Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions

The minimum fluidization velocity (Umf) and maximum pressure drop (ΔPmax) of a gas-solid fluidized bed are important hydrodynamic characteristics. The accurate information of these characteristics is required for obtaining the optimum design and operating conditions. In this study, a multi-layer per...

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Main Authors: Krittin Korkerd, Chaiwat Soanuch, Dimitri Gidaspow, Pornpote Piumsomboon, Benjapon Chalermsinsuwan
Format: Article
Language:English
Published: Elsevier 2021-07-01
Series:South African Journal of Chemical Engineering
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S1026918521000196
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spelling doaj-50dfc38ec27945ce9c4e67537abe63132021-07-09T04:42:19ZengElsevierSouth African Journal of Chemical Engineering1026-91852021-07-01376173Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributionsKrittin Korkerd0Chaiwat Soanuch1Dimitri Gidaspow2Pornpote Piumsomboon3Benjapon Chalermsinsuwan4Department of Chemical Technology, Faculty of Science, Chulalongkorn University, 254 Phyathai Road, Wangmai, Pathumwan, Bangkok 10330, ThailandDepartment of Chemical Technology, Faculty of Science, Chulalongkorn University, 254 Phyathai Road, Wangmai, Pathumwan, Bangkok 10330, ThailandDepartment of Chemical and Biological Engineering, Armour College of Engineering, Illinois Institute of Technology, 10 West 35th Street, Chicago, IL 60616, United StatesDepartment of Chemical Technology, Faculty of Science, Chulalongkorn University, 254 Phyathai Road, Wangmai, Pathumwan, Bangkok 10330, Thailand; Center of Excellence on Petrochemical and Materials Technology, Chulalongkorn University, 254 Phayathai Road, Wangmai, Pathumwan, Bangkok 10330, ThailandDepartment of Chemical Technology, Faculty of Science, Chulalongkorn University, 254 Phyathai Road, Wangmai, Pathumwan, Bangkok 10330, Thailand; Center of Excellence on Petrochemical and Materials Technology, Chulalongkorn University, 254 Phayathai Road, Wangmai, Pathumwan, Bangkok 10330, Thailand; Advanced Computational Fluid Dynamics Research Unit, Chulalongkorn University, 254 Phyathai Road, Wangmai, Pathumwan, Bangkok 10330, Thailand; Corresponding author at: Department of Chemical Technology, Faculty of Science, Chulalongkorn University, 254 Phyathai Road, Wangmai, Pathumwan, Bangkok 10330, Thailand.The minimum fluidization velocity (Umf) and maximum pressure drop (ΔPmax) of a gas-solid fluidized bed are important hydrodynamic characteristics. The accurate information of these characteristics is required for obtaining the optimum design and operating conditions. In this study, a multi-layer perceptron (MLP) based on an artificial neural network was developed to accurately predict these hydrodynamic characteristics dealing with the influence of the particle size distribution (PSD). The MLP model parameters were adjusted by the backpropagation learning algorithm using wide ranges of experimental data from conducted experiments and collected literature. The five influential dimensionless groups of parameters were used for simultaneous estimation of the Umf and ΔPmax. Statistical accuracy analysis confirmed that a two-layer feedforward with thirteen hidden neurons was the best architecture for the MLP model in terms of absolute average relative deviation (AARD), mean square error (MSE) and regression coefficient (R2). The accuracy of Umf and ΔPmax was 10.36% and 8.35% with AARD, 1.7 × 10−4 and 0.0188 with MSE, and 0.9935 and 0.9152 by R2, respectively. Besides, the predictive performance of the developed model was compared with other literature models. The comparison shows the performance of the developed MLP model was acceptable.http://www.sciencedirect.com/science/article/pii/S1026918521000196Artificial neural networksBed inventoryBed temperatureMaximum pressure dropMinimum fluidization velocityParticle size distribution (PSD)
collection DOAJ
language English
format Article
sources DOAJ
author Krittin Korkerd
Chaiwat Soanuch
Dimitri Gidaspow
Pornpote Piumsomboon
Benjapon Chalermsinsuwan
spellingShingle Krittin Korkerd
Chaiwat Soanuch
Dimitri Gidaspow
Pornpote Piumsomboon
Benjapon Chalermsinsuwan
Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions
South African Journal of Chemical Engineering
Artificial neural networks
Bed inventory
Bed temperature
Maximum pressure drop
Minimum fluidization velocity
Particle size distribution (PSD)
author_facet Krittin Korkerd
Chaiwat Soanuch
Dimitri Gidaspow
Pornpote Piumsomboon
Benjapon Chalermsinsuwan
author_sort Krittin Korkerd
title Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions
title_short Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions
title_full Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions
title_fullStr Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions
title_full_unstemmed Artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions
title_sort artificial neural network model for predicting minimum fluidization velocity and maximum pressure drop of gas fluidized bed with different particle size distributions
publisher Elsevier
series South African Journal of Chemical Engineering
issn 1026-9185
publishDate 2021-07-01
description The minimum fluidization velocity (Umf) and maximum pressure drop (ΔPmax) of a gas-solid fluidized bed are important hydrodynamic characteristics. The accurate information of these characteristics is required for obtaining the optimum design and operating conditions. In this study, a multi-layer perceptron (MLP) based on an artificial neural network was developed to accurately predict these hydrodynamic characteristics dealing with the influence of the particle size distribution (PSD). The MLP model parameters were adjusted by the backpropagation learning algorithm using wide ranges of experimental data from conducted experiments and collected literature. The five influential dimensionless groups of parameters were used for simultaneous estimation of the Umf and ΔPmax. Statistical accuracy analysis confirmed that a two-layer feedforward with thirteen hidden neurons was the best architecture for the MLP model in terms of absolute average relative deviation (AARD), mean square error (MSE) and regression coefficient (R2). The accuracy of Umf and ΔPmax was 10.36% and 8.35% with AARD, 1.7 × 10−4 and 0.0188 with MSE, and 0.9935 and 0.9152 by R2, respectively. Besides, the predictive performance of the developed model was compared with other literature models. The comparison shows the performance of the developed MLP model was acceptable.
topic Artificial neural networks
Bed inventory
Bed temperature
Maximum pressure drop
Minimum fluidization velocity
Particle size distribution (PSD)
url http://www.sciencedirect.com/science/article/pii/S1026918521000196
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