Hafsa Noor, Rushd Sayeed, Alzoubi Hadeel, Al-Faiad Majdi
Department of Computer Science, College of Computer Science and Information Technology, King Faisal University, P.O. Box 400, Al-Ahsa 31982, Saudi Arabia.
Department of Chemical Engineering, College of Engineering, King Faisal University, P.O. Box 380, Al-Ahsa 31982, Saudi Arabia.
Heliyon. 2023 Dec 16;10(1):e23591. doi: 10.1016/j.heliyon.2023.e23591. eCollection 2024 Jan 15.
One of the significant challenges to designing an emulsion transportation system is predicting frictional pressure losses with confidence. The state-of-the-art method for enhancing reliability in prediction is to employ artificial intelligence (AI) based on various machine learning (ML) tools. Six traditional and tree-based ML algorithms were analyzed for the prediction in the current study. A rigorous feature importance study using RFECV method and relevant statistical analysis was conducted to identify the parameters that significantly contributed to the prediction. Among 16 input variables, the fluid velocity, mass flow rate, and pipe diameter were evaluated as the top predictors to estimate the frictional pressure losses. The significance of the contributing parameters was further validated by estimation error trend analyses. A comprehensive assessment of the regression models demonstrated an ensemble of the top three regressors to excel over all other ML and theoretical models. The ensemble regressor showcased exceptional performance, as evidenced by its high R value of 99.7 % and an AUC-ROC score of 98 %. These results were statistically significant, as there was a noticeable difference (within a 95 % confidence interval) compared to the estimations of the three base models. In terms of estimation error, the ensemble model outperformed the top base regressor by demonstrating improvements of 6.6 %, 11.1 %, and 12.75 % for the RMSE, MAE, and CV_MSE evaluation metrics, respectively. The precise and robust estimations achieved by the best regression model in this study further highlight the effectiveness of AI in the field of pipeline engineering.
设计乳液输送系统的一个重大挑战是准确预测摩擦压力损失。提高预测可靠性的最新方法是采用基于各种机器学习(ML)工具的人工智能(AI)。在本研究中,分析了六种传统和基于树的ML算法用于预测。使用RFECV方法进行了严格的特征重要性研究和相关统计分析,以确定对预测有显著贡献的参数。在16个输入变量中,流体速度、质量流量和管道直径被评估为估计摩擦压力损失的首要预测因子。通过估计误差趋势分析进一步验证了贡献参数的重要性。对回归模型的综合评估表明,前三个回归器的组合优于所有其他ML和理论模型。该组合回归器表现出卓越的性能,其高R值为99.7%,AUC-ROC得分为98%即可证明。这些结果具有统计学意义,因为与三个基础模型的估计相比,存在显著差异(在95%置信区间内)。在估计误差方面,组合模型在RMSE、MAE和CV_MSE评估指标上分别比顶级基础回归器提高了6.6%、11.1%和12.75%,表现更优。本研究中最佳回归模型实现的精确而稳健的估计进一步凸显了AI在管道工程领域的有效性。