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Engine Combustion System Optimization Using Computational Fluid Dynamics and Machine Learning: A Methodological Approach

机译:发动机燃烧系统优化使用计算流体动力学和机器学习:一种方法论方法

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摘要

Gasoline compression ignition (GCI) engines are considered an attractive alternative to traditional spark-ignition and diesel engines. In this work, a Machine Learning-Grid Gradient Ascent (ML-GGA) approach was developed to optimize the performance of internal combustion engines. ML offers a pathway to transform complex physical processes that occur in a combustion engine into compact informational processes. The developed ML-GGA model was compared with a recently developed Machine Learning-Genetic Algorithm (ML-GA). Detailed investigations of optimization solver parameters and variable limit extension were performed in the present ML-GGA model to improve the accuracy and robustness of the optimization process. Detailed descriptions of the different procedures, optimization tools, and criteria that must be followed for a successful output are provided here. The developed ML-GGA approach was used to optimize the operating conditions (case 1) and the piston bowl design (case 2) of a heavy-duty diesel engine running on a gasoline fuel with a research octane number (RON) of 80. The ML-GGA approach yielded >2% improvements in the merit function, compared with the optimum obtained from a thorough computational fluid dynamics (CFD) guided system optimization. The predictions from the ML-GGA approach were validated with engine CFD simulations. This study demonstrates the potential of ML-GGA to significantly reduce the time needed for optimization problems, without loss in accuracy compared with traditional approaches.
机译:汽油压缩点火(GCI)发动机被认为是传统的火花点火和柴油发动机的有吸引力的替代品。在这项工作中,开发了一种机器学习 - 网格梯度上升(ML-GGA)方法以优化内燃机的性能。 ML提供了一种途径,用于将在内燃机中发生的复杂物理过程转换为紧凑的信息过程。将开发的ML-GGA模型与最近开发的机器学习遗传算法(ML-GA)进行比较。在本发明的ML-GGA模型中进行了优化求解参数和可变极限扩展的详细研究,以提高优化过程的精度和鲁棒性。此处提供了必须遵循成功输出的不同程序,优化工具和标准的详细说明。开发的ML-GGA方法用于优化在汽油燃料上运行的重型柴油发动机的操作条件(壳体1)和活塞碗设计(壳体2),其中辛烷值(RON)为80。该ML-GGA方法在优异功能中产生了> 2%的改进,与从彻底计算流体动力学(CFD)引导系统优化中获得的最佳值相比。通过发动机CFD模拟验证了ML-GGA方法的预测。本研究表明ML-GGA的潜力显着减少了优化问题所需的时间,而无需传统方法。

著录项

  • 来源
    《Journal of Energy Resources Technology》 |2021年第2期|022306.1-022306.11|共11页
  • 作者单位

    Transport Technologies Division R&DC Saudi Aramco Dhahran 31311 Eastern Province Saudi Arabia;

    King Abdullah University of Science and Technology Clean Combustion Research Center Thuwal 23955 Saudi Arabia;

    Aramco Services Company Aramco Research Center-Detroit Novi MI 48377;

    Aramco Services Company Aramco Research Center-Detroit Novi MI 48377;

    Cummins Technical Center Columbus IN 46237;

    Energy Systems Division Argonne National Laboratory Lemont IL 60439;

    Energy Systems Division Argonne National Laboratory Lemont IL 60439;

    Friendship Systems AG Potsdam 14482 Germany;

    Friendship Systems AG Potsdam 14482 Germany;

    King Abdullah University of Science and Technology Clean Combustion Research Center Thuwal 23955 Saudi Arabia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    machine learning; internal combustion engine; optimization;

    机译:机器学习;内燃机;优化;

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