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Transient multi-objective optimization of solar and fuel cell power generation systems with hydrogen storage for peak-shaving applications.

Authors :
Hai, Tao
Kumar, Amit
Aminian, Saman
Mahariq, Ibrahim
Sillanpää, Mika
Fouad, Hassan
El-Shafai, Walid
Source :
International Journal of Hydrogen Energy. Apr2024, Vol. 64, p220-235. 16p.
Publication Year :
2024

Abstract

The present article introduces an innovative solution to improve performance efficiency while shaving the demand during peak hours. The idea focuses on efficient gas turbine and Rankine cycle hybridization for power and hydrogen production based on high-temperature heliostat solar towers. The proposed model is simulated via TRNSYS software to assess the performance transiently and then optimized through the artificial neural network in MATLAB program to minimize the calculation time. The key economic, environmental, and energy indicators are evaluated, compared, and optimized for this. According to the effect of main design parameters, including gas turbine inlet temperature, mass flow rate, and heliostat area, on the system's indicators, there is a conflictive trend among the power productivity, cost, and emission index, signifying the optimization significance. The optimization results show that the net power, efficiency, cost, and CO 2 emissions are 298,300 GJ, 30.7%, 3.6 M$, and 20,760 tonnes under optimal conditions. This working condition is obtained by electing turbine inlet temperature, solar area, and airflow rate of 1087 °C, 91,200 m2, and 68,817, respectively. At this condition, while 71.18% of the yearly primary energy is provided by the sun, biomass meets the rest, showing the importance of renewable combination to achieve the highest independence from the grid. Finally, the system can generate an additional 585 kg/day of hydrogen that could be used in relevant industries. • A novel smart system based on biomass and solar hybridization is introduced. • A new hydrogen production/injection method is applied to improve the efficiency. • An artificial neural network model is added to the optimization to reduce the time. • The proposed smart system can generate an extra hydrogen of 585 kg per day. • The optimization achieves an efficiency of 30.7% and emissions of 20,760 tonnes. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03603199
Volume :
64
Database :
Academic Search Index
Journal :
International Journal of Hydrogen Energy
Publication Type :
Academic Journal
Accession number :
176760364
Full Text :
https://doi.org/10.1016/j.ijhydene.2024.02.282