Usman A G, Tanimu Abdulkadir, Abba S I, Isik Selin, Aitani Abdullah, Alasiri Hassan
Department of Analytical Chemistry, Faculty of Pharmacy, Near East University, TRNC, Mersin 10, 99138 Nicosia, Turkey.
Operational Research Centre in Healthcare, Near East University, 99138 Nicosia, Turkish Republic of Northern Cyprus.
ACS Omega. 2023 Oct 18;8(43):40517-40531. doi: 10.1021/acsomega.3c05227. eCollection 2023 Oct 31.
The prediction of the yields of light olefins in the direct conversion of crude oil to chemicals requires the development of a robust model that represents the crude-to-chemical conversion processes. This study utilizes artificial intelligence (AI) and machine learning algorithms to develop single and ensemble learning models that predict the yields of ethylene and propylene. Four single-model AI techniques and four ensemble paradigms were developed using experimental data derived from the catalytic cracking experiments of various crude oil fractions in the advanced catalyst evaluation reactor unit. The temperature, feed type, feed conversion, total gas, dry gas, and coke were used as independent variables. Correlation matrix analyses were conducted to filter the input combinations into three different classes (M1, M2, and M3) based on the relationship between dependent and independent variables, and three performance metrics comprising the coefficient of determination (), Pearson correlation coefficient (PCC), and mean square error (MSE) were used to evaluate the prediction performance of the developed models in both calibration and validations stages. All four single models have very low and PCC values (as low as 0.07) and very high MSE values (up to 4.92 wt %) for M1 and M2 in both calibration and validation phases. However, the ensemble ML models show and PCC values of 0.99-1 and an MSE value of 0.01 wt % for M1, M2, and M3 input combinations. Therefore, ensemble paradigms improve the performance accuracy of single models by up to 58 and 62% in the calibration and validation phases, respectively. The ensemble paradigms predict with high accuracy the yield of ethylene and propylene in the catalytic cracking of crude oil and its fractions.
预测原油直接转化为化学品过程中轻质烯烃的产率,需要开发一个能代表原油到化学品转化过程的强大模型。本研究利用人工智能(AI)和机器学习算法来开发预测乙烯和丙烯产率的单模型和集成学习模型。使用先进催化剂评价反应器装置中各种原油馏分催化裂化实验得到的实验数据,开发了四种单模型AI技术和四种集成范式。温度、进料类型、进料转化率、总气体、干气和焦炭用作自变量。基于因变量和自变量之间的关系进行相关矩阵分析,将输入组合过滤为三个不同类别(M1、M2和M3),并使用包括决定系数()、皮尔逊相关系数(PCC)和均方误差(MSE)在内的三个性能指标来评估所开发模型在校准和验证阶段的预测性能。在校准和验证阶段,所有四个单模型对于M1和M2的决定系数和PCC值都非常低(低至0.07),MSE值非常高(高达4.92 wt%)。然而,对于M1、M2和M3输入组合,集成机器学习模型的决定系数和PCC值为0.99 - 1,MSE值为0.01 wt%。因此,集成范式在校准和验证阶段分别将单模型的性能准确率提高了58%和62%。集成范式能高精度地预测原油及其馏分催化裂化过程中乙烯和丙烯的产率。