Ali Ahsan, Khan Muhammad Adnan, Choi Hoimyung
Department of Mechanical Engineering, Gachon University, Seongnam 13120, Republic of Korea.
School of Computing, Skyline University College, University City Sharjah, Sharjah 1797, United Arab Emirates.
Molecules. 2024 Mar 13;29(6):1280. doi: 10.3390/molecules29061280.
Dibenzyltoluene (H0-DBT), a Liquid Organic Hydrogen Carrier (LOHC), presents an attractive solution for hydrogen storage due to its enhanced safety and ability to store hydrogen in a concentrated liquid form. The utilization of machine learning proves essential for accurately predicting hydrogen storage classes in H0-DBT across diverse experimental conditions. This study focuses on the classification of hydrogen storage data into three classes, low-class, medium-class and high-class, based on the hydrogen storage capacity values. We introduce Hydrogen Storage Prediction with the Support Vector Machine (HSP-SVM) model to predict the hydrogen storage classes accurately. The performance of the proposed HSP-SVM model was investigated using various techniques, which included 5-Fold Cross Validation (5-FCV), Resubstitution Validation (RV), and Holdout Validation (HV). The accuracy of the HV approach for the low, medium, and high class was 98.5%, 97%, and 98.5%, respectively. The overall accuracy of HV approach reached 97% with a miss clarification rate of 3%, whereas 5-FCV and RV possessed an overall accuracy of 93.9% with a miss clarification rate of 6.1%. The results reveal that the HV approach is optimal for predicting the hydrogen storage classes accurately.
二苄基甲苯(H0-DBT)作为一种液态有机氢载体(LOHC),因其更高的安全性以及能够以浓缩液态形式储存氢气的能力,为氢气储存提供了一个有吸引力的解决方案。事实证明,利用机器学习对于在不同实验条件下准确预测H0-DBT中的储氢类别至关重要。本研究基于储氢容量值,将储氢数据分为低类别、中类别和高类别三类。我们引入支持向量机储氢预测(HSP-SVM)模型来准确预测储氢类别。使用包括五折交叉验证(5-FCV)、重新代入验证(RV)和留出验证(HV)等各种技术对所提出的HSP-SVM模型的性能进行了研究。HV方法对低、中、高类别的准确率分别为98.5%、97%和98.5%。HV方法的总体准确率达到97%,误分类率为3%,而5-FCV和RV的总体准确率为93.9%,误分类率为6.1%。结果表明,HV方法最适合准确预测储氢类别。