TY - JOUR
T1 - A machine learning study on a municipal solid waste-to-energy system for environmental sustainability in a multi-generation energy system for hydrogen production
AU - Zhang, Yulan
AU - Aldosky, Abdulrahman Jaffar
AU - Goyal, Vishal
AU - Meqdad, Maytham N.
AU - Nutakki, Tirumala Uday Kumar
AU - Alsenani, Theyab R.
AU - Nguyen, Van Nhanh
AU - Dahari, Mahidzal
AU - Nguyen, Phuoc Quy Phong
AU - Ali, H. Elhosiny
N1 - Publisher Copyright:
© 2024 The Institution of Chemical Engineers
PY - 2024/2
Y1 - 2024/2
N2 - Municipal solid waste (MSW)-to-energy systems have gained significant attention in recent years for their potential to produce renewable energy from waste. These systems involve the conversion of MSW into electricity, heat or fuel. One of the most promising applications of MSW-to-energy systems is the production of hydrogen, which is considered a clean and sustainable fuel. Machine learning algorithms have the potential to revolutionize the way MSW-to-energy systems are managed. The integration of machine learning into MSW-to-energy systems has the potential to significantly improve the sustainability and profitability of this industry. In this study, a novel integrated MSW-to-energy system is modeled to produce hydrogen, power, and oxygen and with capacities of heating water and air. Hydrogen production, power production, oxygen storage, hot water, hot air, and system emission are predicted using machine learning algorithms based on regression models with high validity and R2 values more than 99.8% having errors smaller than 1%. The reduced regression models are developed by eliminating the insignificant variables from the full algorithms using the analysis of variance. The findings reveal high accuracy for the reduced regression models while their errors slightly decrease to 2%. This suggests that the machine learning algorithms can also be used as an effective tool to further improve MSW-to-energy systems.
AB - Municipal solid waste (MSW)-to-energy systems have gained significant attention in recent years for their potential to produce renewable energy from waste. These systems involve the conversion of MSW into electricity, heat or fuel. One of the most promising applications of MSW-to-energy systems is the production of hydrogen, which is considered a clean and sustainable fuel. Machine learning algorithms have the potential to revolutionize the way MSW-to-energy systems are managed. The integration of machine learning into MSW-to-energy systems has the potential to significantly improve the sustainability and profitability of this industry. In this study, a novel integrated MSW-to-energy system is modeled to produce hydrogen, power, and oxygen and with capacities of heating water and air. Hydrogen production, power production, oxygen storage, hot water, hot air, and system emission are predicted using machine learning algorithms based on regression models with high validity and R2 values more than 99.8% having errors smaller than 1%. The reduced regression models are developed by eliminating the insignificant variables from the full algorithms using the analysis of variance. The findings reveal high accuracy for the reduced regression models while their errors slightly decrease to 2%. This suggests that the machine learning algorithms can also be used as an effective tool to further improve MSW-to-energy systems.
KW - Emission
KW - Environmental sustainability
KW - Hydrogen fuel
KW - Machine learning
KW - Waste treatment
KW - Waste-to-energy system
UR - http://www.scopus.com/inward/record.url?scp=85181768137&partnerID=8YFLogxK
U2 - 10.1016/j.psep.2023.12.054
DO - 10.1016/j.psep.2023.12.054
M3 - Article
AN - SCOPUS:85181768137
SN - 0957-5820
VL - 182
SP - 1171
EP - 1184
JO - Process Safety and Environmental Protection
JF - Process Safety and Environmental Protection
ER -