Prediction of hydrocarbons ignition performances using machine learning modeling

被引:3
|
作者
Flora, Giacomo [1 ]
Karimzadeh, Forood [1 ]
Kahandawala, Moshan S. P. [1 ]
Dewitt, Matthew J. [2 ]
Corporan, Edwin [3 ]
机构
[1] Univ Dayton, Res Inst, Power & Energy Div, Dayton, OH 45469 USA
[2] Univ Dayton, Fuels & Combust Div, Res Inst, Dayton, OH 45469 USA
[3] Air Force Res Lab, Aerosp Syst Directorate, Wright Patterson AFB, OH 45433 USA
关键词
Derived Cetane Number; GCxGC; Hydrocarbons; Machine Learning; Multivariate Regression Analysis; CHEMICAL-STRUCTURE; CETANE NUMBER; JET FUEL; DODECANE;
D O I
10.1016/j.fuel.2024.131619
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
This study presents a computational methodology for determining the Derived Cetane Number (DCN) of practical aviation fuels. The proposed approach integrates a novel Quantitative Structure-Property Relationship (QSPR) model designed to predict DCN for hydrocarbon species and mixtures with fuel composition analysis obtained through Two-Dimensional Gas Chromatography (GCxGC). The QSPR model used 20 independent variables computed based on selected hydrocarbon molecular descriptors, including functional groups and distance-based topological indexes. The multivariate regression analysis was used to train the QSPR model based on a dataset consisting of 48 individual hydrocarbon species and 157 surrogate mixtures. The model demonstrated robust predictive capabilities with high coefficients of determination (R2) 2 ) of 0.96 on the training dataset and 0.94 on the independent testing dataset. The latter consisted of 43 surrogate mixtures formulated both in-house and sourced from archived literature. The application of the QSPR model for practical jet fuels involves specifying the detailed jet fuel compositions using GCxGC analysis and a randomization algorithm based on a database featuring over 17,000 distinct hydrocarbon species. The overall model's performance on practical jet fuels aligns closely with its performance on the training and testing datasets, affirming its practical utility. To enhance prediction accuracy of the proposed computational approach for practical jet fuels, density was explored as a potential constraining property to narrow randomization results with those detailed composition having a density similar to the actual fuel. In this regard, a novel relationship was established to predict fuel densities based on compositional characteristics. Despite the promising results in density prediction, this study indicates that density alone is insufficient to effectively constrain randomized compositions for significantly improved DCN predictions, and thus, further development is required.
引用
收藏
页数:11
相关论文
共 50 条
  • [41] Prediction of Visitors using Machine Learning
    Son, Kyoungho
    Byun, Yungcheol
    Lee, Sangjoon
    2018 INTERNATIONAL CONFERENCE ON INTELLIGENT INFORMATICS AND BIOMEDICAL SCIENCES (ICIIBMS), 2018, : 138 - 139
  • [42] PREDICTION OF MICROCLIMATES USING MACHINE LEARNING
    Sippy, Rachel
    Herrera, Diego
    Gaus, David
    Gangnon, Ronald
    Patz, Jonathan
    Osorio, Jorge
    AMERICAN JOURNAL OF TROPICAL MEDICINE AND HYGIENE, 2019, 101 : 230 - 231
  • [43] Disease Prediction using Machine Learning
    Dubey, Subham
    Banik, Sreerupa
    Ghosh, Deba
    Dey, Akash
    Das, Rishabh
    Dey, Ipsita
    Chowdhury, Sagarika
    Dey, Prianka
    2024 2ND WORLD CONFERENCE ON COMMUNICATION & COMPUTING, WCONF 2024, 2024,
  • [44] Headnote Prediction Using Machine Learning
    Mahar, Sarmad
    Zafar, Sahar
    Nishat, Kamran
    INTERNATIONAL ARAB JOURNAL OF INFORMATION TECHNOLOGY, 2021, 18 (05) : 678 - 685
  • [45] Claim Frequency Modeling and Prediction via Machine Learning
    Zeng Yuzhe
    Wu Aibo
    Zheng Hongyuan
    Luo Laijuan
    PROCEEDINGS OF 2018 CHINA INTERNATIONAL CONFERENCE ON INSURANCE AND RISK MANAGEMENT, 2018, : 594 - 616
  • [46] Machine-learning-enabled plasma modeling and prediction
    Faraji, Farbod
    Reza, Maryam
    Knoll, Aaron
    AIAA SCITECH 2024 FORUM, 2024,
  • [47] Modeling hadronization using machine learning
    Ilten, Phil
    Menzo, Tony
    Youssef, Ahmed
    Zupan, Jure
    SCIPOST PHYSICS, 2023, 14 (03):
  • [48] Underground hydrogen storage: A recovery prediction using pore network modeling and machine learning
    Zhao, Qingqi
    Wang, Hongsheng
    Chen, Cheng
    FUEL, 2024, 357
  • [49] Prediction Modeling Using EHR Data Challenges, Strategies, and a Comparison of Machine Learning Approaches
    Wu, Jionglin
    Roy, Jason
    Stewart, Walter F.
    MEDICAL CARE, 2010, 48 (06) : S106 - S113
  • [50] CORROSION PREDICTION OF MAGNESIUM IMPLANT USING MULTISCALE MODELING BASED ON MACHINE LEARNING ALGORITHMS
    Mondal, Santu
    Samanta, Rahul
    Shit, Sahadeb
    Biswas, Arindam
    Bandyopadhyay, Atul
    Dhar, Rudra Sankar
    Mandal, Gurudas
    INTERNATIONAL JOURNAL FOR MULTISCALE COMPUTATIONAL ENGINEERING, 2024, 22 (04) : 125 - 141