4.7 Article

Data-driven machine learning approach for predicting the capacitance of graphene-based supercapacitor electrodes

Journal

JOURNAL OF ENERGY STORAGE
Volume 55, Issue -, Pages -

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ELSEVIER
DOI: 10.1016/j.est.2022.105411

Keywords

Machine -learning; Capacitance predication; Artificial neural network; Graphene electrodes

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Graphene-based nanocomposites have strong potential as high-capacity supercapacitor electrodes in energy storage systems. Developing an accurate and effective prediction technique using machine learning models is crucial for reducing the time needed to design and test electrode materials. Experimental data from over two hundred research papers was examined to predict the specific capacitance of graphene-based electrode structures, with the artificial neural network (ANN) model demonstrating the highest accuracy in predictions.
Graphene-based nanocomposites have shown strong potential as active components of high-capacity supercapacitors electrodes in energy storage systems. Developing an accurate and effective prediction technique for electrochemical performance is essential to decrease the time required for designing and testing electrode materials. In the present study, experimental data from more than two hundred published research papers have been extracted and examined through several machine learning (ML) models to predict the specific capacitance (F/g) of graphene-based electrode structures using various physicochemical features and diverse electrochemical measurements. The physicochemical features used in this work to predict the specific capacitance of the SCs electrode material include: carbon, nitrogen, and oxygen atomic percentages as well as electrode configuration, pore size, pore-volume, specific surface area (SSA), and ID/IG ratio. Electrochemical test features obtained from galvanostatic charge-discharge (GCD) tests and electrochemical impedance spectroscopy (EIS) analyses for the same purpose include: cell configuration, electrolyte ionic conductivity, electrolyte concentration, applied potential window, current density, charge-transfer resistance (RCT), and equivalent series resistance (RS). Four different ML models were developed: k-nearest neighbors' regression (KNN), decision tree regression (DTR), Bayesian ridge regression (BRR), and artificial neural network (ANN). The developed ANN model, with root mean square error (RMSE) and coefficient of determination (R2) values of 60.42 and 0.88, respectively, delivers extremely accurate prediction results compared to the other models developed for this purpose. The SHAP (SHapley Additive exPlanations) framework analysis of the input characteristics revealed that atomic percentages of nitrogen and oxygen doped graphene had the greatest effect on the ANN model.

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