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Conventional and data‐driven modeling of filtered drag, heat transfer, and reaction rate in gas–particle flows
Author(s) -
Zhu LiTao,
Ouyang Bo,
Lei He,
Luo ZhengHong
Publication year - 2021
Publication title -
aiche journal
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.958
H-Index - 167
eISSN - 1547-5905
pISSN - 0001-1541
DOI - 10.1002/aic.17299
Subject(s) - drag , work (physics) , heat transfer , particle (ecology) , mechanics , filter (signal processing) , drag coefficient , thermodynamics , computational fluid dynamics , reaction rate , chemistry , physics , computer science , biochemistry , oceanography , computer vision , geology , catalysis
This study presents conventional and artificial neural network‐based data‐driven modeling (DDM) methods to model simultaneously the filtered mesoscale drag, heat transfer and reaction rate in gas–particle flows. The dataset used for developing the DDM is filtered from highly resolved simulations closed by our recently formulated microscopic drag and heat transfer coefficients (HTCs). Results reveal that the filtered drag correction is nearly independent of filter size when including the filtered gas phase pressure gradient. We further find that the filtered HTC correction critically depends on the added filtered temperature difference marker while the filtered reaction rate correction shows weak dependence on the additional markers. Moreover, compared with conventional correlations, DDM predictions agree better with filtered resolved data. Comparative analysis is also conducted between existing HTC corrections and our work. Finally, the applicability of conventional and data‐driven models coupled with coarse‐grid computational fluid dynamics simulations for pilot‐scale (reactive) gas–particle flows is validated comprehensively.

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