Identification of governing physical processes of irregular combustion through machine learning

被引:0
|
作者
K. P. Grogan
M. Ihme
机构
[1] Stanford University,
[2] ATA Engineering,undefined
[3] Inc.,undefined
来源
Shock Waves | 2018年 / 28卷
关键词
Ignition dynamics; Detonation; Combustion; Machine learning;
D O I
暂无
中图分类号
学科分类号
摘要
This study is concerned with the data-driven analysis of predictive parameters associated with regime transition for ignition and detonation. To this end, we introduce machine learning as a technique to analyze the predictive capability of these parameters. Machine learning enables the critical evaluation of combustion regimes from disparate sources and allows for a generalized comparison of the parameters. The parameter set is composed of features that have been found to be effective in classifying ignition regimes and are supposed to have a universality in predicting the regularity of the ignition process. Three different configurations are examined: weak ignition shock tubes, mild ignition in rapid compression machines, and the regularity of cellular detonations. All configurations are demonstrated to show a strong sensitivity to the heat deposition time of the chemical reaction. Additionally, detonations are found to be primarily sensitive to the heat release and show that an increased chemical sensitivity has a regularizing effect when plotted against the heat release rate. The data are found to be well classified with only one or two parameters, indicating that a universal, governing parameter is plausible.
引用
收藏
页码:941 / 954
页数:13
相关论文
共 50 条
  • [21] Identification of Active Molecules against Thrombocytopenia through Machine Learning
    Yang, Youyou
    Gan, Wenli
    Lin, Lei
    Wang, Long
    Wu, Jianming
    Luo, Jiesi
    JOURNAL OF CHEMICAL INFORMATION AND MODELING, 2024, 64 (16) : 6506 - 6520
  • [22] Identification of Toxoplasma gondii adhesins through a machine learning approach
    Valencia-Hernandez, Juan D.
    Acosta-Davila, John Alejandro
    Arenas-Garcia, Juan Camilo
    Garcia-Lopez, Laura Lorena
    Molina-Lara, Diego Alejandro
    Arenas-Soto, Ailan Farid
    Eraso-Ortiz, Diego A.
    Gomez-Marin, Jorge E.
    EXPERIMENTAL PARASITOLOGY, 2022, 238
  • [23] Metabolite identification and molecular fingerprint prediction through machine learning
    Heinonen, Markus
    Shen, Huibin
    Zamboni, Nicola
    Rousu, Juho
    BIOINFORMATICS, 2012, 28 (18) : 2333 - 2341
  • [24] A machine learning framework for evaluating the biodiesel properties for accurate modeling of spray and combustion processes
    Thangaraja, J.
    Zigan, Lars
    Rajkumar, Sundararajan
    FUEL, 2023, 334
  • [25] Learning and Control using Gaussian Processes Towards bridging machine learning and controls for physical systems
    Jain, Achin
    Nghiem, Truong X.
    Morari, Manfred
    Mangharam, Rahul
    2018 9TH ACM/IEEE INTERNATIONAL CONFERENCE ON CYBER-PHYSICAL SYSTEMS (ICCPS 2018), 2018, : 140 - 149
  • [26] Improving the robustness of industrial Cyber-Physical Systems through machine learning-based performance anomaly identification
    Odyurt, Uraz
    Pimentel, Andy D.
    Alonso, Ignacio Gonzalez
    JOURNAL OF SYSTEMS ARCHITECTURE, 2022, 131
  • [27] Advances in Machine Learning Detecting Changeover Processes in Cyber Physical Production Systems
    Engelmann, Bastian
    Schmitt, Simon
    Miller, Eddi
    Braeutigam, Volker
    Schmitt, Jan
    JOURNAL OF MANUFACTURING AND MATERIALS PROCESSING, 2020, 4 (04):
  • [28] Combustion regime identification from machine learning trained by Raman/Rayleigh line measurements
    Wan, Kaidi
    Hartl, Sandra
    Vervisch, Luc
    Domingo, Pascale
    Barlow, Robert S.
    Hasse, Christian
    COMBUSTION AND FLAME, 2020, 219 : 268 - 274
  • [29] Identification of Adequate Combustion in Turbulent Jet Ignition Engines using Machine Learning Algorithms
    Novella, Ricardo
    Pla, Benjamin
    Bares, Pau
    Aramburu, Alexandra
    IFAC PAPERSONLINE, 2021, 54 (10): : 102 - 107
  • [30] Automated Testing of Physical Security: Red Teaming Through Machine Learning
    Thornton, Chris
    Cohen, Ori
    Denzinger, Joerg
    Boyd, Jeffrey E.
    COMPUTATIONAL INTELLIGENCE, 2015, 31 (03) : 465 - 497