Real-time parameter estimation of polymer electrolyte membrane fuel cell in absence of excitation

Andreu Cecilia,Maria Serra, Ramon Costa-Castell

INTERNATIONAL JOURNAL OF HYDROGEN ENERGY(2024)

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摘要
Parameter estimation is crucial for polymer electrolyte membrane fuel cell monitoring and control. Nonetheless, most parameter estimation algorithms rely on a persistence of excitation condition, which is rarely satisfied and not convenient in fuel cell systems. For this reason, this work presents and compares three algorithms to estimate in real-time some critical PEMFC parameters in the voltage equation: the ohmic resistance, the charge transfer coefficient and the oxygen activity of a proton exchange fuel cell. The first algorithm is a standard gradient descent, while the other two are based on a set of prepreprocessing dynamics. It is shown that, while the gradient descent requires the persistence of excitation condition, the addition of the preprocessing dynamics ensures reliable estimation under significantly weaker excitation assumptions. Moreover, it is shown that the preprocessing dynamics improves the transient behaviour and noise performance of the estimators. The results are validated through a set of numerical simulations and in an experimental prototype, where sensor noise and unmodelled disturbances are considered.(c) 2023 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
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关键词
Polymer electrolyte membrane fuel,cell (PEMFC),Parameter estimation,Real-time,Persistence of excitation,Ohmic resistance
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