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Quantitative assessment of karst pore volume in carbonate reservoirs

机译:碳酸盐储层岩溶孔隙体积的定量评估

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摘要

Evaluating uncertainty in karst pore volume (K-PV) is a current industry challenge that is critical for field development planning and optimizing recovery. Hydrocarbon pore volume in karst can be significant in large super-giant fields. Although a wide variety of karst features and the geologic processes that describe their morphology have previously been described in many studies, understanding exactly how to translate this knowledge of karst into practical guidelines for the assessment of pore volume in carbonate reservoirs remains an industry challenge. In this paper, we present a robust model-assisted characterization workflow that integrates well data, seismic data (when available), drilling data, geologic concepts from modem and ancient outcrop analogs, and the application of discrete fracture network (DFN) technology to explicitly model karst features. These DFN models of karst serve as powerful visualization and communication tools in addition to quantifying the K-PV. The model-assisted characterization workflow presented is specifically designed for the rapid evaluation of multiple viable geologic scenarios in recognition of the inherent uncertainty in karst morphology, fill, and sampling bias. We present nomograms to facilitate fast practical estimates of karst abundance and porosity, as well as cave area estimates from volumes lost while drilling to help condition and validate the morphometric inputs used for modeling karst. A synthetic reservoir case study with varying degrees of karst that is interpreted to be coastal in origin is used to demonstrate the workflow.
机译:评估岩溶孔卷量(K-PV)的不确定性是目前对现场开发规划和优化恢复至关重要的行业挑战。在大型超巨大场中,喀斯特中烃孔体积可能是显着的。虽然在许多研究中已经描述了各种各样的喀斯特特征和描述它们的形态的地质过程,但究竟如何理解如何将喀斯特的知识转化为碳酸盐储层中孔隙体积评估的实际指南仍然是一个行业挑战。在本文中,我们提出了一种强大的模型辅助表征工作流程,可集成井数据,地震数据(当可用),钻探数据,从调制解调器和古代露出类似物的地质概念,以及明确的离散裂缝网络(DFN)技术的应用模型岩溶功能。除了量化K-PV之外,这些DFN型号的岩溶模型也用作强大的可视化和通信工具。提供的模型辅助表征工作流程专门用于识别喀斯特形态,填充和采样偏置的固有不确定性的多种可行地质场景的快速评估。我们提出了NOMAROMS,以促进喀斯特丰富和孔隙度的快速实际估计,以及钻探中损失的洞穴区域估计,以帮助条件并验证用于建模喀斯特的形态学输入。用不同程度的喀斯特喀尔斯特解释为沿海的岩石的合成储层案例研究用于展示工作流程。

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