基于 RRKM/主方程的动力学预测的正向和反向不确定性分析:乙基与氧气的案例研究

IF 1.5 4区 化学 Q4 CHEMISTRY, PHYSICAL
Qifeng Hou, Yiru Wang, Xiaoxia Yao, Yifei Zhu, Xiaoqing Wu, Can Huang, Yun Wu, Bin Yang, Feng Zhang
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引用次数: 0

摘要

在燃烧动力学建模领域,通常需要使用数千种反应来描述数百种物质的化学转化。值得注意的是,通过 RRKM/主方程(ME)模型得出的理论预测速率系数和分支比率在动力学建模中发挥着越来越重要的作用。因此,在广泛的工作条件下尽量减少理论预测的不确定性对于完善动力学模型至关重要。本研究以乙基 (C2H5) + 氧气 (O2) 反应体系为研究对象,展示了结合正向和反向不确定性分析,可进一步约束已通过高级量子化学方法计算出的速率系数和支化比。采用人工神经网络-高维模型表示法(ANN-HDMR)进行正向全局不确定性分析,选择影响 C2H5 + O2 总速率系数和 C2H5 + O2 = C2H4 + HO2 (C1) 支化比的关键参数。然后采用贝叶斯方法进行反向不确定性分析,根据灵敏度熵选定的工作条件下的实验数据完善关键输入参数。虽然目标 RRKM/ME 模型系统是建立在高水平理论计算的基础上,但结合正向和反向不确定性分析,仍能在广泛的工况条件下降低 C2H5 + O2 总速率系数和 C1 支化比预测值的不确定性。具体来说,在 298 K 和 1 Torr 条件下,总速率系数和 C1 支化率的不确定性已从 1.46 和 1.52 降至 1.30 和 1.36。本研究提出的分析过程基于 RRKM/ME 模型,有效地将一种工况下精确测量数据的约束能力外推到宽泛的工况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forward and reverse uncertainty analyses for RRKM/master equation based kinetic predictions: A case study of ethyl with oxygen

In the realm of combustion kinetic modeling, the norm involves employing thousands of reactions to delineate the chemical conversion of hundreds of species. Notably, theoretically predicted rate coefficients and branching ratios, derived through the RRKM/master equation (ME) model, play an increasing role in kinetic modeling. Thus minimizing the uncertainty of theoretical prediction across wide working conditions is crucial to refine a kinetic model. The present study takes ethyl (C2H5) + oxygen (O2) reaction system to show that combined forward and reverse uncertainty analysis can be used to further constrain calculated rate coefficients and branching ratios, which were already calculated by high-level quantum chemistry methods. Forward global uncertainty analysis with the artificial neural network-high dimensional model representation (ANN-HDMR) method is employed to select key parameters affecting total rate coefficients of C2H5 + O2 and branching ratios of C2H5 + O2 = C2H4 + HO2 (C1). Reverse uncertainty analysis with Bayesian method was then applied to refine the key input parameters based on experimental data at working conditions selected by sensitivity entropy. Although the target RRKM/ME model system was built on high level theoretical calculations, the combined forward and reverse uncertainty analyses are still able to reduce uncertainties of predicted total rate coefficients of C2H5 + O2 and branching ratios for C1 across a wide range of working conditions. Specifically, the uncertainties of total rate coefficient and C1 branching ratio have been reduced from 1.46 and 1.52 to 1.30 and 1.36 at 298 K and 1 Torr. The analysis process proposed in the present work effectively extrapolates the constraint ability of accurate measured data at one condition to wide working conditions based on the RRKM/ME model.

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来源期刊
CiteScore
3.30
自引率
6.70%
发文量
74
审稿时长
3 months
期刊介绍: As the leading archival journal devoted exclusively to chemical kinetics, the International Journal of Chemical Kinetics publishes original research in gas phase, condensed phase, and polymer reaction kinetics, as well as biochemical and surface kinetics. The Journal seeks to be the primary archive for careful experimental measurements of reaction kinetics, in both simple and complex systems. The Journal also presents new developments in applied theoretical kinetics and publishes large kinetic models, and the algorithms and estimates used in these models. These include methods for handling the large reaction networks important in biochemistry, catalysis, and free radical chemistry. In addition, the Journal explores such topics as the quantitative relationships between molecular structure and chemical reactivity, organic/inorganic chemistry and reaction mechanisms, and the reactive chemistry at interfaces.
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