TY - JOUR
T1 - -Neural network-based optimization of hydrogen fuel production energy system with proton exchange electrolyzer supported nanomaterial
AU - Hai, Tao
AU - Hikmat Hama Aziz, Kosar
AU - Zhou, Jincheng
AU - Dhahad, Hayder A.
AU - Sharma, Kamal
AU - Fahad Almojil, Sattam
AU - Ibrahim Almohana, Abdulaziz
AU - Fahmi Alali, Abdulrhman
AU - Ismail Kh, Teeba
AU - Mehrez, Sadok
AU - Abdelrahman, Anas
N1 - Publisher Copyright:
© 2022
PY - 2023/1/15
Y1 - 2023/1/15
N2 - In this research, we try to investigate a solar-geothermal energy system. This system includes three turbines for power production, a PEM electrolyzer for hydrogen production, and a thermoelectric for generating electricity from excess heat. In addition, the seawater will be passed through the osmotic cycle to gain fresh water. The required power for this osmotic cycle will be obtained through the energy produced by the main turbines. The generated load, hydrogen production flow rate, purified water flow rate, and heating consumption are assessed in this study. The results showed that this system can produce 3.8 megawatts of electricity as well as 8 g per second of hydrogen fuel at the operating point. Also, the energy efficiency of this system is estimated to be 19%. Afterward, machine learning methods are used to optimize designing parameters, and the optimum operating point in terms of useful power and stored fuel flow rate is obtained by a genetic algorithm. The optimum operating point of this energy system has a useful power output of 4.099 megawatts and a hydrogen flow rate of 29 g per second. In the end, the distribution of the design parameters is displayed for points of the beam curve.
AB - In this research, we try to investigate a solar-geothermal energy system. This system includes three turbines for power production, a PEM electrolyzer for hydrogen production, and a thermoelectric for generating electricity from excess heat. In addition, the seawater will be passed through the osmotic cycle to gain fresh water. The required power for this osmotic cycle will be obtained through the energy produced by the main turbines. The generated load, hydrogen production flow rate, purified water flow rate, and heating consumption are assessed in this study. The results showed that this system can produce 3.8 megawatts of electricity as well as 8 g per second of hydrogen fuel at the operating point. Also, the energy efficiency of this system is estimated to be 19%. Afterward, machine learning methods are used to optimize designing parameters, and the optimum operating point in terms of useful power and stored fuel flow rate is obtained by a genetic algorithm. The optimum operating point of this energy system has a useful power output of 4.099 megawatts and a hydrogen flow rate of 29 g per second. In the end, the distribution of the design parameters is displayed for points of the beam curve.
KW - Biofuel
KW - Electrolyzer
KW - Fuel production
KW - Hydrogen fuel
KW - Optimization
KW - Solar energy
UR - http://www.scopus.com/inward/record.url?scp=85139213481&partnerID=8YFLogxK
U2 - 10.1016/j.fuel.2022.125827
DO - 10.1016/j.fuel.2022.125827
M3 - Article
AN - SCOPUS:85139213481
SN - 0016-2361
VL - 332
JO - Fuel
JF - Fuel
M1 - 125827
ER -