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Determination of dew point pressure in gas condensate reservoirs based on a hybrid neural genetic algorithm

机译:基于混合神经遗传算法的凝析气藏露点压力确定

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摘要

Knowing dew point pressure considers as one of the preliminary requirements in retrograde gas condensate reservoir simulations. When the pressure declines below the dew point pressure, the condensate dropouts form, which could lead to a substantial decrease in gas relative permeability and well deliverability. Different methods such as equation of states, empirical correlations and experimental procedures have been proposed to determine the dew point pressure. However, due to their convergence problem, being expensive and time consuming, great efforts have been taken to develop an alternative method. In this study, a new method based on artificial neural network has been developed and optimized by genetic algorithm as an evolutionary technique. A data set consists of 308 sample collected from different sources and literature including one of Iranian gas-condensate field is used. Reservoir temperature, mole percentage of gas components and heavy fractions properties were considered as input parameters to this model. The performance of the proposed model was compared with some of the common correlations and Peng-Robinson equation of state. The results confirmed the accuracy and capability of this model in determination of dew point pressure based on 2.46%. 3.66%, 95.91%, 0.02% and 24.39% as average absolute deviation, root mean square error, correlation of determination, minimum and maximum percentage error; respectively. The sensitivity analysis is also performed on variables to determine the impact and importance of each parameter on prediction of dew point pressure. The results show that plus fraction properties and C-3-C-4 fraction have the greatest positive and negative impacts on estimation of dew point pressure; respectively. (C) 2014 Elsevier B.V. All rights reserved.
机译:知道露点压力被认为是逆行凝析气藏模拟中的基本要求之一。当压力降至露点压力以下时,就会形成凝结水流失,这可能导致气体相对渗透率和完井能力大大下降。已经提出了诸如状态方程,经验相关性和实验程序之类的不同方法来确定露点压力。但是,由于它们的收敛性问题,既昂贵又费时,所以人们花了很大的努力来开发另一种方法。在这项研究中,已经开发了一种基于人工神经网络的新方法,并通过遗传算法作为一种进化技术对其进行了优化。数据集由从不同来源收集的308个样本组成,使用的文献包括伊朗的一种天然气凝析气田。储层温度,气体组分的摩尔百分数和重馏分性质被认为是该模型的输入参数。将该模型的性能与一些常见的相关性和Peng-Robinson状态方程进行了比较。结果证实了该模型基于2.46%的露点压力测定的准确性和能力。平均绝对偏差,均方根误差,测定的相关性,最小和最大百分比误差为3.66%,95.91%,0.02%和24.39%;分别。还对变量执行敏感性分析,以确定每个参数对露点压力预测的影响和重要性。结果表明,加馏分性质和C-3-C-4馏分对露点压力的估计具有最大的正和负影响。分别。 (C)2014 Elsevier B.V.保留所有权利。

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