Quantitative analysis of pyrolysis characteristics and chemical components of tobacco materials based on machine learning

被引:2
|
作者
Wu, Zhifeng [1 ]
Zhang, Qi [1 ]
Yu, Hongxiao [2 ]
Fu, Lili [1 ]
Yang, Zhen [3 ]
Lu, Yan [1 ]
Guo, Zhongya [4 ]
Li, Yasen [3 ]
Zhou, Xiansheng [2 ]
Liu, Yingjie [5 ]
Wang, Le [1 ]
机构
[1] CNTC, Zhengzhou Tobacco Res Inst, Zhengzhou, Peoples R China
[2] China Tobacco Shandong Ind Co Ltd, Technol Ctr, Jinan, Peoples R China
[3] Minist Nat Resources, Minist & Municipal Jointly Build Key Lab Sichuan P, Chengdu, Peoples R China
[4] China Tobacco Guangdong Ind Co Ltd, Technol Ctr, Guangzhou, Peoples R China
[5] China Tobacco Shandong Ind Co Ltd, Qingzhou Cigarette Factory, Qinzhou, Peoples R China
来源
FRONTIERS IN CHEMISTRY | 2024年 / 12卷
关键词
tobacco material; chemical components; thermogravimetric analysis; machine learning; characteristic temperature range; CONSTITUENTS; PRODUCTS;
D O I
10.3389/fchem.2024.1353745
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
To investigate the quantitative relationship between the pyrolysis characteristics and chemical components of tobacco materials, various machine learning methods were used to establish a quantitative analysis model of tobacco. The model relates the thermal weight loss rate to 19 chemical components, and identifies the characteristic temperature intervals of the pyrolysis process that significantly relate to the chemical components. The results showed that: 1) Among various machine learning methods, partial least squares (PLS), support vector regression (SVR) and Gaussian process regression (GPR) demonstrated superior regression performance on thermogravimetric data and chemical components. 2) The PLS model showed the best performance on fitting and prediction effects, and has good generalization ability to predict the 19 chemical components. For most components, the determination coefficients R 2 are above 0.85. While the performance of SVR and GPR models was comparable, the R 2 for most chemical components were below 0.75. 3) The significant temperature intervals for various chemical components were different, and most of the affected temperature intervals were within 130 degrees C-400 degrees C. The results can provide a reference for the materials selection of cigarette and reveal the possible interactions of various chemical components of tobacco materials in the pyrolysis process.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Predicting tobacco pyrolysis based on chemical constituents and heating conditions using machine learning approaches
    Wei, Hao
    Xing, Jiangkuan
    Luo, Kun
    Peng, Yuhan
    Fan, Jianren
    Zhang, Ke
    Wang, Hui
    FUEL, 2023, 335
  • [2] Regression prediction of tobacco chemical components during curing based on color quantification and machine learning
    Yang Meng
    Qiang Xu
    Guangqing Chen
    Jianjun Liu
    Shuoye Zhou
    Yanling Zhang
    Aiguo Wang
    Jianwei Wang
    Ding Yan
    Xianjie Cai
    Junying Li
    Xuchu Chen
    Qiuying Li
    Qiang Zeng
    Weimin Guo
    Yuanhui Wang
    Scientific Reports, 14 (1)
  • [3] Low-temperature oxidative pyrolysis characteristics of tobacco components
    Guo, Zhongya
    Zhang, Ke
    Li, Huanwei
    Fu, Lili
    Zhang, Qi
    Liu, Ze
    Wang, Le
    Qiao, Xueyi
    Guo, Heng
    Chen, Ran
    Wang, Bing
    Li, Bin
    BIOMASS & BIOENERGY, 2025, 193
  • [4] Quantitative Analysis of Routine Chemical Constituents of Tobacco Based on Thermogravimetric Analysis
    Peng, Yuhan
    Bi, Yiming
    Dai, Lu
    Li, Haifeng
    Cao, Depo
    Qi, Qijie
    Liao, Fu
    Zhang, Ke
    Shen, Yudong
    Du, Fangqi
    Wang, Hui
    ACS OMEGA, 2022, 7 (30): : 26407 - 26415
  • [5] Study on waste tire pyrolysis product characteristics based on machine learning
    Qi, Jingwei
    Zhang, Kaihong
    Hu, Ming
    Xu, Pengcheng
    Huhe, Taoli
    Ling, Xiang
    Yuan, Haoran
    Wang, Yijie
    Chen, Yong
    JOURNAL OF ENVIRONMENTAL CHEMICAL ENGINEERING, 2023, 11 (06):
  • [6] Quantitative analysis of multiple components based on support vector machine (SVM)
    Yu, Yinshan
    Shao, Mingzhen
    Jiang, Lingjie
    Ke, Yongbin
    Wei, Dandan
    Zhang, Dongyang
    Jiang, Mingxin
    Yang, Yudong
    OPTIK, 2021, 237
  • [7] Ensemble-machine-learning-based correlation analysis of internal and band characteristics of thermoelectric materials
    Chen, Lihao
    Xu, Ben
    Chen, Jia
    Bi, Ke
    Li, Changjiao
    Lu, Shengyu
    Hu, Guosheng
    Lin, Yuanhua
    JOURNAL OF MATERIALS CHEMISTRY C, 2020, 8 (37) : 13079 - 13089
  • [8] Quantitative Investment Based on Fundamental Analysis Using Machine Learning
    Zhang, Zhiruo
    PROCEEDINGS OF 2024 INTERNATIONAL CONFERENCE ON COMPUTER AND MULTIMEDIA TECHNOLOGY, ICCMT 2024, 2024, : 509 - 515
  • [9] Machine learning prediction of biochar physicochemical properties based on biomass characteristics and pyrolysis conditions
    Song, Yuanbo
    Huang, Zipeng
    Jin, Mengyu
    Liu, Zhe
    Wang, Xiaoxia
    Hou, Cheng
    Zhang, Xu
    Shen, Zheng
    Zhang, Yalei
    Journal of Analytical and Applied Pyrolysis, 2024, 181
  • [10] Machine learning prediction of biochar physicochemical properties based on biomass characteristics and pyrolysis conditions
    Song, Yuanbo
    Huang, Zipeng
    Jin, Mengyu
    Liu, Zhe
    Wang, Xiaoxia
    Hou, Cheng
    Zhang, Xu
    Shen, Zheng
    Zhang, Yalei
    JOURNAL OF ANALYTICAL AND APPLIED PYROLYSIS, 2024, 181