Optimization of PEMFC system operating conditions based on neural network and PSO to achieve the best system performance |
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Affiliation: | College of Mechanical and Electrical Engineering, Wenzhou University, China |
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Abstract: | PEMFC system is a complex new clean power system. Based on MATLAB/Simulink, this paper develops a system-level dynamic model of PEMFC, including the gas supply system, hydrogen supply system, hydrothermal management system, and electric stack. The neural network fits the electric stack model to the simulation data. The effects of different operating conditions on the PEMFC stack power and system efficiency are analyzed. Combining the power of the reactor and the system efficiency to define the integrated performance index, the particle swarm optimization (PSO) algorithm is introduced to optimize the power density and system efficiency of the PEMFC with multiple objectives. The final optimal operating point increases the power density and system efficiency by 1.33% and 12.8%, respectively, which maximizes the output performance and reduces the parasitic power. |
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Keywords: | Fuel cell System dynamic modeling Operating conditions Neural network Stack power and system efficiency |
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