储层模型初始化多样本垂直组成变化

Nour El Droubi, S. Tahir, K. Ghorayeb, Shi Su, Georges Assaf, Samat Ramatullayev, C. Kloucha, Hussein Mustapha
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引用次数: 0

摘要

油藏建模中一个具有挑战性的步骤是捕捉流体成分变化。这是一项复杂的任务,因为从油藏不同区域的井中采集的流体样本通常具有很大的面积和垂直成分变化。在多个样品存在的情况下,模拟具有代表性的成分随深度的变化对于储层模拟和油气初步评估至关重要,但另一方面,这也是一项具有挑战性的技术任务。在本文中,我们提出了一个集成在商业勘探和生产(E&P)软件中的自动化工作流程,用于解决多种流体样品的储层模拟模型初始化中的成分变化问题。成分随深度的变化需要一个深度窗口、深度点的数量、成分、温度、压力和所有流体样品的参考深度。使用特定的状态方程(EoS),根据热力学平衡的吉布斯条件,对每个流体样品进行成分随深度的变化,从而执行工作流。这一步的输出是每个流体样本的成分随深度分布的变化。最后,将每个模型的结果与所有现有流体样品的数据进行比较,选择最佳匹配模型。在油藏中使用特定的EoS和几种流体样品对所提出的工作流程进行了测试。每个流体样品都产生一个随深度模型的成分变化。在接下来的步骤中,通过计算模型与每个流体样本之间的平均误差来评估所有模型。最后,选取最优匹配模型,并对结果进行评价。结果表明,最佳匹配模型能够准确预测大量流体样品的压力和饱和压力。该工作流程还集成到业界领先的E&P建模软件平台中,作为自动化功能输出所需文件,以执行初始化和动态油藏模型的平衡。捕捉储层流体组成变化是储层建模的重要步骤。提出了一种自动化的工作流程,可以生成多个样本的最佳匹配成分变化与深度模型。使用传统方法,这是一个具有挑战性且耗时的步骤,因为从油藏不同区域的井中采集的流体样品可能具有显着的面积成分变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vertical Composition Variation with Multiple Samples for Reservoir Model Initialization
A challenging step in reservoir modeling is capturing fluid composition variation. This is a complex task as fluid samples taken from wells in different areas of the reservoir usually have large areal and vertical compositional variation. Modeling representative composition variation with depth in the presence of multiple samples is critical for reservoir simulation and hydrocarbon initially in place assessment, and, on the other hand, a technically challenging task. In this paper, we present an automated workflow integrated in a commercial exploration and production (E&P) software that addresses compositional variation for reservoir simulation model initialization for multiple fluid samples. Composition variation with depth requires a depth window, number of depth points, composition, temperature, pressure and reference depth for all fluid samples. Using a specific equation of state (EoS), the workflow is executed for every fluid sample by performing compositional variation with depth based on Gibbs conditions for thermodynamic equilibrium. The output of this step is a composition variation with depth distribution for every fluid sample. Finally, the best-matching model is chosen by comparing each model results with the data for all existing fluid samples. The proposed workflow was tested using a specific EoS in a reservoir with several fluid samples. One composition variation with depth model was generated for every fluid sample. In the next step, all models were evaluated by calculating the average errors between the model and each fluid sample. Finally, the best-matching models were selected, and the results were evaluated. It was observed that the best-matching models were able to accurately predict the pressure and saturation pressure for large number of fluid samples. The proposed workflow was also integrated into an industry-leading E&P modeling software platform to serve as an automated functionality that outputs the required files to perform initialization with equilibration of the dynamic reservoir model. Capturing fluid composition variation in the reservoir is an important step in reservoir modeling. The proposed work presents an automated workflow that generates the best-matching composition variation with depth model for multiple samples. Using traditional approaches, this is a challenging and time-consuming step as fluid samples taken from wells in different areas of a reservoir can have significant areal compositional variation.
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