基于机器学习的氢气燃烧动力学机制优化

IF 4.3 3区 工程技术 Q2 ENGINEERING, CHEMICAL
Shuangshuang Cao, Houjun Zhang, Haoyang Liu, Zhiyuan Lyu, Xiangyuan Li, Bin Zhang, You Han
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引用次数: 0

摘要

基于最小化反应网络法的还原机理能有效解决湍流内燃机数值计算中的刚性问题。还原机理动态参数的优化是再现实验数据的关键。本研究以点火延迟时间和层流火焰速度的实验数据为优化目标,基于径向基函数插值法构建的机器学习模型,对 H2 燃烧机理的前指数因子和活化能进行了优化。与原始机理相比,优化后的机理性能显著提高。点火延迟时间和层流火焰速度的误差分别减少了 24.3% 和 26.8%,总平均误差减少了 25%。利用优化机制预测了喷射搅拌反应器的点火延迟时间、层流火焰速度和物种浓度,预测结果与实验结果吻合良好。此外,还通过敏感性分析研究了特定工况下燃烧机理关键反应的差异。因此,该机器学习模型是在各种工况下优化各种燃烧机理的一种工具,具有广阔的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of kinetic mechanism for hydrogen combustion based on machine learning

The reduced mechanism based on the minimized reaction network method can effectively solve the rigidity problem in the numerical calculation of turbulent internal combustion engine. The optimization of dynamic parameters of the reduced mechanism is the key to reproduce the experimental data. In this work, the experimental data of ignition delay times and laminar flame speeds were taken as the optimization objectives based on the machine-learning model constructed by radial basis function interpolation method, and pre-exponential factors and activation energies of H2 combustion mechanism were optimized. Compared with the origin mechanism, the performance of the optimized mechanism was significantly improved. The error of ignition delay times and laminar flame speeds was reduced by 24.3% and 26.8%, respectively, with 25% decrease in total mean error. The optimized mechanism was used to predict the ignition delay times, laminar flame speeds and species concentrations of jet stirred reactor, and the predicted results were in good agreement with experimental results. In addition, the differences of the key reactions of the combustion mechanism under specific working conditions were studied by sensitivity analysis. Therefore, the machine-learning model is a tool with broad application prospects to optimize various combustion mechanisms in a wide range of operating conditions.

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来源期刊
CiteScore
7.60
自引率
6.70%
发文量
868
审稿时长
1 months
期刊介绍: Frontiers of Chemical Science and Engineering presents the latest developments in chemical science and engineering, emphasizing emerging and multidisciplinary fields and international trends in research and development. The journal promotes communication and exchange between scientists all over the world. The contents include original reviews, research papers and short communications. Coverage includes catalysis and reaction engineering, clean energy, functional material, nanotechnology and nanoscience, biomaterials and biotechnology, particle technology and multiphase processing, separation science and technology, sustainable technologies and green processing.
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