Development of a new empirical correlation for predicting formation volume factor of reservoir oil using artificial intelligence

Венеровна Шакирова, Александр Андреевич Александров, Михаил Вячеславович Семыкин, Elvira V. Shakirova, Aleksandr A. Aleksandrov, M. V. Semykin
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引用次数: 1

Abstract

It is known that oil in reservoir conditions is characterized by the content of a certain amount of dissolved gas. As reservoir pressure decreases this gas is released from oil significantly changing its physical properties, primarily its density and viscosity. In addition, the oil volume also reduces, sometimes by 50–60 %. In this regard, when calculating reserves, it is necessary to justify the reduction amount of the reservoir oil volume when oil is extracted to the surface. For this purpose, the concept of formation volume factor of reservoir oil has been introduced. The formation volume factor of oil is considered one of the main characterizing parameters of crude oil. It is also required for modeling and predicting the characteristics of an oil reservoir. The purpose of the present work is to develop a new empirical correlation for predicting the formation volume factor of reservoir oil using artificial intelligence methods based on MATLAB software, such as: an artificial neural network, an adaptive neuro-fuzzy inference system, and a support vector machine. The article presents a new empirical correlation extracted from the artificial neural network based on 503 experimental data points for oils from the Eastern Siberia field, which was able to predict the formation volume factor of oil with the correlation coefficient of 0.969 and average absolute error of less than 1 %. The conducted study shows that the prediction accuracy of the desired parameter in the developed artificial intelligence model exceeds the accuracy of study results obtained by conventional statistical methods. Moreover, the model can be useful in the prospect of process optimization in field planning and development.
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基于人工智能的储层体积系数预测新经验关联方法的建立
已知储层条件下的油以一定数量的溶解气含量为特征。随着储层压力的降低,这些气体从石油中释放出来,显著改变了石油的物理性质,主要是密度和粘度。此外,油体积也会减少,有时会减少50 - 60%。在这方面,在计算储量时,有必要证明当石油开采到地面时,储层油体积的减少量。为此,引入了储层油地层体积系数的概念。原油的地层体积系数是原油的主要表征参数之一。它也需要建模和预测油藏的特征。本工作的目的是利用基于MATLAB软件的人工智能方法,如:人工神经网络、自适应神经模糊推理系统和支持向量机,建立一种新的经验关联预测储层油的地层体积因子。本文基于东西伯利亚油田503个实验数据点,利用人工神经网络提取了一种新的经验关联,能够预测石油的地层体积因子,相关系数为0.969,平均绝对误差小于1%。研究表明,所建立的人工智能模型对所需参数的预测精度超过了传统统计方法研究结果的精度。此外,该模型可用于现场规划和开发过程优化的前景。
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