Online remaining useful lifetime prediction of proton exchange membrane fuel cells using a novel robust methodology

Abstract This paper proposes a novel robust prognostic approach that contains three phases for degradation prediction of proton exchange membrane fuel cell (PEMFC) performance and its remaining useful lifetime (RUL) estimation. In the first detrending phase, a physical aging model (PAM) is used to remove the non-stationary trend in the original fuel cell degradation data. In the second filtering phase, the order of autoregressive and moving average (ARMA) model is determined by autocorrelation function (ACF), partial ACF and Akaike information criterion. The linear component in the stationary time series is then filtered by the identified ARMA model. In the third prediction phase, the remaining nonlinear pattern is used to train the time delay neural network (TDNN), in order to provide the final prediction result. Since the proposed prognostic approach uses appropriate methods to analyze and preprocess the original degradation data (i.e., the PAM maintains stationary trend, and then the identified ARMA filters linear component), the remaining nonlinear pattern of stationary time series can thus guarantee a good convergence performance of TDNN. In order to experimentally demonstrate the robustness and prediction accuracy of the proposed approach, degradation tests are performed using two types of PEMFC stack.

[1]  C. K. Chan,et al.  Prediction of hourly solar radiation using a novel hybrid model of ARMA and TDNN , 2011 .

[2]  Wei Liang,et al.  Remaining useful life prediction of lithium-ion battery with unscented particle filter technique , 2013, Microelectron. Reliab..

[3]  B. Egardt,et al.  Enhanced Sample Entropy-based Health Management of Li-ion Battery for Electrified Vehicles , 2014 .

[4]  Abdellatif Miraoui,et al.  Degradation prediction of PEM fuel cell using a moving window based hybrid prognostic approach , 2017 .

[5]  Richard D. F. Harris,et al.  Testing for unit roots using the augmented Dickey-Fuller test: Some issues relating to the size, power and the lag structure of the test , 1992 .

[6]  Guoqiang Peter Zhang,et al.  Time series forecasting using a hybrid ARIMA and neural network model , 2003, Neurocomputing.

[7]  Daniel Hissel,et al.  Proton exchange membrane fuel cell degradation prediction based on Adaptive Neuro-Fuzzy Inference Systems . , 2014 .

[8]  Birgitte Bak-Jensen,et al.  ARIMA-Based Time Series Model of Stochastic Wind Power Generation , 2010, IEEE Transactions on Power Systems.

[9]  Bo-Suk Yang,et al.  Estimation and forecasting of machine health condition using ARMA/GARCH model , 2010 .

[10]  L. Kamal,et al.  Time series models to simulate and forecast hourly averaged wind speed in Quetta, Pakistan , 1997 .

[11]  Michael Osterman,et al.  Prognostics of lithium-ion batteries based on DempsterShafer theory and the Bayesian Monte Carlo me , 2011 .

[12]  Belkacem Ould Bouamama,et al.  Extended Kalman Filter for prognostic of Proton Exchange Membrane Fuel Cell , 2016 .

[13]  Jan Pawel Stempien,et al.  Comparative study of fuel cell, battery and hybrid buses for renewable energy constrained areas , 2017 .

[14]  Kai Tan,et al.  Discover regulatory DNA elements using chromatin signatures and artificial neural network , 2010, Bioinform..

[15]  Axel Hochstein,et al.  Switching vector autoregressive models with higher-order regime dynamics Application to prognostics and health management , 2014, 2014 International Conference on Prognostics and Health Management.

[16]  Abdellatif Miraoui,et al.  Tridiagonal Matrix Algorithm for Real-Time Simulation of a Two-Dimensional PEM Fuel Cell Model , 2018, IEEE Transactions on Industrial Electronics.

[17]  Ali Cheknane,et al.  Forecasting hourly global solar radiation using hybrid k-means and nonlinear autoregressive neural network models , 2013 .

[18]  D. Infield,et al.  Application of Auto-Regressive Models to U.K. Wind Speed Data for Power System Impact Studies , 2012, IEEE Transactions on Sustainable Energy.

[19]  Héctor Pomares,et al.  Soft-computing techniques and ARMA model for time series prediction , 2008, Neurocomputing.

[20]  Abdellatif Miraoui,et al.  Online Estimation of Lithium Polymer Batteries State-of-Charge Using Particle Filter-Based Data Fusion With Multimodels Approach , 2016, IEEE Transactions on Industry Applications.

[21]  Chun-Ping Chang,et al.  New evidence on the convergence of per capita carbon dioxide emissions from panel seemingly unrelated regressions augmented Dickey–Fuller tests , 2008 .

[22]  Slobodan P. Simonovic,et al.  Short term streamflow forecasting using artificial neural networks , 1998 .

[23]  Srikantha Herath,et al.  Future Climate of Colombo Downscaled with SDSM-Neural Network , 2017 .

[24]  Noureddine Zerhouni,et al.  Prognostics of PEM fuel cell in a particle filtering framework , 2014 .

[25]  Rekha S. Singhal,et al.  Comparison of artificial neural network (ANN) and response surface methodology (RSM) in fermentation media optimization: Case study of fermentative production of scleroglucan , 2008 .

[26]  Ahmed Al-Durra,et al.  Online Energy Management Strategy of Fuel Cell Hybrid Electric Vehicles: A Fractional-Order Extremum Seeking Method , 2018, IEEE Transactions on Industrial Electronics.

[27]  Marco Sorrentino,et al.  A neural network estimator of Solid Oxide Fuel Cell performance for on-field diagnostics and prognostics applications , 2013 .

[28]  J. C. Amphlett,et al.  Incorporation of voltage degradation into a generalised steady state electrochemical model for a PEM fuel cell , 2002 .

[29]  Noureddine Zerhouni,et al.  Estimating the end-of-life of PEM fuel cells: Guidelines and metrics , 2016 .

[30]  S. Chan,et al.  Carbon corrosion and performance degradation mechanism in a proton exchange membrane fuel cell with dead-ended anode and cathode , 2016 .

[31]  Jun Shen,et al.  A review of PEM fuel cell durability: Degradation mechanisms and mitigation strategies , 2008 .

[32]  Ergin Erdem,et al.  ARMA based approaches for forecasting the tuple of wind speed and direction , 2011 .

[33]  M. Diagne,et al.  Review of solar irradiance forecasting methods and a proposition for small-scale insular grids , 2013 .

[34]  Jinfeng Wu,et al.  In situ accelerated degradation of gas diffusion layer in proton exchange membrane fuel cell: Part I: Effect of elevated temperature and flow rate , 2010 .

[35]  Zhiheng Li,et al.  A particle filter and long short term memory fusion algorithm for failure prognostic of proton exchange membrane fuel cells , 2017, 2017 29th Chinese Control And Decision Conference (CCDC).

[36]  Paulin Coulibaly,et al.  Temporal neural networks for downscaling climate variability and extremes , 2005 .

[37]  Jing Shi,et al.  Applying ARMA–GARCH approaches to forecasting short-term electricity prices , 2013 .

[38]  Sifeng Liu,et al.  Comparison of China's primary energy consumption forecasting by using ARIMA (the autoregressive integrated moving average) model and GM(1,1) model , 2016 .

[39]  Damien Paire,et al.  Nonlinear Performance Degradation Prediction of Proton Exchange Membrane Fuel Cells Using Relevance Vector Machine , 2016, IEEE Transactions on Energy Conversion.

[40]  Cyril Voyant,et al.  Numerical Weather Prediction (NWP) and hybrid ARMA/ANN model to predict global radiation , 2012, ArXiv.

[41]  Qiang Miao,et al.  Prognostics of lithium-ion batteries based on relevance vectors and a conditional three-parameter capacity degradation model , 2013 .

[42]  Ahmed Al-Durra,et al.  Online energy management strategy of fuel cell hybrid electric vehicles based on data fusion approach , 2017 .

[43]  F.M. Ghannouchi,et al.  Adaptive Digital Predistortion of Wireless Power Amplifiers/Transmitters Using Dynamic Real-Valued Focused Time-Delay Line Neural Networks , 2010, IEEE Transactions on Microwave Theory and Techniques.

[44]  Daniel Hissel,et al.  Diagnosis of polymer electrolyte fuel cells failure modes (flooding & drying out) by neural networks modeling , 2011 .

[45]  David W. Wilcox The Sustainability of Government Deficits: Implications of the Present-Value Borrowing Constraint , 1989 .

[46]  Abdellatif Miraoui,et al.  Degradation Prediction of PEM Fuel Cell Stack Based on Multiphysical Aging Model With Particle Filter Approach , 2017, IEEE Transactions on Industry Applications.

[47]  C. Dominique,et al.  A note on increasing returns to advertising , 1988 .

[48]  Dazhi Yang,et al.  Satellite image analysis and a hybrid ESSS/ANN model to forecast solar irradiance in the tropics , 2014 .

[49]  Paulin Coulibaly,et al.  Temporal neural networks for downscaling climate variability and extremes , 2005, Proceedings. 2005 IEEE International Joint Conference on Neural Networks, 2005..