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Getting Back to Basics:Using Routine Drilling Mud Logging Data for Reservoir Characterization

机译:返回基础知识:使用储层特征的常规钻井泥浆测井数据

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Reservoir characterization in unconventional reservoirs can be problematic due to the magnitude of uncertainties in the measurements being made.While significant advances continue to be made in logging tool capabilities and the integration of detailed core and petrophysical analyses,the utilization of these results on a routine basis for reservoir characterization during development using horizontal drilling is cost prohibitive.Additionally,time delays in obtaining results from core analysis make this approach inappropriate for operational situations. Detailed reservoir characterization in horizontal wells to design targeted hydraulic fracture stimulation is a fundamental aspect of Saudi Aramco’s forward plan for developing unconventional shale and tight gas sand reservoirs.A method by which detailed reservoir characterization can be undertaken in a cost-effective and timely manner is required. This paper describes the results from the trial testing of the Geological Differential Method(GDM).The trial uses routine drilling parameters,mud gas data,lithology data and associated core calibrated petrophysical analyses from multiple(model) wells to determine routine petrophysical properties such as porosity and fluid/gas volumes in unknown(prediction)wells. This new technique is fundamentally different from existing neural networks and other statistical based systems.Rather than using input data to provide a basis for informed inference or extrapolation,GDM uses the input data as part of a predictive process.This paper summarizes the work flows and results of three separate projects involving nine lower Paleozoic exploration wells and a variety of unconventional targets(shale and tight gas sands).We describe the work flows in general and show comparisons between reservoir characteristics determined by routine petrophysical analysis and predictions using the GDM for three separate blind tests. As with any model driven analysis,the answers are only as good as the input data.Due to uncertainty over how to petrophysically obtain the desired outputs for the shale model wells,work on the shales was halted early in the program. Subsequently,testing has successfully shown that we were able to relatively quickly(within 2-3 weeks)develop a predictive model,which could,within reason,predict basic reservoir characteristics for tight gas sands from routine drilling parameters, mud gas and lithology data.While further input data preparation is required,initial results provided significant encouragement and highlighted the potential of this technique for both real-time and post-drilling analysis.
机译:在非常规气藏储层表征可能是有问题的是由于测量的不确定性是made.While显著的进步继续在测井仪器的功能和详细的核心和岩石物理分析的集成,这些结果在常规基础上的利用率进行的大小对于采用水平钻井技术在开发过程中储层表征是成本prohibitive.Additionally,在获取岩心分析结果的时间延迟使这种方法不适合操作的情况。在水平井详细油藏描述到设计靶向水力压裂是沙特石油公司对开发非常规页岩和致密气砂reservoirs.A方法前进计划通过该详细储层表征可以以成本有效和及时的方式进行的一个基本方面是必需的。本文描述从地质微分法的试验测试(GDM)。该试验使用常规的钻井参数,泥浆气体数据,岩性数据,并从多个(模型)校准的岩石物理分析相关联的芯孔中,以确定例程岩石物理性质,如结果孔隙度和流体/气体体积在未知的(预测)的孔中。这种新技术是从现有的神经网络和其它统计基于systems.Rather比使用输入数据,以提供知情推理或外推的基础根本不同,GDM使用输入数据作为预测process.This纸的部分总结的工作流程和的涉及九名下古生界勘探井和多种非传统目标(页岩和致密砂岩)。我们描述了工作在一般流入并显示储层特性之间的比较来确定通过常规岩石物理分析和预测利用GDM三个三个独立的项目结果单独的盲测。如同任何模型驱动的分析,答案是唯一的好,因为输入data.Due不确定性在如何petrophysically获得页岩模型井所需的输出,对页岩工作在项目早期停止。随后,测试成功表明,我们能够比较快(2-3周内)发展的预测模型,这可能会在合理范围内,预测的基本储层特征从常规钻井参数,泥浆气体和岩性数据致密砂岩气藏。虽然需要进一步的输入数据准备,初步结果提供显著鼓励和强调该技术既用于实时和钻孔后分析的潜力。

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