Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production

In recent years paying attention to the generation of clean and sustainable power and fresh water along with having lower cost and emission has increased. In the present research, a novel scheme for generating efficient power using the flame-assisted fuel cell is introduced, which has higher efficie...

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Published in:International Journal of Hydrogen Energy
Main Author: Hai T.; Alizadeh A.; Ali M.A.; Dhahad H.A.; Goyal V.; Mohammed Metwally A.S.; Ullah M.
Format: Article
Language:English
Published: Elsevier Ltd 2023
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85151829810&doi=10.1016%2fj.ijhydene.2023.03.196&partnerID=40&md5=75d6694619eff1848355f3bb8792c108
id 2-s2.0-85151829810
spelling 2-s2.0-85151829810
Hai T.; Alizadeh A.; Ali M.A.; Dhahad H.A.; Goyal V.; Mohammed Metwally A.S.; Ullah M.
Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
2023
International Journal of Hydrogen Energy
48
66
10.1016/j.ijhydene.2023.03.196
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85151829810&doi=10.1016%2fj.ijhydene.2023.03.196&partnerID=40&md5=75d6694619eff1848355f3bb8792c108
In recent years paying attention to the generation of clean and sustainable power and fresh water along with having lower cost and emission has increased. In the present research, a novel scheme for generating efficient power using the flame-assisted fuel cell is introduced, which has higher efficiency than ordinary fuel cells due to increased hydrogen concentration in the flame-rich combustion chamber. The waste heat is then introduced to a multi-effect desalination unit through a heat recovery steam generation unit to generate fresh, drinkable water. In order to make the system have higher efficiency, lower cost, and lower emission, the machine learning techniques are applied to optimize the operational conditions of the system, and find out the best solution point based on the cutting-edge algorithm of the grey wolf. Also, a complete techno-economic analysis and a parametric study are necessary to figure out the best solution point based on the TOPSIS method. The results indicate that the maximum value of exergy efficiency and drinkable water generation is 67.5% and 3.4 kg/s, respectively, while the minimum energy cost is 90.1 $/MWh. Moreover, results show that for the second optimization scenario considering the drinkable water production, energy cost, and pollution index as the objectives, the net produced power, energy efficiency, exergy efficiency, and water mass flowrate improve by around 1059 kW, 5.1%, 1.3%, and 1.6 kg/s than the design condition. Besides, energy cost and emission index are reduced by about 22 $/MWh and 51.9 kg/MWh, respectively. © 2023
Elsevier Ltd
3603199
English
Article

author Hai T.; Alizadeh A.; Ali M.A.; Dhahad H.A.; Goyal V.; Mohammed Metwally A.S.; Ullah M.
spellingShingle Hai T.; Alizadeh A.; Ali M.A.; Dhahad H.A.; Goyal V.; Mohammed Metwally A.S.; Ullah M.
Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
author_facet Hai T.; Alizadeh A.; Ali M.A.; Dhahad H.A.; Goyal V.; Mohammed Metwally A.S.; Ullah M.
author_sort Hai T.; Alizadeh A.; Ali M.A.; Dhahad H.A.; Goyal V.; Mohammed Metwally A.S.; Ullah M.
title Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
title_short Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
title_full Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
title_fullStr Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
title_full_unstemmed Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
title_sort Machine learning-assisted tri-objective optimization inspired by grey wolf behavior of an enhanced SOFC-based system for power and freshwater production
publishDate 2023
container_title International Journal of Hydrogen Energy
container_volume 48
container_issue 66
doi_str_mv 10.1016/j.ijhydene.2023.03.196
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85151829810&doi=10.1016%2fj.ijhydene.2023.03.196&partnerID=40&md5=75d6694619eff1848355f3bb8792c108
description In recent years paying attention to the generation of clean and sustainable power and fresh water along with having lower cost and emission has increased. In the present research, a novel scheme for generating efficient power using the flame-assisted fuel cell is introduced, which has higher efficiency than ordinary fuel cells due to increased hydrogen concentration in the flame-rich combustion chamber. The waste heat is then introduced to a multi-effect desalination unit through a heat recovery steam generation unit to generate fresh, drinkable water. In order to make the system have higher efficiency, lower cost, and lower emission, the machine learning techniques are applied to optimize the operational conditions of the system, and find out the best solution point based on the cutting-edge algorithm of the grey wolf. Also, a complete techno-economic analysis and a parametric study are necessary to figure out the best solution point based on the TOPSIS method. The results indicate that the maximum value of exergy efficiency and drinkable water generation is 67.5% and 3.4 kg/s, respectively, while the minimum energy cost is 90.1 $/MWh. Moreover, results show that for the second optimization scenario considering the drinkable water production, energy cost, and pollution index as the objectives, the net produced power, energy efficiency, exergy efficiency, and water mass flowrate improve by around 1059 kW, 5.1%, 1.3%, and 1.6 kg/s than the design condition. Besides, energy cost and emission index are reduced by about 22 $/MWh and 51.9 kg/MWh, respectively. © 2023
publisher Elsevier Ltd
issn 3603199
language English
format Article
accesstype
record_format scopus
collection Scopus
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