Machine learning-aided modeling of dry pressure drop in rotating packed bed reactors

被引:0
|
作者
Ahmed M. Alatyar
Abdallah S. Berrouk
机构
[1] Khalifa University of Science and Technology,Mechanical Engineering Department
[2] Khalifa University of Science and Technology,Center for Catalysis and Separation (CeCas)
[3] Tanta University,Mechanical Power Engineering Department, Faculty of Engineering
来源
Acta Mechanica | 2023年 / 234卷
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摘要
The challenge of reducing the carbon footprint of many chemical processes and bringing down their development costs can be achieved through process intensification (PI). Different PI technologies have been investigated over the years with rotating packed bed (RPB) technology receiving much of the attention for its potential of significant intensification in terms of hardware size, capital expenditure and operating costs. In this study, we present a complete derivation of the dry pressure drop in RPB that differs from the published models in considering the radial distribution of the gas tangential velocity as well as the viscous shear stress between gas layers. Aorous media approach is adopted to model the viscous and inertial packing resistance forces. The inertial resistance coefficient is derived using machine learning (ML) techniques based on a part of the published data on RPB dry pressure drop (training set). The data learning step relies on the minimization of the absolute error between the pressure drop evaluated from a one-dimensional mathematical model and experimental data to determine the optimum inertial resistance coefficient. Then, an artificial neural network (ANN) is implemented to relate the inertial resistance coefficient to gas flow rate and rotating speed. Finally, the other part of the published data is used to test and validate the proposed approach based on the total pressure drop. The results show that the error in predicting RPB dry pressure drop using the semiempirical model can be reduced from 25 to 2% when a machine learning algorithm is used to estimate the resistance coefficients instead of relying on Ergun's model.
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页码:1275 / 1291
页数:16
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