Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Proton Exchange Membrane Fuel Cells Modeling Using Chaos Game Optimization Technique
For the precise simulation performance, the accuracy of fuel cell modeling is important. Therefore, this paper presents a developed optimization method called Chaos Game Optimization Algorithm (CGO). The developed method provides the ability to accurately model the proton exchange membrane fuel cell (PEMFC). The accuracy of the model is tested by comparing the simulation results with the practical measurements of several standard PEMFCs such as Ballard Mark V, AVISTA SR-12.5 kW, and 6 kW of the Nedstack PS6 stacks. The complexity of the studied problem stems from the nonlinearity of the PEMFC polarization curve that leads to a nonlinear optimization problem, which must be solved to determine the seven PEMFC design variables. The objective function is formulated mathematically as the total error squared between the laboratory measured terminal voltage of PEMFC and the estimated terminal voltage yields from the simulation results using the developed model. The CGO is used to find the best way to fulfill the preset requirements of the objective function. The results of the simulation are tested under different temperature and pressure conditions. Moreover, the results of the proposed CGO simulations are compared with alternative optimization methods showing higher accuracy.
Proton Exchange Membrane Fuel Cells Modeling Using Chaos Game Optimization Technique
For the precise simulation performance, the accuracy of fuel cell modeling is important. Therefore, this paper presents a developed optimization method called Chaos Game Optimization Algorithm (CGO). The developed method provides the ability to accurately model the proton exchange membrane fuel cell (PEMFC). The accuracy of the model is tested by comparing the simulation results with the practical measurements of several standard PEMFCs such as Ballard Mark V, AVISTA SR-12.5 kW, and 6 kW of the Nedstack PS6 stacks. The complexity of the studied problem stems from the nonlinearity of the PEMFC polarization curve that leads to a nonlinear optimization problem, which must be solved to determine the seven PEMFC design variables. The objective function is formulated mathematically as the total error squared between the laboratory measured terminal voltage of PEMFC and the estimated terminal voltage yields from the simulation results using the developed model. The CGO is used to find the best way to fulfill the preset requirements of the objective function. The results of the simulation are tested under different temperature and pressure conditions. Moreover, the results of the proposed CGO simulations are compared with alternative optimization methods showing higher accuracy.
Proton Exchange Membrane Fuel Cells Modeling Using Chaos Game Optimization Technique
Ibrahim Alsaidan (Autor:in) / Mohamed A. M. Shaheen (Autor:in) / Hany M. Hasanien (Autor:in) / Muhannad Alaraj (Autor:in) / Abrar S. Alnafisah (Autor:in)
2021
Aufsatz (Zeitschrift)
Elektronische Ressource
Unbekannt
Metadata by DOAJ is licensed under CC BY-SA 1.0
Proton exchange membrane fuel cell modeling based on adaptive focusing particle swarm optimization
American Institute of Physics | 2009
|Optimization of a proton exchange membrane fuel cell membrane electrode assembly
British Library Online Contents | 2010
|DOAJ | 2023
|A review of optimization algorithms for the modeling of proton exchange membrane fuel cell
American Institute of Physics | 2016
|Machine learning modeling for proton exchange membrane fuel cell performance
DOAJ | 2022
|