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Machine learning-based prediction of supercapacitor capacitance for MgCo2O4 electrodes.
Tang, Mengfan; Ding, Yue; Hu, Tanwei; Zhu, Xiaolong; Zheng, Guang; Tian, Yu.
  • Tang M; Jianghan University, Department of Physics, Triangle Lake Road, Wuhan Economic and Technological Development Zone, Caidian Zone, 430056, Wuhan, CHINA.
  • Ding Y; Jianghan University, Department of Physics, Triangle Lake Road, Wuhan Economic and Technological Development Zone, Caidian Zone, 430056, Wuhan, CHINA.
  • Hu T; Jianghan University, Department of Physics, Triangle Lake Road, Wuhan Economic and Technological Development Zone, Caidian Zone, 430056, Wuhan, CHINA.
  • Zhu X; Jianghan University, Department of Artificial Intelligence, Triangle Lake Road, Wuhan Economic and Technological Development Zone, Caidian Zone, 430056, Wuhan, CHINA.
  • Zheng G; Jiangnan University, Department of Physics, Triangle Lake Road, Wuhan Economic and Technological Development Zone, Caidian Zone, 430056, Wuhan, CHINA.
  • Tian Y; Jianghan University, Department of Physics, Triangle Lake Road, Wuhan Economic and Technological Development Zone, Caidian Zone, 430056, Wuhan, CHINA.
Chemphyschem ; : e202400629, 2024 Jul 09.
Article en En | MEDLINE | ID: mdl-38982718
ABSTRACT
Electrode materials are essential in the electrochemical process of storing charge in supercapacitors and have a significant impact on the cost and capacitive performance of the final product. Hence, it is imperative to make precise predictions regarding the capacitance of electrode materials in order to further the development of supercapacitors. MgCo2O4, with a theoretical capacitance of up to 3122 F g-1, holds immense research value as an electrode material. The objective of this study is to predict the capacitance of MgCo2O4 with high accuracy. This will be achieved by extracting numerous data from published papers and using some parameters as input features. The Recursive Feature Elimination (RFE) method was employed, using Random Forest (RF), Extreme Gradient Boosting (XGBoost) and Regression Tree (RT) as selectors to identify the optimal feature subset. Then, combining them with these three regression models to construct nine machine learning (ML) models. After performance evaluation and outlier analysis, the XGB-RFE-XGB model achieved R-squared (R²), root mean squared error (RMSE), and mean absolute error (MAE) of 0.95, 111.83 F g-1 and 68.25 F g-1, respectively, demonstrating its stability and reliability. Therefore, the XGB-RFE-XGB model can be used as a reliable predictive tool in subsequent experimental designs.
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Texto completo: 1 Banco de datos: MEDLINE Idioma: En Año: 2024 Tipo del documento: Article

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Año: 2024 Tipo del documento: Article