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
  • [21] PREDICTION ENHANCEMENT OF MACHINE LEARNING USING TIME SERIES MODELING IN GAS TURBINES
    Goyal, Vipul
    Xu, Mengyu
    Kapat, Jayanta
    Vesely, Ladislav
    PROCEEDINGS OF ASME TURBO EXPO 2021: TURBOMACHINERY TECHNICAL CONFERENCE AND EXPOSITION, VOL 4, 2021,
  • [22] Prediction of tensile strength using machine learning algorithms in fused deposition modeling
    Patel, Kautilya S.
    Trivedi, Nisarg
    Shah, Dhaval B.
    Joshi, Shashikant J.
    PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART E-JOURNAL OF PROCESS MECHANICAL ENGINEERING, 2024,
  • [23] A Comparison of GPU Execution Time Prediction using Machine Learning and Analytical Modeling
    Amaris, Marcos
    de Camargo, Raphael Y.
    Dyab, Mohamed
    Goldman, Alfredo
    Trystram, Denis
    15TH IEEE INTERNATIONAL SYMPOSIUM ON NETWORK COMPUTING AND APPLICATIONS (IEEE NCA 2016), 2016, : 326 - 333
  • [24] Using machine learning for non-intrusive modeling and prediction of software aging
    Andrzejak, Artur
    Silva, Luis
    2008 IEEE NETWORK OPERATIONS AND MANAGEMENT SYMPOSIUM, VOLS 1 AND 2, 2008, : 25 - +
  • [25] Modeling and Prediction of Temporal Biogeomechanical Properties Using Novel Machine Learning Approach
    Kolawole, Oladoyin
    Assaad, Rayan H.
    ROCK MECHANICS AND ROCK ENGINEERING, 2023, 56 (08) : 5635 - 5655
  • [26] Development of an Electronic Nose for Harmful Gases with Prediction Modeling Using Machine Learning
    Illahi, Ana Antoniette C.
    Bandala, Argel A.
    Sybingco, Edwin
    Dadios, Elmer P.
    Vicerra, Ryan Rhay P.
    Concepcion, Ronnie, II
    Lim, Laurence A. Gan
    Naguib, Raouf
    JOURNAL OF ADVANCES IN INFORMATION TECHNOLOGY, 2023, 14 (02) : 373 - 383
  • [27] Prediction Enhancement of Machine Learning Using Time Series Modeling in Gas Turbines
    Goyal, Vipul
    Xu, Mengyu
    Kapat, Jayanta
    Vesely, Ladislav
    JOURNAL OF ENGINEERING FOR GAS TURBINES AND POWER-TRANSACTIONS OF THE ASME, 2023, 145 (12):
  • [28] Modeling and Prediction of Temporal Biogeomechanical Properties Using Novel Machine Learning Approach
    Oladoyin Kolawole
    Rayan H. Assaad
    Rock Mechanics and Rock Engineering, 2023, 56 : 5635 - 5655
  • [29] Performance and power modeling and prediction using MuMMI and 10 machine learning methods
    Wu, Xingfu
    Taylor, Valerie
    Lan, Zhiling
    CONCURRENCY AND COMPUTATION-PRACTICE & EXPERIENCE, 2023, 35 (15):
  • [30] Paper Temperature Prediction Modeling in Production Printing System by Using Machine Learning
    Hase, Takamasa
    Kawasaki, Shunsuke
    Dursunkaya, Erdem
    Ishikura, Takumi
    Hemmi, Kaori
    Yamazaki, Kimiharu
    Kuramoto, Shinichi
    Kato, Koichi
    Fushinobu, Kazuyoshi
    JOURNAL OF IMAGING SCIENCE AND TECHNOLOGY, 2022, 66 (03)