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Estimation of Lithofacies Proportions Using Well and Well Test Data

机译:使用试井和试井数据估算岩相比例

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A crucial step of the two commonly used geostatistical methods for modeling heterogeneous reservoirs : the sequential indicator simulation and the truncated Gaussian simulation is the estimation of the lithofacies local proportion (or probability density) functions. Well-test derived permeabilities show good correlation with lithofacies proportions around wells. Integrating well and well-test data in estimating lithofacies proportions could permit the building of more realistic models of reservoir heterogeneity. However this integration is difficult because of the different natures and measurement scales of these two types of data. This paper presents a two step approach to integrating well and well-test data into heterogeneous reservoir modeling. First lithofacies proportions in well-test investigation areas are estimated using a new kriging algorithm called KISCA. KISCA consists in kriging jointly the proportions of all lithofacies in a well-test investigation area so that the corresponding well-test derived permeability is respected through a weighted power averaging of lithofacies permeabilities. For multiple well-tests, an iterative process is used in KISCA to account for their interaction. After this, the estimated proportions are combined with lithofacies indicators at wells for estimating proportion (or probability density) functions over the entire reservoir field using a classical kriging method. Some numerical examples were considered to test the proposed method for estimating lithofacies proportions. In addition, a synthetic lithofacies reservoir model was generated and a well-test simulation was performed. The comparison between the experimental and estimated proportions in the well-test investigation area demonstrates the validity of the proposed method.
机译:对非均质油藏进行建模的两种常用地统计学方法的关键步骤:顺序指示剂模拟和截断的高斯模拟是估算岩相局部比例(或概率密度)函数。试井导出的渗透率与井周围的岩相比例显示出良好的相关性。整合井和试井数据以估算岩相比例可以允许建立更现实的储层非均质性模型。但是,由于这两种类型的数据的性质和度量范围不同,因此集成非常困难。本文提出了一种将油井和试井数据整合到非均质油藏建模中的两步法。使用一种称为KISCA的新克里金法,可以对经过良好测试的调查区域中的岩相比例进行估算。 KISCA包括在一个经过良好测试的研究区域中共同绘制所有岩相的比例,以便通过对岩相渗透率进行加权平均来尊重相应的由良好试验得出的渗透率。对于多次试井,KISCA中使用了一个迭代过程来说明它们的相互作用。此后,将估计比例与井中的岩相指标结合起来,以使用经典克里金法估算整个储层中的比例(或概率密度)函数。考虑了一些数值示例,以测试所提出的估算岩相比例的方法。此外,生成了一个合成岩相储层模型,并进行了试井模拟。在试井研究区的实验比例和估计比例之间的比较证明了该方法的有效性。

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