Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit
According to the literature, there is a research gap concerning the practical heat recovery in solar-driven systems that have the capability to produce liquid hydrogen. In this study, an innovative combination of dual-loop solar-driven organic Rankine cycle and liquefied natural gas (LNG) heat recov...
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2-s2.0-85174718972 Hai T.; Alhaider M.M.; Ghodratallah P.; kumar singh P.; Mohammed Alhomayani F.; Rajab H. Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit 2024 Applied Thermal Engineering 237 10.1016/j.applthermaleng.2023.121660 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85174718972&doi=10.1016%2fj.applthermaleng.2023.121660&partnerID=40&md5=80b246fe27157672f5a57a71e30febe0 According to the literature, there is a research gap concerning the practical heat recovery in solar-driven systems that have the capability to produce liquid hydrogen. In this study, an innovative combination of dual-loop solar-driven organic Rankine cycle and liquefied natural gas (LNG) heat recovery is designed to produce and liquefy hydrogen. The proposed system includes parabolic trough solar collectors (PTSCs), a Rankine cycle, a dual-loop organic Rankine cycle, LNG regasification process, proton exchange membrane (PEM) electrolyzer, and Claude hydrogen liquefaction cycle. A data-driven method is developed to analyze the system from techno-economic and environmental perspectives. The results show that LNG energy recovery improves the liquefaction work by as much as 7.96 kWh/kgH2. It is also concluded that the optimum compaction pressure range for the liquefaction cycle is 4.67 MPa, which is associated with better results. In these conditions, liquefaction work, liquefaction Coefficient of Performance (COP), and liquefaction exergy efficiency are 164.6 kJ/kg, 0.157 and 17.05%, respectively. To find optimum operating conditions, a supervised learning approach is applied to the developed code and the trained network is optimized using the genetic algorithm (GA). The optimization results reveal that a 10.98 $/h increase in total cost rate causes an 18% improvement in hydrogen production rate. © 2023 Elsevier Ltd Elsevier Ltd 13594311 English Article |
author |
Hai T.; Alhaider M.M.; Ghodratallah P.; kumar singh P.; Mohammed Alhomayani F.; Rajab H. |
spellingShingle |
Hai T.; Alhaider M.M.; Ghodratallah P.; kumar singh P.; Mohammed Alhomayani F.; Rajab H. Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit |
author_facet |
Hai T.; Alhaider M.M.; Ghodratallah P.; kumar singh P.; Mohammed Alhomayani F.; Rajab H. |
author_sort |
Hai T.; Alhaider M.M.; Ghodratallah P.; kumar singh P.; Mohammed Alhomayani F.; Rajab H. |
title |
Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit |
title_short |
Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit |
title_full |
Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit |
title_fullStr |
Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit |
title_full_unstemmed |
Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit |
title_sort |
Techno-economic-environmental study and artificial intelligence-assisted optimization of a multigeneration power plant based on a gas turbine cycle along with a hydrogen liquefaction unit |
publishDate |
2024 |
container_title |
Applied Thermal Engineering |
container_volume |
237 |
container_issue |
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doi_str_mv |
10.1016/j.applthermaleng.2023.121660 |
url |
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85174718972&doi=10.1016%2fj.applthermaleng.2023.121660&partnerID=40&md5=80b246fe27157672f5a57a71e30febe0 |
description |
According to the literature, there is a research gap concerning the practical heat recovery in solar-driven systems that have the capability to produce liquid hydrogen. In this study, an innovative combination of dual-loop solar-driven organic Rankine cycle and liquefied natural gas (LNG) heat recovery is designed to produce and liquefy hydrogen. The proposed system includes parabolic trough solar collectors (PTSCs), a Rankine cycle, a dual-loop organic Rankine cycle, LNG regasification process, proton exchange membrane (PEM) electrolyzer, and Claude hydrogen liquefaction cycle. A data-driven method is developed to analyze the system from techno-economic and environmental perspectives. The results show that LNG energy recovery improves the liquefaction work by as much as 7.96 kWh/kgH2. It is also concluded that the optimum compaction pressure range for the liquefaction cycle is 4.67 MPa, which is associated with better results. In these conditions, liquefaction work, liquefaction Coefficient of Performance (COP), and liquefaction exergy efficiency are 164.6 kJ/kg, 0.157 and 17.05%, respectively. To find optimum operating conditions, a supervised learning approach is applied to the developed code and the trained network is optimized using the genetic algorithm (GA). The optimization results reveal that a 10.98 $/h increase in total cost rate causes an 18% improvement in hydrogen production rate. © 2023 Elsevier Ltd |
publisher |
Elsevier Ltd |
issn |
13594311 |
language |
English |
format |
Article |
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record_format |
scopus |
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Scopus |
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1809678472505720832 |