论文标题
碳电极的物理化学特征对超级电容器电容性能的影响:机器学习方法
The impact of physicochemical features of carbon electrodes on the capacitive performance of supercapacitors: A machine learning approach
论文作者
论文摘要
混合动力汽车和便携式电子系统使用超级电容器进行储能,这是由于其快速充电率,长寿命和较低的维护。特定的电容被认为是超级电容器电极最重要的与性能相关的特征之一。在当前的研究中,使用机器学习(ML)算法来确定碳基材料各种物理化学特性对电容性双层电容器电容性能的影响。提取了来自147个参考文献(4899个数据条目)的已发布的实验数据集,然后用于训练和测试ML模型,以确定电极材料特征在特定电容上的相对重要性。这些功能包括电流密度,孔隙体积,孔径,缺陷的存在,潜在的窗口,特定表面积,氧气以及碳基电极材料的氮含量。另外,也考虑了分类变量作为测试方法,电解质和电极的碳结构。在五个应用的回归模型中,发现了一个极端的梯度增强模型最能使这些特征与电容性能相关联,这突显了特定表面积,氮掺杂的存在以及潜在的窗口是特定电容的最重要描述符。这些发现总结在模块化和开源应用程序中,用于估计给出的超级电容器的电容,仅作为输入,其基于碳的电极的特征,电解质和测试方法。从角度来看,这项工作为从实验文献中提取的超级电容器引入了新的广泛的碳电极数据集,还为电化学技术如何从ML模型中受益。
Hybrid electric vehicles and portable electronic systems use supercapacitors for energy storage owing to their fast charging discharging rates, long life cycle, and low maintenance. Specific capacitance is regarded as one of the most important performance-related characteristics of a supercapacitor's electrode. In the current study, Machine Learning (ML) algorithms were used to determine the impact of various physicochemical properties of carbon-based materials on the capacitive performance of electric double-layer capacitors. Published experimental datasets from 147 references (4899 data entries) were extracted and then used to train and test the ML models, to determine the relative importance of electrode material features on specific capacitance. These features include current density, pore volume, pore size, presence of defects, potential window, specific surface area, oxygen, and nitrogen content of the carbon-based electrode material. Additionally, categorical variables as the testing method, electrolyte, and carbon structure of the electrodes are considered as well. Among five applied regression models, an extreme gradient boosting model was found to best correlate those features with the capacitive performance, highlighting that the specific surface area, the presence of nitrogen doping, and the potential window are the most significant descriptors for the specific capacitance. These findings are summarized in a modular and open-source application for estimating the capacitance of supercapacitors given, as only inputs, the features of their carbon-based electrodes, the electrolyte and testing method. In perspective, this work introduces a new wide dataset of carbon electrodes for supercapacitors extracted from the experimental literature, also giving an instance of how electrochemical technology can benefit from ML models.