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Insights Into Tuning of Equations of State Models of Natural Gas (LNG CNG) and Liquefied Petroleum Gas (LPG) Bearing Petroleum Reservoir Fluids

机译:天然气(LNG和CNG)和液化石油气(LPG)含石油储层流体的状态模型方程式调整的见解

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Gas condensates or retrograde gases are particularly valuable because they are primarily targeted for natural gas, propane and butane production, owing to their compositional characteristics, I.e., predominantly methane, appreciable intermediates and a small fraction of heavy hydrocarbons. Generally, these fluids originally exist in the reservoir in a single vapor phase at relatively high pressure and high temperature conditions. Although, a light condensate is produced on the surface, original fluid composition in the reservoir remains unchanged as long as the reservoir pressure is higher than the dew point pressure. Continued pressure depletion below the dew point causes the condensate (retrograde) to appear also in the reservoir and production tubing, which hampers the overall productivity. These characteristics are primarily attributed to composition, prevalent pressure, temperature and phase behavior. Equations of state (EOS) models are routinely employed to model the phase behavior of gas condensates. However, considering the compositional disparity (high methane and low heavy component mole fraction) and uncertainty in characterizing the heavy components; EOS modeling offers a significant challenge, which is handled by characterizing the heavy components and/or by tuning the models. The performance of the characterized fluid is tested by comparing the predicted values and experimental data such as dew point and constant volume depletion (CVD) liquid drop out. Tuning consists of adjusting input data to an EOS, for e.g., to match the measured dew point; the tuned model is then applied to predict the phase behavior and properties at other conditions. However, tuning is not trivial considering the number of input data available to achieve an adjusted model especially considering the fact that an incorrectly tuned model may have negative consequences. This paper specifically deals with tuning of EOS models and offers practical insights into tuning on the basis of a popularly used Peng-Robinson EOS, for application to gas condensates. The study presented in this paper is based on eleven different gas condensates of diverse overall compositions and extensive experimental data. The results obtained during the course of this study indicate that the most effective and reliable tuning is achieved by characterization of the heavy end and small adjustment in the critical temperature of the extended heavy end plus fraction. We believe that the results presented are of significant importance in the recovery of hydrocarbon components that yield natural gas, which can be converted to LNG or CNG, and LPG for shipping, transportation or direct end use as a fuel.
机译:气体冷凝物或逆行气体特别有价值,因为它们的组成特征(主要是甲烷,明显的中间产物和一小部分重烃)主要针对天然气,丙烷和丁烷的生产。通常,这些流体最初在相对高压和高温条件下以单一蒸气相存在于储层中。尽管在表面上会产生少量冷凝水,但只要储层压力高于露点压力,储层中的原始流体成分就不会改变。压力持续降低至露点以下会导致凝结水(逆行)也出现在储层和生产管道中,这会降低整体生产率。这些特征主要归因于组成,普遍压力,温度和相行为。通常采用状态方程(EOS)模型对气体冷凝物的相态进行建模。但是,考虑到组成差异(甲烷含量高,重组分摩尔分数低)和重组分表征的不确定性; EOS建模提出了一项严峻的挑战,这可以通过特征化重型组件和/或通过调整模型来解决。通过比较预测值和实验数据(例如露点和恒定体积消耗(CVD)液体滴落)来测试表征流体的性能。调整包括将输入数据调整到EOS,例如以匹配测得的露点;然后将调整后的模型应用于预测其他条件下的相态和特性。但是,考虑到可用于获得调整后的模型的输入数据的数量,调整并不是一件容易的事,尤其是考虑到错误调整的模型可能会带来负面影响的事实。本文专门介绍了EOS模型的调整,并提供了在流行的Peng-Robinson EOS的基础上进行调整的实用见解,可应用于凝析气。本文提出的研究基于11种不同的气体冷凝物,这些冷凝物具有不同的整体组成和广泛的实验数据。在此研究过程中获得的结果表明,最有效和最可靠的调节是通过表征重馏分和对扩展的重馏分加馏分的临界温度进行少量调整来实现的。我们认为,所提出的结果对于回收可产生天然气的碳氢化合物组分具有重要意义,该天然气可转化为LNG或CNG,以及用于运输,运输或直接用作燃料的LPG。

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