下制备出更精确,相对准确的相对渗透率曲线,进而可以提供具有低不确定性的高性能油藏模拟。

著录项

  • 来源
    《Fuel》 |2015年第15期|429-439|共11页
  • 作者

    Mohammad Ali Ahmadi;

  • 作者单位

    Department of Petroleum Engineering, Ahwaz Faculty of Petroleum Engineering, Petroleum University of Technology (PUT), P.O. BOX: 63431, Ahwaz,Iran;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Relative permeability; LSSVM; Genetic algorithm; Porous media;

    机译:相对磁导率LSSVM;遗传算法多孔介质;

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