Degradation Prediction of PEM Fuel Cell Stack Based on Multiphysical Aging Model With Particle Filter Approach

Affiliation auteurs!!!! Error affiliation !!!!
TitreDegradation Prediction of PEM Fuel Cell Stack Based on Multiphysical Aging Model With Particle Filter Approach
Type de publicationJournal Article
Year of Publication2017
AuteursZhou D, Wu Y, Gao F, Breaz E, Ravey A, Miraoui A
JournalIEEE TRANSACTIONS ON INDUSTRY APPLICATIONS
Volume53
Pagination4041-4052
Date PublishedJUL-AUG
Type of ArticleArticle; Proceedings Paper
ISSN0093-9994
Mots-clésextrapolation method, multiphysical aging model, particle filter (PF), proton-exchange-membrane fuel cell (PEMFC)
Résumé

In this paper, a novel degradation prediction model for proton-exchange-membrane fuel cell (PEMFC) performance is proposed based on a multiphysical aging model with particle filter (PF) and extrapolation approach. The proposed multiphysical aging model considers major internal physical aging phenomena of fuel cells, including fuel cell ohmic losses, reaction activity losses, and reactants mass transfer losses. Furthermore, in order to obtain accurate values of electrochemical activation losses under a variable load profile, a bisection solver is presented to solve the implicit Butler-Volmer equation. The proposed aging model is initialized at first by fitting the PEMFC polarization curve at the beginning of lifetime. During the prediction process, the aging dataset is then divided into two parts, learning and prediction phases. The PF framework is used to study the degradation characteristics and update the aging parameters during the learning phase. The suitable fitting curve functions are then selected to satisfy the degradation trends of trained aging parameters, and used to further extrapolate the future values of aging parameters in the prediction phase. By using these extrapolated aging parameters, the prediction results are thus obtained from the proposed aging model. Three experimental validations with different aging testing profiles have been performed. The results demonstrate the robustness and advantages of the proposed prediction method.

DOI10.1109/TIA.2017.2680406