Larestani Aydin, Hemmati-Sarapardeh Abdolhossein, Samari Zahra, Ostadhassan Mehdi
Department of Petroleum Engineering, Shahid Bahonar University of Kerman, Kerman 76169-141111, Iran.
College of Construction Engineering, Jilin University, Changchun 130012, China.
ACS Omega. 2022 Jul 6;7(28):24256-24273. doi: 10.1021/acsomega.2c01466. eCollection 2022 Jul 19.
This communication primarily concentrates on developing reliable and accurate compositional oil formation volume factor ( ) models using several advanced and powerful machine learning (ML) models, namely, extra trees (ETs), random forest (RF), decision trees (DTs), generalized regression neural networks, and cascade-forward back-propagation network, alongside radial basis function and multilayer perceptron neural networks. Along with these models, seven equations of state (EoSs) were employed to estimate . The performance of the developed ML models and employed EoSs was assessed through various statistical and graphical evaluations. Overall, the ML models could provide much more accurate predictions in comparison to EoSs. However, the results indicated that tree-based models, specifically ET models, could outperform the other models and can be reliably applied for estimating . The most reliable ET model could predict with a total average error of 1.17%. Lastly, the outlier detection approach verified the dataset's consistency detecting only 17 (out of 1224) data points as outliers for the proposed models.
本通信主要致力于使用几种先进且强大的机器学习(ML)模型,即极端随机树(ET)、随机森林(RF)、决策树(DT)、广义回归神经网络和级联前向反向传播网络,以及径向基函数和多层感知器神经网络,来开发可靠且准确的原油地层体积系数( )模型。除了这些模型外,还采用了七个状态方程(EoS)来估算 。通过各种统计和图形评估对所开发的ML模型和所采用的EoS的性能进行了评估。总体而言,与EoS相比,ML模型能够提供更为准确的预测。然而,结果表明基于树的模型,特别是ET模型,性能优于其他模型,并且可以可靠地用于估算 。最可靠的ET模型预测 的总平均误差为1.17%。最后,异常值检测方法验证了数据集的一致性,在所提出的 模型中仅检测到17个(共1224个)数据点为异常值。