地震储层描述集成工作流的成功应用:从薄片到地震尺度

R. L. Tagliamonte, G. Carrasquero, M. Fervari, C. Tarchiani
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引用次数: 0

摘要

本文描述了一种新的集成工作流程,成功地弥合了不同测量尺度之间的差距,以表征碎屑储层。该工作流程结合了薄片、测井曲线和弹性曲线(Vp、Vs和Rho或这些曲线的任意组合),生成了一个石油弹性测井相分类,不仅可以校准岩心数据,同时也构成了地震反演分类和储层建模的共享关键输入。每当需要将地震属性用作地质模型中属性分布的驱动因素时,该工作流的应用就显得至关重要。考虑到地震分辨率的固有限制,推荐的测井相模型必须考虑到强大的岩石物理储层特征(孔隙度、渗透率),同时确保在弹性反演空间(例如P-Impedance Vs . Vp/Vs ratio)内以最少的类数进行最大程度的区分。在本文中,我们概述了建立综合测井相模型的框架,包括以下步骤:首先,通过聚类技术在薄片尺度上定义相模型。这代表了岩心支撑相分类的参考,而岩心支撑相分类又与沉积相相联系。分析了孔隙度-渗透率关系,因为它代表了两种相模型的共同岩石物理领域:薄片和岩心数据。当移动到测井尺度时,“孔隙-渗透”关系得以保留,在测井尺度下,生成的是具有少量类的石油弹性测井相模型。其次,进行地层评价(FE)是为了提供一个简单、通用和稳健的岩石物理模型,不仅对储层表征至关重要,而且还可以作为专用岩石物理模型(RPM)的输入,该模型将岩石物理和地震速度联系起来。FE和RPM相互调整,直到优化。之后,为了生成不受油气影响的地层类别,进行流体替代建模,生成盐水条件下的合成弹性曲线,这些曲线与孔隙度和矿物体积一起输入到相分类中。该过程不断迭代,直到在岩石物理(如孔隙度与渗透率)、石油弹性(如孔隙度与Vp/Vs比)和地震反演的弹性空间(如p阻抗与Vp/Vs比)中同时识别出几个测井相。最后,一旦在测井尺度上定义了测井相类型,我们就可以使用专用技术将石油弹性测井相扩展到地震域,以及岩石物理和弹性曲线。测井相是地质建模和岩石物性分布支持的硬数据,相应的放大测井相曲线用于填充地震弹性属性分类到相概率的模板。在开发井较少的超深水油田的成功应用,证明了将所有可用数据从薄片到地震尺度整合到储层表征中的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Successful Application of an Integrated Workflow for Seismic Reservoir Characterisation: From Thin Sections to Seismic Scale
This paper describes a new integrated workflow that successfully bridges the gap between different measurement scales to characterise a clastic reservoir. This workflow combines thin sections, well logs and elastic curves (Vp, Vs and Rho or any combination of these) to generate a petro-elastic log facies classification that is not only calibrated to core data, but at the same time constitutes a shared key input for seismic inversion classification and reservoir modelling. The application of this workflow is deemed crucial whenever seismic attributes are required to be used as a driver for properties distribution within a geological model. Given the inherent constraint of the seismic resolution, the recommended logfacies model has to honour a robust petrophysical reservoir characterisation (porosity, permeability) while assuring the maximum discrimination within the elastic inversion space (e.g. P-Impedance vs. Vp/Vs ratio) with a minimum number of classes. In this paper, we outline a framework for building an integrated log facies model that includes the following steps: first, a facies model is defined at the scale of thin sections by means of a clustering technique. This represents the reference for a core-supported facies classification that in turn is linked to the sedimentological facies. A porosity-permeability relationship is analysed as it represents a common petrophysical domain for both facies models: thin sections and core data. The "poro-perm" relations are preserved when moving to log scale, where a petro-elastic log facies model is generated with a small number of classes. Secondly, Formation Evaluation (FE) is carried out to provide a simple, general and robust petrophysical model paramount not only for reservoir characterisation but also to be used as input for a dedicated Rock Physics Model (RPM), which links petrophysics and seismic velocities. FE and RPM are tuned one to the other until optimised. Thereafter, in order to generate classes that are not affected by hydrocarbon effects, fluid replacement modelling is performed to produce synthetic elastic curves in brine condition, that are input - together with porosity and volumes of minerals - to the facies classification. The procedure iterates until a few log facies are simultaneously discriminated in the petrophysical (e.g. Porosity vs. Permeability), petro-elastic (e.g. Porosity vs. Vp/Vs ratio) and in the elastic space of seismic inversion (e.g. P-Impedance vs. Vp/Vs ratio). Finally, once the log facies classes are defined at the well log scale, we use a dedicated technique to scale-up the petro-elastic log facies to the seismic domain, together with the petrophysical and the elastic curves. While the log facies are the hard data for geological modelling and support for petrophysical properties distribution, the corresponding upscaled log facies curves are used to populate the template for seismic elastic attributes classification to facies probabilities. The successful application to a green field in ultra-deep water environment, characterised by few development wells, proves the robustness of integrating all available data from thin sections to seismic scale in reservoir characterisation.
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