The durability of proton exchange membrane fuel cell (PEMFC) is a major concern that limits their commercial application. Fuel cells are characterized by a complex internal mechanism and a strong coupling, rendering them susceptible to performance degradation and health issues, which have received increasing attention. However, the degradation of stack performance cannot fully characterize the decline in system performance. This article proposes an aging index based on the dynamic degradation of fuel cell performance under different conditions to predict the performance degradation of PEMFC. Considering the influence of reversible performance degradation and system failure on performance degradation, a degradation prediction method based on a long short-term memory (LSTM) network is proposed. Different operating conditions and experimental datasets validated the performance of the proposed approach. The root-mean-square error (RMSE) for the proposed method is 0.5273 for 2000 h test data, which verifies its accuracy. By matching and optimizing the air compressor and fuel cell operating points, the power and thermal power are used as the prediction limit value to predict the performance of the PEMFC system. It has important guiding significance for the strategic optimization of the fuel cell system and vehicle powertrain.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    A Data-Driven Approach to Lifespan Prediction for Vehicle Fuel Cell Systems


    Contributors:
    Wang, Yupeng (author) / Wang, Kai (author) / Wang, Bowen (author) / Yin, Yan (author) / Zhao, Honghui (author) / Han, Linghai (author) / Jiao, Kui (author)


    Publication date :

    2023-12-01


    Size :

    2182975 byte




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    English



    VEHICLE APPARATUS FOR PREDICTING BATTERY LIFESPAN AND METHOD PREDICTING BATTERY LIFESPAN

    OH JAEKYUNG / LEE CHULKYU / KIM JU SEOK et al. | European Patent Office | 2023

    Free access

    A Data Driven Fuel Cell Life-Prediction Model for a Fuel Cell Electric City Bus

    Hao, Dong / Zheng, Lu / Li, Wenqi et al. | SAE Technical Papers | 2021


    Multi-Timescale Lifespan Prediction for PEMFC Systems Under Dynamic Operating Conditions

    Hua, Zhiguang / Zheng, Zhixue / Pahon, Elodie et al. | IEEE | 2022


    Fuel cell vehicle and prediction method

    WATANABE TAKAHARU / SUZUKI KENTA / MOCHIZUKI HIDEKI et al. | European Patent Office | 2023

    Free access

    FUEL CELL VEHICLE AND PREDICTION METHOD

    WATANABE TAKAHARU / SUZUKI KENTA / MOCHIZUKI HIDEKI et al. | European Patent Office | 2023

    Free access