Integrated Reservoir Characterisation for Petrophysical Flow Units Evaluation and Performance Prediction

A. Evans, Aidoo Borsah Abraham, Brantson Eric Thompson
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引用次数: 4

Abstract

An improved understanding of complex clastic reservoirs has led to more detailed reservoir description using integrated approach. In this study, we implemented cluster analysis, geostatistical methods, reservoir quality indicator technique and reservoir simulation to characterize clastic system with complex pore architecture and heterogeneity. Model based clustering technique from Ward’s analytical algorithm was utilised to transform relationship between core and calculated well logs for paraflow units (PFUs) classification in terms of porosity, permeability and pore throat radius of the reservoir. The architecture of the reservoir at pore scale is described using flow zone indicator (FZI) values and the significant flow units characterized adopting the reservoir quality index (RQI) method. The reservoir porosity, permeability, oil saturation and pressure for delineated flow units were distributed stochastically in 2D numerical models utilising geostatistical conditional simulation. In addition, production behaviour of the field is predicted using history matching. Dynamic models were built for field water cut (FWCT), total field water production (FWPT) and field gas-oil-ratio (FGOR) and history matched, considering a number of simulation runs. Results obtained showed a satisfactory match between the proposed models and history data, describing the production behaviour of the field. The average FWCT peaked at 78.9% with FWPT of 10 MMSTB. Consequently, high FGOR of 6.8 MSCF/STB was obtained. The integrated reservoir characterisation approach used in this study has provided the framework for defining productive zones and a better understanding of flow characteristics including spatial distribution of continuous and discrete reservoir properties for performance prediction of sandstone reservoir.
岩石物性流动单元评价与动态预测综合储层表征
随着对复杂碎屑岩储层认识的提高,利用综合方法对储层进行了更详细的描述。采用聚类分析、地质统计学方法、储层质量指标技术和储层模拟等方法对具有复杂孔隙结构和非均质性的碎屑体系进行了表征。利用Ward分析算法中的基于模型的聚类技术对岩心和计算测井曲线之间的关系进行转换,根据储层的孔隙度、渗透率和孔喉半径对旁流单元(pfu)进行分类。利用流动区指标(FZI)值和储层质量指数(RQI)表征的显著流动单元描述了孔隙尺度下储层的结构。利用地质统计条件模拟技术,在二维数值模型中随机分布了圈定流动单元的储层孔隙度、渗透率、含油饱和度和压力。此外,利用历史匹配预测油田的生产动态。考虑到多次模拟运行,建立了油田含水率(FWCT)、油田总产量(FWPT)、油田气油比(FGOR)和历史匹配的动态模型。所获得的结果表明,所提出的模型与历史数据之间的匹配令人满意,描述了该油田的生产行为。平均FWCT峰值为78.9%,FWPT为10mmstb。因此,获得了6.8 MSCF/STB的高FGOR。本研究中使用的综合油藏表征方法为定义生产区域和更好地理解流动特征提供了框架,包括连续和离散油藏性质的空间分布,用于砂岩油藏的动态预测。
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