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首页> 外文期刊>AIChE Journal >A gas pressure gradient-dependent subgrid drift velocity model for drag prediction in fluidized gas-particle flows
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A gas pressure gradient-dependent subgrid drift velocity model for drag prediction in fluidized gas-particle flows

机译:流化气体粒子流动拖曳预测的气体压力梯度依赖性副漂移速度模型

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摘要

Due to the linear correlation between the subgrid drift velocity and the filtered drag force, modeling the drift velocity would be an alternative way to obtain the filtered drag force for coarse-grid simulations. This work aims to improve the predictability of models for the drift velocity using a new effective marker, the filtered gas pressure gradient, which is identified by momentum balance analysis. New models are constructed based on conditional averaging of the results obtained from fine-grid two-fluid model simulations of three-dimensional unbounded fluidized systems. A priori assessment is presented with the comparison between the proposed models and the best available Smagorinsky-type model with dynamic adjustment technique proposed in the literature. Results show that the proposed models give satisfactory performance. More important, the proposed models are demonstrated to have a better adaptability for cases under various physical conditions than the Smagorinsky-type model.
机译:由于子耕地漂移速度与过滤的拖动之间的线性相关性,建模漂移速度是获得粗栅模拟的过滤的拖曳力的替代方法。 这项工作旨在使用新的有效标记来改善漂移速度模型的可预测性,该方法通过动量平衡分析来鉴定过滤的气体压力梯度。 基于从三维无界化系统的微电网双流体模拟所获得的结果的条件平均来构建新模型。 在文献中提出的模型和最佳可用的Smagorinsky型模型的比较,提出了先验的评估,并在文献中提出了动态调整技术。 结果表明,拟议的型号表现出令人满意的性能。 更重要的是,所提出的模型被证明在不同的物理条件下具有比SMAGORINSKY型模型在各种物理条件下具有更好的适应性。

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