...
首页> 外文期刊>The Saudi Aramco journal of technology >Forward Integration of Dynamic Data into 3D Static Modeling Significantly Improves Reservoir Characterization
【24h】

Forward Integration of Dynamic Data into 3D Static Modeling Significantly Improves Reservoir Characterization

机译:动态数据的向前集成到3D静态建模显着提高了储层特征

获取原文
获取原文并翻译 | 示例
           

摘要

Geomodeling is usually done to honor static data such as core data,well logs,and seismic acoustic impedance(AI)maps where available.Once the static geomodel is complete,history matching is carried out by tuning the static model properties until the model reproduces the observed dynamic behavior The objective of this article is to showcase how a systematic a-priori integration of dynamic elements into geomodeling eliminated the need for history matching.These dynamic elements are connected reservoir regions(CRRs)’ and permeability thickness(kh)interpretation from pressure transient analysis(PTA).This article also introduces the concept of CRR-based permeability modeling.CRRs were defined based on time-lapse shut-in pressure trend groups.Core and log data were grouped on the basis of the identified CRR and used to build CRR-based neural network models for predicting permeability logs of noncored wells within each CRR.The geomodeler then created two geo-realizations by using the permeability logs within each CRR to distribute permeability within the CRR using two assumptions of variogram lengths:(1)variogram range obtained from the analysis of limited core data,and(2)variogram range required to ensure intra-CRR connectivity.Pressure transient was simulated for wells with observed PTA data using the two realizations,and a comparison of the log-log plots of simulated pressure transient derivative and observed pressure transient derivative were used to determine the quality of each realization for each well.The realization that provided the least squares of error across all the wells was selected as a base case geomodel.Permeability correction coefficients were applied on the base case geomodel until PTA kh was acceptably matched.The resulting permeability log at the PTA well is referred to as a PTA corrected permeability log.Some cored wells were originally exempted from the neural network permeability modeling because they didn’t have logs(sonic,density,and neutron logs).Hybrid permeability logs were derived from a combination of the predicted permeability logs and core permeability at these well locations.All permeability correction logs(1)PTA corrected permeability logs,and(2)hybrid permeability logs,were then fed back into the geomodeling workflow to generate an improved permeability distribution,which respects core data,PTA kh,and CRRs.The do-nothing simulation run has more than 80% of the wells’ pressure data acceptably history matched.This application demonstrates that a-priori integration of dynamic elements like CRR,PTA kh,and the use of CRR-based permeability modeling results in a better characterized geomodel with the potential for eliminating the need for history matching.
机译:通常进行地理位置来尊重静态数据,如核心数据,井日志和地震声阻抗(AI)地图,其中静态地理位置完整,通过调整静态模型属性来执行历史匹配,直到模型再现观察到的动态行为本文的目的是展示动态元素的系统a-priorio如何将动态元素集成到地理典中消除了对历史匹配的需求。这些动态元素是连接的贮存器区域(CRR)'和渗透厚度(kh)从压力解释瞬态分析(PTA)。这篇文章还介绍了基于CRR的渗透性建模的概念。基于时间流逝关闭压力趋势组来定义了基于CRR的渗透性建模.Core和Log数据在识别的CRR的基础上分组并用于构建基于CRR的神经网络模型,用于预测每个CRR内的非频道井的渗透性日志。然后通过使用Mepeabil创建了两个地理实现每个CRR内的ITY日志在CRR中使用两个变速仪长度的假设分配渗透率:(1)从限量核心数据的分析获得的变速仪范围,(2)所需的变速仪范围,以确保CRR内连接。压力瞬态被模拟对于使用两种实现的观察到的PTA数据的孔,并且使用模拟压力瞬变衍生物和观察到的压力瞬变衍生物的日志记录曲线的比较来确定每个井的每个实现的质量。提供最小二乘的实现选择所有孔的误差被选为基础案例Geomodel.Pta Kh可接受地施加在基础案例晶片上的基础案例。PTA KH在PTA阱处被称为PTA校正的渗透性对数。有些核心井最初是免于神经网络渗透性建模,因为它们没有日志(声音,密度和中子日志)。从这些井位置的预测磁导率日志和核心渗透率的组合中得出的,渗透性渗透性日志。所有渗透性校正日志(1)PTA校正渗透性日志,然后将混合渗透性日志送回到地理调工作流程,以产生改进的渗透性分布,这尊重核心数据,PTA KH和CRR。DO-NOLE仿真运行的井仿真运行较多的80%以上的井的历史记录匹配。此应用程序演示了动态的a-priori集成CRR,PTA KH等元素,以及CRR基渗透性建模的使用导致更好的特征地典可,具有消除历史匹配的需求。

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