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郜彗博士在SCI期刊《ASEJ》发表论文

时间:2024-09-04 11:22:46 来源:永利yl23411官网科研与研究生管理办公室 作者:崔向超 阅读:

标题:Computational modeling of petroleum purification for removal of sulfur compounds: Process analysis for reduction of environmental impacts and material costs

作者:Hui Gao, Tonghui Liu, Xiangyao Zhang, Yajun Ji, Wei Wei, Xiaoyong Liu , Kai Zhang

来源出版物:Ain Shams Engineering Journal

DOI10.1016/j.asej.2024.102986

出版年:2024

文献类型:Journal

语种:英文

摘要:In the course of this investigation, three machine learning models (Gaussian Process Regression, Decision Tree Regression, and Kernel Ridge Regression) were examined for determining the correlation between the input variables (x and y) which are spatial coordinates of model’s geometry, and the content of species in adsorption for sulfur capture. For the process modeling, mass transfer was analyzed, and the concentration distribution of sulfur compound was obtained via numerical solution of mass transfer equations, and then used for machine learning models. The machine learning models were trained using a dataset of 19,000 observations, and their performance was assessed through metrics including R2 score, MAE, and RMSE. Analysis of the results reveals that Decision Tree Regression surpassed the other two models in performance, with an R2 score of 0.9989, MAE of 6.64405E-01, and RMSE of 1.1277E+00. Gaussian Process Regression had an R2 score of 0.97106, MAE of 3.65541E+00, and RMSE of 5.6821E+00, while Kernel Ridge Regression had an R2 score of 0.86347, MAE of 8.26121E+00, and RMSE of 1.1330E+01. The Clonal Selection Algorithm was used for hyper-parameter optimization for all models. These findings demonstrate the potential of machine learning techniques for accurately and reliably predicting the concentration of chemical species and highlight the importance of considering the choice of model and hyper-parameter optimization for optimal performance.

关键词:Adsorption; Sulfur removal; Decision tree regression; Gaussian process regression; Kernel ridge regression

影响因子:5.715

论文链接:https://www.sciencedirect.com/science/article/pii/S2090447924003617


编辑:崔向超