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Evaluation of State-Resolved Reaction Probabilities and Their Application in Population Models for He, H, and H 2

机译:状态分辨的反应概率评估及其在He,H和H 2的种群模型中的应用

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Population models are a prerequisite for performing qualitative analysis of population densities measured in plasmas or predicting the dependence of plasma emission on parameter variations. Models for atomic helium and hydrogen as well as molecular hydrogen in low-pressure plasmas are introduced. The cross-sections and transition probabilities used as input in the atomic models are known very accurately, and thus a benchmark of these models against experiments is very successful. For H 2 , in contrast, significant deviations exist between reaction probabilities taken from different literature sources. The reason for this is the more complex internal structure of molecules compared to atoms. Vibrationally resolved models are applied to demonstrate how these deviations affect the model results. Steps towards a consistent input data set are presented: vibrationally resolved Franck–Condon factors, transition probabilities, and ionization cross-sections have been calculated and are available now. Additionally, ro-vibrational models for selected transitions are applied successfully to low-density, low-temperature plasmas. For further improving the accuracy of population models for H 2 , however, it is necessary to establish a comprehensive data set for ro-vibrationally resolved excitation cross-sections based on the most recent calculation techniques.
机译:人口模型是对血浆中测得的人口密度进行定性分析或预测血浆发射对参数变化的依赖的先决条件。介绍了低压等离子体中原子氦和氢以及分子氢的模型。原子模型中用作输入的横截面和跃迁概率非常准确,因此这些模型相对于实验的基准非常成功。相反,对于H 2,从不同文献来源获得的反应概率之间存在显着差异。其原因是与原子相比,分子的内部结构更为复杂。应用振动解析模型来演示这些偏差如何影响模型结果。提出了建立一致的输入数据集的步骤:已经计算出了振动解析的Franck-Condon因子,跃迁概率和电离截面,现在可以使用。此外,用于选定过渡的旋转振动模型已成功应用于低密度,低温等离子体。但是,为了进一步提高H 2总体模型的准确性,有必要基于最新的计算技术为旋转振动解析的激励横截面建立一个全面的数据集。

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