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Exposing Deep Representations to a Recurrent Expansion with Multiple Repeats for Fuel Cells Time Series Prognosis
Authors:Tarek Berghout,Mohamed Benbouzid,Toufik Bentrcia,Yassine Amirat,Leï  la-Hayet Mouss
Affiliation:1.Laboratory of Automation and Manufacturing Engineering, University of Batna 2, Batna 05000, Algeria; (T.B.); (T.B.); (L.-H.M.);2.Institut de Recherche Dupuy de Lôme (UMR CNRS 6027), University of Brest, 29238 Brest, France;3.Logistics Engineering College, Shanghai Maritime University, Shanghai 201306, China;4.ISEN Yncréa Ouest, L@bISEN, 29200 Brest, France;
Abstract:The green conversion of proton exchange membrane fuel cells (PEMFCs) has received particular attention in both stationary and transportation applications. However, the poor durability of PEMFC represents a major problem that hampers its commercial application since dynamic operating conditions, including physical deterioration, have a serious impact on the cell performance. Under these circumstances, prognosis and health management (PHM) plays an important role in prolonging durability and preventing damage propagation via the accurate planning of a condition-based maintenance (CBM) schedule. In this specific topic, health deterioration modeling with deep learning (DL) is the widely studied representation learning tool due to its adaptation ability to rapid changes in data complexity and drift. In this context, the present paper proposes an investigation of further deeper representations by exposing DL models themselves to recurrent expansion with multiple repeats. Such a recurrent expansion of DL (REDL) allows new, more meaningful representations to be explored by repeatedly using generated feature maps and responses to create new robust models. The proposed REDL, which is designed to be an adaptive learning algorithm, is tested on a PEMFC deterioration dataset and compared to its deep learning baseline version under time series analysis. Using multiple numeric and visual metrics, the results support the REDL learning scheme by showing promising performances.
Keywords:deep learning   fuel cell   long short-term memory   recurrent expansion   remaining useful life   prognosis and health management
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