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Power and Voltage Modelling of a Proton-Exchange Membrane Fuel Cell Using Artificial Neural Networks

Author

Listed:
  • Tabbi Wilberforce

    (Mechanical Engineering and Design, School of Engineering and Applied Science, Aston University, Aston Triangle, Birmingham B4 7ET, UK)

  • Mohammad Biswas

    (Department of Mechanical Engineering, The University of Texas at Tyler, 3900 University Blvd, Tyler, TX 75799, USA)

  • Abdelnasir Omran

    (Mechanical Engineering and Design, School of Engineering and Applied Science, Aston University, Aston Triangle, Birmingham B4 7ET, UK)

Abstract

A proton exchange membrane fuel cell (PEMFC) is a more environmentally friendly alternative to deliver electric power in various applications, including in the transportation industry. As PEMFC performance characteristics are inherently nonlinear and involved, the prediction of the performance in a given application for different operating conditions is important in order to optimize the efficiency of the system. Thus, modelling using artificial neural networks (ANNs) to predict its performance can significantly improve the capabilities of handling the multi-variable nonlinear performance of the PEMFC. However, further investigation is needed to develop a dynamic model using ANNs to predict the transient behavior of a PEMFC. This paper predicts the dynamic electrical and thermal performance of a PEMFC stack under various operating conditions. The input variables of the PEMFC stack for the analysis consist of the cathode inlet temperature, anode inlet pressure, anode and cathode inlet flow rates, and stack current. The performances of the ANN models using three different learning algorithms are determined based on the stack voltage and temperature, which have been shown to be consistently predicted by most of these models. Almost all models with varying hidden neurons have coefficients of determination of 0.9 or higher and mean squared errors of less than 5. Thus, the results show promise for dynamic modelling approaches using ANNs for the development of optimal operation of a PEMFC in various system applications.

Suggested Citation

  • Tabbi Wilberforce & Mohammad Biswas & Abdelnasir Omran, 2022. "Power and Voltage Modelling of a Proton-Exchange Membrane Fuel Cell Using Artificial Neural Networks," Energies, MDPI, vol. 15(15), pages 1-15, August.
  • Handle: RePEc:gam:jeners:v:15:y:2022:i:15:p:5587-:d:877734
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    References listed on IDEAS

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    1. Gurong Shen & Jing Liu & Hao Bin Wu & Pengcheng Xu & Fang Liu & Chasen Tongsh & Kui Jiao & Jinlai Li & Meilin Liu & Mei Cai & John P. Lemmon & Grigorii Soloveichik & Hexing Li & Jian Zhu & Yunfeng Lu, 2020. "Multi-functional anodes boost the transient power and durability of proton exchange membrane fuel cells," Nature Communications, Nature, vol. 11(1), pages 1-10, December.
    2. Ogungbemi, Emmanuel & Ijaodola, Oluwatosin & Khatib, F.N. & Wilberforce, Tabbi & El Hassan, Zaki & Thompson, James & Ramadan, Mohamad & Olabi, A.G., 2019. "Fuel cell membranes – Pros and cons," Energy, Elsevier, vol. 172(C), pages 155-172.
    3. Biswas, M.A. Rafe & Robinson, Melvin D. & Fumo, Nelson, 2016. "Prediction of residential building energy consumption: A neural network approach," Energy, Elsevier, vol. 117(P1), pages 84-92.
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    Cited by:

    1. Javaid, Usman & Mehmood, Adeel & Iqbal, Jamshed & Uppal, Ali Arshad, 2023. "Neural network and URED observer based fast terminal integral sliding mode control for energy efficient polymer electrolyte membrane fuel cell used in vehicular technologies," Energy, Elsevier, vol. 269(C).

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