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Prediction of the Gas Compressibility Factor Using Coefficient-Matrices Based on ANN

机译:基于ANN的系数矩阵预测气体可压缩因子

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Gas compressibility factor (Z-factor) is an important parameter that is widely used in petroleum and chemical engineering. An accurate and fast calculation of this parameter is of crucial importance and is used as an essential input in petroleum reservoir simulation. The Standing-Katz chart was published in 1942 and it has been considered an industry standard for the gas compressibility factor. Several methods have been developed to calculate z-factor by correlations such as the one proposed by Brill-Beggs. Other methods such as Dranchuk and Abou-Kassem (DAK) use iterative-based solutions. The DAK correlation gives most reliable fit to the experimental data along with a low average percentage error compared with those from other methods. However, for high values, the DAK correlation fails with very high error compared with the experimental data. In this study, artificial neural networks (ANN) are used to predict Z-factor. Data used for constructing the Standing-Katz charts and. experimental data from the literature were used to build the ANN model and evaluate the quality of the new model compared with the other methods. Data used for constructing the Standing-Katz and Katz compressibility charts were used in constructing the neural networks model. 70% of the data was used for training, 15% for validation, and the remaining 15% for testing. The experimental data collected from the literature was given as a new data to test the quality of the model. The ANN model constructed using the DAK correlation gave an average absolute percentage error of 0.197 for testing; this value is better than that given by the DAK correlation. The error evaluated using the experimental data for ANN model is very low compared with the DAK correlation.and those presented in the literature. In addition, a mathematical model is generated from the ANN model that can be used easily to determine the Z-factor at any conditions.
机译:气体可压缩因子(Z因子)是广泛应用于石油和化学工程的重要参数。对该参数的准确和快速计算至关重要,用作石油储层模拟中的基本投入。常设卡茨图表于1942年发布,已被认为是气体压缩因子的行业标准。已经开发了几种方法来计算Z-Fact,如Brill-Begg所提出的相关性。其他方法,如Dranchuk和Abou-Kassem(Dak)使用基于迭代的解决方案。 DAK相关性使得最可靠的拟合实验数据以及与其他方法的误差相比的低平均百分比误差。然而,对于高值,与实验数据相比,DAK相关性具有非常高的误差。在该研究中,人工神经网络(ANN)用于预测Z因子。用于构建站立式κό梵图和的数据。来自文献的实验数据用于构建ANN模型,与其他方法相比,评估新模型的质量。用于构造立式KATZ和KATZ可压缩性图表的数据用于构建神经网络模型。 70%的数据用于培训,验证15%,其剩余的测试持续15%。从文献中收集的实验数据被给出为测试模型质量的新数据。使用DAK相关构建的ANN模型具有0.197的平均绝对百分比误差进行测试;该值优于Dak相关性的更好。与ANN模型的实验数据评估的误差与DAK相关相比非常低。在文献中提出的那些。另外,从ANN模型生成数学模型,该模型可以容易地用于在任何条件下确定Z因子。

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