Proton exchange membrane fuel cell ageing forecasting algorithm based on Echo State Network

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TitreProton exchange membrane fuel cell ageing forecasting algorithm based on Echo State Network
Type de publicationJournal Article
Year of Publication2017
AuteursMorando S, Jemei S, Hissel D, Gouriveau R, Zerhouni N
JournalINTERNATIONAL JOURNAL OF HYDROGEN ENERGY
Volume42
Pagination1472-1480
Date PublishedJAN 12
Type of ArticleArticle; Proceedings Paper
ISSN0360-3199
Mots-clésArtificial neural network, Echo state network, Fuel cell, prognostic, Reservoir computing
Résumé

Regarded as a promising technology, proton exchange membrane fuel cell (PEMFC) are not far from a large-scale deployment. However, some improvements are still needed to extend the lifetime of these systems. The discipline of PHM (Prognostic and health management) seems like a great solution to help against this problem. The objective is to predict the evolution of the behavior of a system using algorithms to estimate in advance when a fault occurs. This knowledge of the default before its occurrence allows to anticipate a decision, often by using a fault-tolerant control. Different methodologies exist to make a prognostic algorithm: model based, data based or a hybridization between these two previous methodologies. This paper will focus on the data based prognosis, mainly due to the fact that all of the phenomena involved in the degradation of a PEMFC are not yet fully known, thus not yet modeled. The first innovation of this paper concern the use of a new neural network paradigm, the Echo State Network, which is a part of Reservoir Computing methods. This new paradigm gives very interesting results, with a mean average percentage error less than 5% in our study case. The other contribution is the definition of a filtering method, regarding to the test bench, by evaluating the Hurst exponent of the signal filtered by wavelet. (C) 2016 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.

DOI10.1016/j.ijhydene.2016.05.286