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Development of a new workflow for pseudo-component generation of reservoir fluid detailed analysis: a gas condensate case study

机译:开发一种新的工作流,用于伪流体生成油藏流体的详细分析:凝析气案例研究

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摘要

In this work, a new automatic workflow for accurate optimal pseudo-component generation from gas condensate mixtures with a large number of components is presented. This workflow has a good insight into thermo-physical and critical properties and introduces only a small amount of loss of information and EOS flexibility. In this regard, the fuzzy clustering is used to classify the components in the mixture based on the similarities in the critical properties. The mixing rules are then applied to find group properties. Two different approaches for components association in clustering process are investigated with several numbers of groups. The mathematical validity of the groups is controlled with a proper validity index. The fluid phase behaviour is analysed to investigate the proposed workflow under physical feedback for different numbers of groups. The comparison of equilibrium calculations, for the extended and grouped mixtures shows a close agreement. The average absolute deviation percent (AAD%) from the extended analysis for the liquid dropout percent in constant volume depletion reaches to 0.32 for 20 groups and 0.93 for 14 groups. The AAD% for the gas compressibility factor over the pressure steps is 0.00 for 20 groups and 0.04 for 14 groups.
机译:在这项工作中,提出了一种新的自动工作流程,该流程可从具有大量组分的气体冷凝混合物中准确生成最佳伪组分。该工作流程对热物理和关键特性有很好的了解,并且仅引入了少量信息损失和EOS灵活性。在这方面,基于关键特性的相似性,使用模糊聚类对混合物中的成分进行分类。然后应用混合规则来查找组属性。研究了几种不同的组在聚类过程中组件关联的两种不同方法。各组的数学有效性由适当的有效性指标控制。分析了液相行为,以研究物理反馈下不同数量组的拟议工作流程。对于扩展的混合物和分组的混合物,平衡计算的比较显示出紧密的一致性。扩展分析中恒定体积消耗下的液体滴落百分比的平均绝对偏差百分比(AAD%)达到20组的0.32和14组的0.93。压力阶跃上的气体可压缩系数的AAD%对于20组为0.00,对于14组为0.04。

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