Machine learning-based design of target property-oriented fuels using explainable artificial intelligence

被引:1
|
作者
Chen, Yong [1 ]
Lu, Zhiyuan [1 ]
Liu, Heng [1 ]
Wang, Hu [1 ]
Zheng, Zunqing [1 ]
Wang, Changhui [1 ,2 ]
Sun, Xingyu [2 ]
Xu, Linxun [2 ]
Yao, Mingfa [1 ]
机构
[1] Tianjin Univ, State Key Lab Engines, Tianjin 300072, Peoples R China
[2] Shandong Chambroad New Energy Co Ltd, Binzhou 256500, Peoples R China
基金
中国国家自然科学基金;
关键词
Machine learning; Explainable artificial intelligence; Feature selection; Target property -oriented fuel design; FEATURE-SELECTION; ENGINE; DIESEL; COMBUSTION; EMISSIONS; PERFORMANCE; DIAGNOSIS; MODEL;
D O I
10.1016/j.energy.2024.131583
中图分类号
O414.1 [热力学];
学科分类号
摘要
This study presents a machine learning (ML) and explainable artificial intelligence (XAI) integrated framework to guide the experimental investigation of engine combustion toward the most promising fuel compositions. Specifically, the experimental study evaluated nine diesel fuels with differing levels of paraffin, cycloparaffins, and aromatics in a heavy-duty engine, providing key data for subsequent model development. Building on this data, we introduce a multidimensional neural network methodology for feature optimization and performance assessment, incorporating 31 distinct features including engine variables, fuel properties, and components. The methodology innovatively integrates tree-based models with shapley additive explanations (SHAP) for detailed feature importance ranking. Features are sequentially added to subsets based on their importance for multilayer perceptron (MLP) model training, allowing for precise regression performance metrics for each subset. The comprehensive assessment of these best subsets revealed robust regression capabilities, with coefficient of determination (R2) values ranging from 0.9918 to 0.9999, and both root mean square error (RMSE) and mean absolute percentage error (MAPE) maintained below 0.4974 and 0.1388, respectively. Through SHAP and partial dependence plots (PDP), it was demonstrated that optimizing diesel fuel compositions by increasing paraffin levels, reducing aromatics, and moderately increasing cycloparaffins can significantly enhance combustion efficiency and reduce emissions.
引用
收藏
页数:15
相关论文
共 50 条
  • [11] Explainable artificial intelligence for deep learning-based model predictive controllers
    Utama, Christian
    Karg, Benjamin
    Meske, Christian
    Lucia, Sergio
    [J]. 2022 26TH INTERNATIONAL CONFERENCE ON SYSTEM THEORY, CONTROL AND COMPUTING (ICSTCC), 2022, : 464 - 471
  • [12] Design of chromium-vanadium steel based on design loop combining property-oriented design criteria and machine learning prediction model
    Liu, Yuan
    Wei, Shi-Zhong
    Jiang, Tao
    [J]. JOURNAL OF MATERIALS RESEARCH AND TECHNOLOGY-JMR&T, 2024, 32 : 86 - 96
  • [13] Unveiling the effects of artificial intelligence and green technology convergence on carbon emissions: An explainable machine learning-based approach
    Shan, Tianlong
    Feng, Shuai
    Li, Kaijian
    Chang, Ruidong
    Huang, Ruopeng
    [J]. Journal of Environmental Management, 2025, 373
  • [14] Explainable artificial intelligence (XAI) in deep learning-based medical image analysis
    van der Velden, Bas H.M.
    Kuijf, Hugo J.
    Gilhuijs, Kenneth G.A.
    Viergever, Max A.
    [J]. Medical Image Analysis, 2022, 79
  • [15] Explainable artificial intelligence (XAI) in deep learning-based medical image analysis
    Van der Velden, Bas H. M.
    Kuijf, Hugo J.
    Gilhuijs, Kenneth G. A.
    Viergever, Max A.
    [J]. MEDICAL IMAGE ANALYSIS, 2022, 79
  • [16] Artificial intelligence and machine learning-based monitoring and design of biological wastewater treatment systems
    Singh, Nitin Kumar
    Yadav, Manish
    Singh, Vijai
    Padhiyar, Hirendrasinh
    Kumar, Vinod
    Bhatia, Shashi Kant
    Show, Pau-Loke
    [J]. BIORESOURCE TECHNOLOGY, 2023, 369
  • [17] Guidelines for Quality Assurance of Machine Learning-Based Artificial Intelligence
    Fujii, Gaku
    Hamada, Koichi
    Ishikawa, Fuyuki
    Masuda, Satoshi
    Matsuya, Mineo
    Myojin, Tomoyuki
    Nishi, Yasuharu
    Ogawa, Hideto
    Toku, Takahiro
    Tokumoto, Susumu
    Tsuchiya, Kazunori
    Ujita, Yasuhiro
    [J]. INTERNATIONAL JOURNAL OF SOFTWARE ENGINEERING AND KNOWLEDGE ENGINEERING, 2020, 30 (11-12) : 1589 - 1606
  • [18] An interpretable schizophrenia diagnosis framework using machine learning and explainable artificial intelligence
    Shivaprasad, Samhita
    Chadaga, Krishnaraj
    Dias, Cifha Crecil
    Sampathila, Niranjana
    Prabhu, Srikanth
    [J]. SYSTEMS SCIENCE & CONTROL ENGINEERING, 2024, 12 (01)
  • [19] Explainable artificial intelligence and machine learning: A reality rooted perspective
    Emmert-Streib, Frank
    Yli-Harja, Olli
    Dehmer, Matthias
    [J]. WILEY INTERDISCIPLINARY REVIEWS-DATA MINING AND KNOWLEDGE DISCOVERY, 2020, 10 (06)
  • [20] Explainable artificial intelligence for machine learning prediction of bandgap energies
    Masuda, Taichi
    Tanabe, Katsuaki
    [J]. Journal of Applied Physics, 2024, 136 (17)