School of Bio-Chemical Engineering and Technology, Sirindhorn International Institute of Technology, Thammasat University, Pathum Thani 12120, Thailand.
J Chem Inf Model. 2023 Aug 28;63(16):5077-5088. doi: 10.1021/acs.jcim.3c00670. Epub 2023 Aug 10.
Graphene-based supercapacitors have emerged as a promising candidate for energy storage due to their superior capacitive properties. Heteroatom-doping is a method of improving the capacitive properties of graphene-based electrodes, but the optimal doping conditions and electrochemical properties are not yet fully understood due to the synergistic effects that occur. Many parameters, such as doping content, defects, specific surface area (SA), electrolyte, and more, could affect the capacitance (CAP). In this study, we use machine learning to solve these critical issues. We applied many models, such as Light Gradient Boost Machine, Extreme Gradient Boost, Polynomial Regression, Neural Network, Elastic Net, Lasso Regression, Ridge Regression, Random Forest, Support Vector Machine, -Nearest Neighbors, Gradient Boost, AdaBoost, and Decision Tree, to find a suitable model for CAP prediction. Moreover, we enhance the prediction result by taking advantage of the top candidate model and creating a stacking concept (called "stacking models"). The SHAP value was used to identify the range of properties that affect CAP, and it was discussed in detail. Our results suggest that high-CAP graphene supercapacitors should have a large SA, with 4-5% nitrogen, 10-15% oxygen, high percentages of sulfur, a defect ratio close to 1, with acid electrolyte, and a low current density. These findings, along with the developed model and code, are expected to serve as a valuable computational tool for future electrochemical research from fundamental to applications.
基于石墨烯的超级电容器因其卓越的电容性能而成为储能的有前途的候选者。杂原子掺杂是一种提高基于石墨烯的电极电容性能的方法,但由于协同效应的发生,最佳掺杂条件和电化学性能尚未完全了解。许多参数,如掺杂含量、缺陷、比表面积 (SA)、电解质等,都可能影响电容 (CAP)。在这项研究中,我们使用机器学习来解决这些关键问题。我们应用了许多模型,如 Light Gradient Boost Machine、Extreme Gradient Boost、Polynomial Regression、Neural Network、Elastic Net、Lasso Regression、Ridge Regression、Random Forest、Support Vector Machine、-Nearest Neighbors、Gradient Boost、AdaBoost 和 Decision Tree,以找到适合 CAP 预测的模型。此外,我们通过利用顶级候选模型并创建堆叠概念(称为“堆叠模型”)来增强预测结果。我们使用 SHAP 值来确定影响 CAP 的属性范围,并详细讨论了这些属性。我们的结果表明,高 CAP 石墨烯超级电容器应该具有较大的 SA,其中氮含量为 4-5%,氧含量为 10-15%,硫含量较高,缺陷比接近 1,使用酸性电解质,并且电流密度较低。这些发现以及开发的模型和代码有望成为从基础到应用的未来电化学研究的有价值的计算工具。