首页> 外文期刊>Journal of Petroleum Exploration and Production Technology >New proxy models for predicting oil recovery factor in waterflooded heterogeneous reservoirs
【24h】

New proxy models for predicting oil recovery factor in waterflooded heterogeneous reservoirs

机译:用于预测水上储层储存因子的新代理模型

获取原文
       

摘要

To predict the recovery factor (RF) in waterflooded layered oil reservoirs, two empirical relationships were derived. Both correlations use four independent variables. These are reservoir heterogeneity (characterized by permeability variation coefficient), permeability anisotropy (ratio of vertical to horizontal permeability), viscosity of the injected water, and water injection rate. One of the correlations estimates RF at water breakthrough time (RFBT) and the other evaluates RF at the end of project (RFEOP). Each correlation comes in an expanded form with more parameters and a reduced form with fewer parameters. Both models are based on the global linear model. Eclipse black-oil simulation was used to determine RF for generic reservoirs with different combinations of permeability variation, permeability anisotropy, injected water viscosities, and water injection rates. A total of 192 data sets have been generated. Out of these, 144 data sets (about 75% of the generated sets) were used for model development and 48 data sets (about 25% of the generated sets) were used for model testing and validation. The expanded forms of the new developed correlations gave reliable estimates of RFBT?and RFEOP?with absolute average percent difference (AAPCD) of 6.9 and 1.02, respectively. The reduced forms yielded slightly higher AAPCDs of 8.30 and 1.04, respectively. When tested against 48 simulation-generated data sets, the expanded forms yielded excellent fits for RFBT?and RFEOP?with AAPCDs of 14 and 6.5, respectively. The reduced forms showed comparable fit with AAPCDs of 16.9 and 6.70, respectively. The highest RFEOP?of 50.6% was achieved for a generic reservoir with a permeability variation in?V?=?0.1 and a permeability anisotropy of?kz/kx?=?1.0. This particular reservoir needs to be waterflooded using a water viscosity of?μw?=?1.0 cp and a water injection rate of?qi?= 10,000 bpd. Finally, when tested against the Guthrie–Greenberger and the API statistical study, using a single field data set, the proposed correlations gave higher absolute percent difference of 22.9 and 22.7 compared to 0.758 and 19.2 for Guthrie–Greenberger and the API statistical study, respectively.
机译:为了预测水上分层油储层中的恢复因子(RF),得出了两个经验关系。两个相关性都使用四个独立的变量。这些是储层异质性(以渗透性变异系数为特征),渗透性各向异性(垂直与水平渗透率的比率),注入水的粘度和注水速率。其中一个相关性估计水突破时间(RFBT)的RF,而另一个相关性在项目结束时评估RF(RFEOP)。每个相关性以扩展的形式出现,具有更多参数和减少的表单,参数较少。两种模型都基于全局线性模型。 Eclipse黑色油模拟用于确定具有不同渗透性变化,渗透性各向异性,注射水粘度和注水率的不同组合的通用储层RF。已经生成了总共192个数据集。除此之外,144个数据集(约75%的生成集)用于模型开发,48个数据集(约25%的生成集)用于模型测试和验证。新的发达相关形式的扩展形式具有RFBT的可靠估计值?和RFEOP?分别为6.9和1.02的绝对平均百分比(AAPCD)。减少的形式分别产生8.30和1.04的略高。当测试到48个模拟生成的数据集时,扩展形式对于RFBT具有出色的拟合件,并且RFEOP分别为14和6.5的AAPCDS。减少的形式显示出与AAPCDS分别为16.9和6.70的相当配合。最高的RFEOP?对于通用储存器实现了50.6%,具有渗透性变化?v?= 0.1和渗透性各向异性的Δkz/ kx?=?1.0。这种特定的水库需要使用βμw的水粘度来水上浇水?=Δ1.0cp和水注射率?qi?= 10,000 bpd。最后,当使用单场数据集对Guthrie-GreenBerger和AP​​I统计研究进行测试时,所提出的相关性较高的绝对百分比为22.9和22.7,而Guthrie-Greenberger和AP​​I统计研究分别相比为0.758和19.2 。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号