Reza Nakhaei-Kohani , Behnam Amiri-Ramsheh , Maryam Pourmahdi , Saeid Atashrouz , Ali Abedi , Ahmad Mohaddespour , Abdolhossein Hemmati-Sarapardeh
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In this study four advanced intelligent models, Extreme Gradient Boosting (XGBoost), Gradient Boosting (GBoost), Light Gradient Boosting Machine (LightGBM), and Categorical Boosting (CatBoost) have been proposed to predict the solubility of CO<sub>2</sub> in 160 different ILs based on factors such as temperature, pressure, and the chemical structure of the ILs. Findings indicate that the XGBoost model is the most accurate among the four models, with the root mean square error (RMSE) and coefficient of determination (R<sup>2</sup>) values of 0.014 and 0.9967, respectively. Moreover, the results reveal that increasing pressure, decreasing temperature, and lengthening the alkyl chain all increase the solubility of CO<sub>2</sub> in ILs. Furthermore, pressure and the number of –CH<sub>2</sub> substructure in ILs have the most significant impact on the CO<sub>2</sub> solubility in ILs, respectively. To ensure the XGBoost model's reliability, the model's data has been assessed using the leverage technique. The results show that 92.44 % of the data fell within the valid area, which is a substantial percentage and indicates the model's high reliability. 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引用次数: 0
摘要
工业增长导致二氧化碳(CO2)排放量大幅上升,这是一项重大的全球性挑战。因此,有必要采用各种技术来减少和调节这一现象。其中一种技术是在二氧化碳捕获和分离过程中使用离子液体(ILs)作为溶剂,这种技术已经得到普遍应用。本研究提出了四种先进的智能模型:极梯度提升(XGBoost)、梯度提升(GBoost)、轻梯度提升机(LightGBM)和分类提升(CatBoost),根据温度、压力和离子液体的化学结构等因素预测二氧化碳在 160 种不同离子液体中的溶解度。研究结果表明,XGBoost 模型是四个模型中最准确的,其均方根误差(RMSE)和决定系数(R2)值分别为 0.014 和 0.9967。此外,研究结果表明,增加压力、降低温度和延长烷基链都会增加二氧化碳在 IL 中的溶解度。此外,压力和 IL 中 -CH2 子结构的数量对 CO2 在 IL 中的溶解度影响最大。为确保 XGBoost 模型的可靠性,利用杠杆技术对模型数据进行了评估。结果显示,92.44% 的数据属于有效区域,这一比例相当高,表明该模型具有很高的可靠性。这项研究的结果将有助于设计和微调专门用于二氧化碳捕集的离子液体的化学结构。
Extensive data analysis and modelling of carbon dioxide solubility in ionic liquids using chemical structure-based ensemble learning approaches
The significant rise in carbon dioxide (CO2) emission due to industrial growth is a major global challenge. As a result, there is a need to implement various techniques to reduce and regulate this phenomenon. One such technique involves the utilization of ionic liquids (ILs) as solvents in CO2 capturing and separation processes, which is already commonly practiced. In this study four advanced intelligent models, Extreme Gradient Boosting (XGBoost), Gradient Boosting (GBoost), Light Gradient Boosting Machine (LightGBM), and Categorical Boosting (CatBoost) have been proposed to predict the solubility of CO2 in 160 different ILs based on factors such as temperature, pressure, and the chemical structure of the ILs. Findings indicate that the XGBoost model is the most accurate among the four models, with the root mean square error (RMSE) and coefficient of determination (R2) values of 0.014 and 0.9967, respectively. Moreover, the results reveal that increasing pressure, decreasing temperature, and lengthening the alkyl chain all increase the solubility of CO2 in ILs. Furthermore, pressure and the number of –CH2 substructure in ILs have the most significant impact on the CO2 solubility in ILs, respectively. To ensure the XGBoost model's reliability, the model's data has been assessed using the leverage technique. The results show that 92.44 % of the data fell within the valid area, which is a substantial percentage and indicates the model's high reliability. The findings of this study will assist in designing and fine-tuning the chemical structure of ionic liquids specifically for CO2 capture purposes.
期刊介绍:
Fluid Phase Equilibria publishes high-quality papers dealing with experimental, theoretical, and applied research related to equilibrium and transport properties of fluids, solids, and interfaces. Subjects of interest include physical/phase and chemical equilibria; equilibrium and nonequilibrium thermophysical properties; fundamental thermodynamic relations; and stability. The systems central to the journal include pure substances and mixtures of organic and inorganic materials, including polymers, biochemicals, and surfactants with sufficient characterization of composition and purity for the results to be reproduced. Alloys are of interest only when thermodynamic studies are included, purely material studies will not be considered. In all cases, authors are expected to provide physical or chemical interpretations of the results.
Experimental research can include measurements under all conditions of temperature, pressure, and composition, including critical and supercritical. Measurements are to be associated with systems and conditions of fundamental or applied interest, and may not be only a collection of routine data, such as physical property or solubility measurements at limited pressures and temperatures close to ambient, or surfactant studies focussed strictly on micellisation or micelle structure. Papers reporting common data must be accompanied by new physical insights and/or contemporary or new theory or techniques.