首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Numerical simulation of soot formation in a turbulent diffusion flame: comparison among three soot formation models
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Numerical simulation of soot formation in a turbulent diffusion flame: comparison among three soot formation models

机译:湍流扩散火焰中烟尘形成的数值模拟:三种烟尘形成模型的比较

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摘要

Combustion and soot formation in a turbulent diffusion flame are simulated. Chemistry of combustion is treated with a detailed reaction mechanism that employs 49 species and 277 reactions. Turbulence is taken into account via the corrected κ-ε model. Radiation heat transfer from flame is modelled by the P-1 model. An empirical model proposed by Khan and Greeves and two semi-empirical models proposed by Tesner and Lindstedt are used to simulate the soot formation in the flame. Khan and Greeves model showed to underpredict the maximum soot volume fraction. Nevertheless, the main shortcoming of Khan and Greeves model which undermines the applicability of this model to prediction of soot formation in turbulent diffusion flames is the inability to locate the highly sooting regions of the flame properly. Tesner model underpredicts the soot formation significantly, although the predicted shapes of the soot profiles are in accordance with the experimental measurements. Lindstedt model performs well in predicting both the maximum soot formation and the soot profile shapes in the chamber. Therefore, Lindstedt model can be considered as the most suitable model for the prediction of soot formation in turbulent diffusion flames.
机译:模拟了湍流扩散火焰中的燃烧和烟灰形成。燃烧化学采用详细的反应机理进行处理,该机理采用49种反应和277个反应。通过校正后的κ-ε模型考虑了湍流。 P-1模型可以模拟火焰辐射的热传递。使用Khan和Greeves提出的经验模型以及Tesner和Lindstedt提出的两个半经验模型来模拟火焰中的烟尘形成。 Khan和Greeves模型显示低估了最大烟灰体积分数。然而,Khan and Greeves模型的主要缺点(该缺陷削弱了该模型在预测湍流扩散火焰中烟灰形成的适用性方面的能力)是无法正确定位火焰的高烟灰区域。尽管预测的烟灰轮廓形状与实验测量一致,但Tesner模型严重预测了烟灰的形成。 Lindstedt模型在预测室内最大烟灰形成和烟灰轮廓形状方面均表现出色。因此,Lindstedt模型可以被认为是最适合预测湍流扩散火焰中烟灰形成的模型。

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