首页> 外文会议>Society of Petroleum Engineers Annual Technical Conference and Exhibition >Permeability Estimation Using a Hybrid Genetic Programming and Fuzzy/Neural Inference Approach
【24h】

Permeability Estimation Using a Hybrid Genetic Programming and Fuzzy/Neural Inference Approach

机译:使用混合遗传编程和模糊/神经推理方法的渗透率估计

获取原文

摘要

We have developed a methodology that provides permeability estimates for all rock-types or lithologies, for a wide range of permeability. This is a hybrid Genetic Programming and Fuzzy/Neural Net inference system and which utilizes lithologic and permeability facies as indicators. This work was motivated by a need to have a volumetric estimate of permeability for reservoir modeling purposes. To this end, for our purposes,the inputs to this process are limited to properties that can be estimated from seismic data. The permeability transform is first estimated at the well locations using core permeability, elastic parameter logs and porosity. The output from the process can then be used, in conjunction with estimates of these properties from 3D seismic data, to provide an estimate of permeability on a volume basis. The inputs are then, the volume of shale (Vsh) or any other log type used to determine lithology, the sonic and density logs, the porosity log and core permeab ility measurments. The transform system is composed of three distinct modules. The first module serves to classify lithology and separates the reservoir interval into user-defined lithology types. The second module, based on Genetic Programming, is designed to predict permeability facies within lithology type. A permeability facies is defined as as a low, medium or high permeability set associated with each lithology type. A Fuzzy/Neural Net inference algorithm makes up the third module of the system, in which a TSK fuzzy logic relationship is formed, for each permeability facies and lithology. The system has been applied in two oil fields, both offshore West Africa. In comparison with current estimation approaches, this system yields more consistent estimated permeability. The results from conducting cross-validation suggest this methodology is robust in estimating permeability in complex heterogeneous reservoirs. This system is designed to use elastic log properties inverted from seismic data, such as acoustic velocity and density as input so permeability volume can be obtained.
机译:我们开发了一种提供所有岩石类型或岩石的渗透率估计的方法,用于广泛的渗透性。这是一个混合遗传学编程和模糊/神经网络推理系统,其利用岩性和渗透相作为指标。这项工作是由于需要具有用于储层建模目的的渗透性的体积估计。为此,为了我们的目的,对该过程的输入限于可以从地震数据估计的属性。首先使用核心渗透率,弹性参数日志和孔隙率在井位置估计渗透性变换。然后可以与来自3D地震数据的这些特性的估计一起使用来自该过程的输出,以便在体积的基础上提供渗透率的估计。然后,输入的输出(VSH)的体积或用于确定岩性的任何其他日志类型,声波和密度日志,孔隙率对数和核心PERMEA ISTILES测量。变换系统由三个不同的模块组成。第一模块用于对岩性进行分类并将储库间隔分离为用户定义的岩性类型。基于遗传编程的第二模块旨在预测岩性类型内的渗透性相位。渗透性相定义为与每个岩性类型相关联的低,中或高渗透率组。模糊/神经网络推理算法构成了系统的第三模块,其中形成了每个渗透相和岩性的TSK模糊逻辑关系。该系统已应用于两种油田,遍布西非。与电流估计方法相比,该系统产生更一致的估计渗透性。通过进行交叉验证的结果表明该方法在复杂异构储层中的渗透性方面是稳健的。该系统旨在使用从地震数据反转的弹性对数特性,例如声速和密度作为输入,以便可以获得渗透率。

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