Artificial Intelligence-based Predictive Technique to Estimate Oil Formation Volume Factor

S. Kalam, Mohammad Rasheed Khan, Rizwan Ahmed Khan
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Abstract

This investigation presents a powerful predictive model to determine crude oil formation volume factor (FVF) using state-of-the-art artificial intelligence (AI) techniques. FVF is a vital pressure-volume-temperature (PVT) parameter used to characterize hydrocarbon systems and is pivotal to reserves calculation and reservoir engineering studies. Ideally, FVF is measured at the laboratory scale; however, prognostic tools to evaluate this parameter can optimize time and cost estimates. The database utilized in this study is obtained from open literature and covers statistics of crude oils of the Middle East region. Multiple AI algorithms are considered, including Artificial Neural Networks (ANN) and Artificial Neural Fuzzy Inference Systems (ANFIS). Models are developed utilizing an optimization strategy for various parameters/hyper-parameters of the respective algorithms. Unique permutations and combinations for the number of perceptron and their resident layers is investigated to reach a solution that provides the most optimum output. These intelligent models are produced as a function of the parameters intrinsically affecting FVF; reservoir temperature, solution GOR, gas specific gravity, bubble point pressure, and crude oil API gravity. Comparative analysis of developed AI models is performed using visualization/statistical analysis, and the best model is pointed out. Finally, the mathematical equation extraction to determine FVF is accomplished with the respective weights and bias for the model presented. Graphical analysis is used to evaluate the performance of developed AI models. The results of scatter plots showed most of the points are lying on the 45 degree line. Moreover, during this study, an error metric is developed comprising of multiple analysis parameters; Average absolute percentage error (AAPE), Root Mean Squared Error (RMSE), coefficient of determination (R2). All models investigated are tested on an unseen dataset to prevent a biased model's development. Performance of the established AI models is gauged based on this error metric, demonstrating that ANN outperforms ANFIS with error within 1% of the measured PVT values. A computationally derived intelligent model provides the strongest predictive capabilities as it maps complex non-linear interactions between various input parameters leading to FVF.
基于人工智能的储层体积系数预测技术
该研究提出了一个强大的预测模型,利用最先进的人工智能(AI)技术确定原油地层体积系数(FVF)。FVF是用于表征油气系统的重要压力-体积-温度(PVT)参数,对储量计算和油藏工程研究至关重要。理想情况下,FVF是在实验室尺度上测量的;然而,评估该参数的预测工具可以优化时间和成本估算。本研究使用的数据库来源于公开文献,涵盖了中东地区原油的统计数据。考虑了多种人工智能算法,包括人工神经网络(ANN)和人工神经模糊推理系统(ANFIS)。利用针对各自算法的各种参数/超参数的优化策略开发模型。研究了感知机及其驻留层数量的唯一排列和组合,以达到提供最优输出的解决方案。这些智能模型是作为内在影响FVF的参数的函数产生的;储层温度、溶液GOR、气体比重、气泡点压力和原油API比重。采用可视化/统计分析的方法对已开发的人工智能模型进行了对比分析,并指出了最佳模型。最后,利用所提模型的权重和偏置分别完成确定FVF的数学方程提取。图形分析用于评估开发的人工智能模型的性能。散点图结果显示,大部分点位于45度线上。此外,在本研究中,开发了一个包含多个分析参数的误差度量;平均绝对百分比误差(AAPE)、均方根误差(RMSE)、决定系数(R2)。所有被调查的模型都在一个看不见的数据集上进行测试,以防止有偏见的模型的发展。基于该误差度量衡量已建立的AI模型的性能,表明ANN优于ANFIS,误差在测量的PVT值的1%以内。计算衍生的智能模型提供了最强的预测能力,因为它映射了导致FVF的各种输入参数之间复杂的非线性相互作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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