杂原子掺杂碳基电极材料电容预测的系综方法

Q3 Physics and Astronomy
Richa Dubey, Velmathi Guruviah, Ravi Prakash Dwivedi
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引用次数: 0

摘要

本研究采用基于集成方法的机器学习建模,揭示了不同电极参数对杂原子掺杂纳米碳电化学性能的影响。这是使用三个元分类器结合传统的多层感知器和随机森林模型来实现的。使用的三个元分类器分别是:(i)套袋,(ii)通过回归分类(CVR)和(iii)多类分类器(MCC)。在这三种模型中,套袋和回归分类在正确分类的实例(%)和收敛值区域下的面积方面提供了更高的准确性。所设计的模型用于预测一类比电容值。所考虑的数据集的94.5%被正确分类,证明设计的模型具有更好的准确性。RF模型的均方根最小值为0.1787。与文献中定义的模型相比,本文提出的模型以最高的精度和最低的误差性能值提供了实验和预测值的最佳拟合。RF和MLP模型的最小误差值分别为0.18和0.19。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Approach for Capacitance Prediction of Heteroatom Doped Carbon Based Electrode Materials
An ensemble approach-based machine learning modeling is used in the current study for unveiling the effect of various electrode parameters on the electrochemical performance of hetero-atom doped nanocarbons. This is achieved using three meta-classifiers in combination with traditional Multi-Layer Perceptron and Random Forest models. The three meta-classifiers used are namely (i) bagging, (ii) classification via regression (CVR) and (iii) multi class classifier (MCC). Amongst these three models, bagging and classification via regression provided greater accuracy in terms of correctly classified instances (%) and area under region of convergence values. The designed models are used to predict class of specific capacitance values. 94.5 % of the considered dataset is classified correctly proving a better accuracy of the designed models. Lowest root mean square value of 0.1787 was obtained for RF model. Compared to the models defined in the literature, the suggested models in this work provide best fit of the experiment and predicted values with highest accuracy and lowest error performance values. The lowest error value for RF and MLP models are 0.18 and 0.19 respectively.
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来源期刊
Journal of Nano-and electronic Physics
Journal of Nano-and electronic Physics Materials Science-Materials Science (all)
CiteScore
1.40
自引率
0.00%
发文量
69
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