Machine-learning enhanced analysis of mixed biothermal convection of single particle and hybrid nanofluids within a complex configuration

Alizadeh, R., Mohebbi Najm Abad, J., Fattahi, A., Mesgarpour, M., Doranehgard, M. H., Xiong, Q. and Karimi, N. (2022) Machine-learning enhanced analysis of mixed biothermal convection of single particle and hybrid nanofluids within a complex configuration. Industrial and Engineering Chemistry Research, 61(24), pp. 8478-8494. (doi: 10.1021/acs.iecr.1c03100)

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Abstract

Transport phenomena in a hybrid or single-particle nanofluid over a conical body embedded inside a porous medium are investigated. The fluid contains homogeneously mixed nanoparticles and live cells that are able to migrate, collectively sculpturing a thermo-biosolutal system. Transport processes including mixed convection as well as species and cell transfer are simulated using a similarity technique. As the problem involves a large number of parameters with complicated interactions, machine learning is applied to predict a wide range of parametric variations. The simulation data are used to build an intelligent tool based on an artificial neural network to predict the behavior of the system. This also aids the development of precise correlations for nondimensional parameters dominating the transport phenomena. The results indicate that lower values of the motile Lewis number and a higher mixed convection parameter enhance the Nusselt number. However, it is contained respectively by the increment of the Peclet number and increases in the bio Rayleigh number. It is further shown that an increase in the Prandtl number enhances the Sherwood number and makes the motile microorganisms more uniform. The Peclet number directly influences the transport of heat, mass, and microorganisms. This study clearly demonstrates the abilities of combining numerical simulations with machine learning to significantly extend and enrich analysis of problems with large numbers of variables. The findings also pave the way for predicting behaviors of complex thermo-biosolutal systems without resorting to computationally demanding simulations.

Item Type:Articles
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Karimi, Dr Nader
Authors: Alizadeh, R., Mohebbi Najm Abad, J., Fattahi, A., Mesgarpour, M., Doranehgard, M. H., Xiong, Q., and Karimi, N.
College/School:College of Science and Engineering > School of Engineering
Journal Name:Industrial and Engineering Chemistry Research
Publisher:American Chemical Society
ISSN:0888-5885
ISSN (Online):1520-5045
Published Online:19 November 2021
Copyright Holders:Copyright © 2021 American Chemical Society
First Published:First published in Industrial and Engineering Chemistry Research 61(24): 8478-8494
Publisher Policy:Reproduced in accordance with the publisher copyright policy

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