Insights into the specific capacitance of CNT-based supercapacitor electrodes using artificial intelligence†

IF 4.6 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
RSC Advances Pub Date : 2025-01-30 DOI:10.1039/D4RA05546B
Wael Z. Tawfik, Mohamed Shaban, Athira Raveendran, June Key Lee and Abdullah M. Al-Enizi
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Abstract

In this study, the specific capacitance characteristics of a carbon nanotube (CNT) supercapacitor was predicted using different machine learning algorithms, such as artificial neural network (ANN), random forest regression (RFR), k-nearest neighbors regression (KNN), and decision tree regression (DTR), based on experimental studies. The results of the simulation verified the accuracy of the ANN algorithm with respect to the data derived from the specific capacitance of the supercapacitor module. It was observed that there was a strong correlation between the experimental results and the predictions made by the ANN algorithm. Comparative analysis showed that the developed ANN algorithm was consistently superior over other algorithms in terms of different metrics, as indicated by the lowest root mean square error (RMSE) value of roughly 26.24 and the highest R2 value of approximately 0.91. In contrast, the DTR model recorded the least reliable results in the accuracy analysis, as indicated by the highest RMSE value of about 53.46 and the lowest R2 value of roughly 0.63. To further explore the impact of independent input parameters including pore structure, specific surface area, and ID/IG ratio on a single output parameter (particularly, the specific capacitance) the sensitivity analysis was also conducted using the SHapley Additive exPlanations (SHAP) framework. This investigation sheds light on the relative significance and effects of different input variables on the specific capacitance of supercapacitors based on CNTs. The results indicated that the ANN algorithm accurately predicted the capacitance of the CNT-based supercapacitor, demonstrating the feasibility and significance of neural network algorithms in the design of energy storage devices.

Abstract Image

利用人工智能洞察基于碳纳米管的超级电容器电极的特定电容。
本研究在实验研究的基础上,利用人工神经网络(ANN)、随机森林回归(RFR)、k近邻回归(KNN)和决策树回归(DTR)等不同的机器学习算法预测了碳纳米管(CNT)超级电容器的具体电容特性。仿真结果验证了人工神经网络算法对超级电容模块比电容数据的准确性。观察到,实验结果与人工神经网络算法的预测结果有很强的相关性。对比分析表明,所开发的人工神经网络算法在不同指标上均优于其他算法,最低均方根误差(RMSE)值约为26.24,最高r2值约为0.91。相比之下,DTR模型在精度分析中可靠性最差,RMSE最高约为53.46,r2最低约为0.63。为了进一步探索独立输入参数(包括孔隙结构、比表面积和I - D/I - G比)对单个输出参数(特别是比电容)的影响,还使用SHapley加性解释(SHAP)框架进行了灵敏度分析。本研究揭示了不同输入变量对基于碳纳米管的超级电容器比电容的相对重要性和影响。结果表明,人工神经网络算法准确地预测了基于碳纳米管的超级电容器的电容,证明了神经网络算法在储能装置设计中的可行性和意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
RSC Advances
RSC Advances chemical sciences-
CiteScore
7.50
自引率
2.60%
发文量
3116
审稿时长
1.6 months
期刊介绍: An international, peer-reviewed journal covering all of the chemical sciences, including multidisciplinary and emerging areas. RSC Advances is a gold open access journal allowing researchers free access to research articles, and offering an affordable open access publishing option for authors around the world.
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