Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimation

Proton exchange membrane water electrolysis is an effective method for producing hydrogen required for advancing the transition to greener sustainable energy. However, the complex dynamics associated with the process requires predictive tools for large-scale deployment. Despite advancements in machi...

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Main Authors: Okorie Ekwe Agwu, Saad Alatefi, Ahmad Alkouh
Format: Article
Language:English
Published: Elsevier 2025-07-01
Series:Cleaner Engineering and Technology
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Online Access:http://www.sciencedirect.com/science/article/pii/S2666790825001636
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author Okorie Ekwe Agwu
Saad Alatefi
Ahmad Alkouh
author_facet Okorie Ekwe Agwu
Saad Alatefi
Ahmad Alkouh
author_sort Okorie Ekwe Agwu
collection DOAJ
description Proton exchange membrane water electrolysis is an effective method for producing hydrogen required for advancing the transition to greener sustainable energy. However, the complex dynamics associated with the process requires predictive tools for large-scale deployment. Despite advancements in machine learning-based models, previous studies often lack explainability, diminishing user trust in their deployment. This study addresses this deficiency by developing an accurate and explainable hydrogen yield rate model using Bayesian regularized neural network. The dataset utilized comprises nine input variables and 231 data points for each variable. The results from the model development show that the model demonstrates reasonable precision, with a mean square error of 0.0588, root mean square error of 0.24, mean absolute error of 0.1057 and a coefficient of determination of 0.95. The connection weights algorithm applied to the model enhances its explainability by illustrating the relative contributions of each input variable and their impacts on hydrogen yield. It was found that stack voltage and water pressure have the most significant impacts on the electrolysis process accounting for 23 % and 17.6 % respectively while the lower explosive limit had the least impact with a 4 % importance factor. The model's applicability domain was established using the Williams plot, while trend analyses indicated that the model aligns with the physical trends associated with water electrolysis phenomena. Overall, the model can be used in two modes: online, by integrating it into software programs, and offline, by simply entering parameter values into the explicit model without having to run long lines of code.
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spelling doaj-art-3f3c4fa182504b028f11dc3904fafe8d2025-08-20T02:38:46ZengElsevierCleaner Engineering and Technology2666-79082025-07-012710104010.1016/j.clet.2025.101040Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimationOkorie Ekwe Agwu0Saad Alatefi1Ahmad Alkouh2Petroleum Engineering Department, University Teknologi PETRONAS, 32610, Seri Iskandar, Perak Darul Ridzuan, Malaysia; Center of Reservoir Dynamics (CORED), Institute of Sustainable Energy, Universiti Teknologi, PETRONAS, 32610, Seri Iskandar, Perak Darul Ridzuan, Malaysia; Corresponding author. Petroleum Engineering Department, University Teknologi PETRONAS, 32610, Seri Iskandar, Perak Darul Ridzuan, Malaysia.Department of Petroleum Engineering Technology, College of Technological Studies, PAAET, Kuwait City, 70654, KuwaitDepartment of Petroleum Engineering Technology, College of Technological Studies, PAAET, Kuwait City, 70654, KuwaitProton exchange membrane water electrolysis is an effective method for producing hydrogen required for advancing the transition to greener sustainable energy. However, the complex dynamics associated with the process requires predictive tools for large-scale deployment. Despite advancements in machine learning-based models, previous studies often lack explainability, diminishing user trust in their deployment. This study addresses this deficiency by developing an accurate and explainable hydrogen yield rate model using Bayesian regularized neural network. The dataset utilized comprises nine input variables and 231 data points for each variable. The results from the model development show that the model demonstrates reasonable precision, with a mean square error of 0.0588, root mean square error of 0.24, mean absolute error of 0.1057 and a coefficient of determination of 0.95. The connection weights algorithm applied to the model enhances its explainability by illustrating the relative contributions of each input variable and their impacts on hydrogen yield. It was found that stack voltage and water pressure have the most significant impacts on the electrolysis process accounting for 23 % and 17.6 % respectively while the lower explosive limit had the least impact with a 4 % importance factor. The model's applicability domain was established using the Williams plot, while trend analyses indicated that the model aligns with the physical trends associated with water electrolysis phenomena. Overall, the model can be used in two modes: online, by integrating it into software programs, and offline, by simply entering parameter values into the explicit model without having to run long lines of code.http://www.sciencedirect.com/science/article/pii/S2666790825001636HydrogenNeural networksElectrolysisProton exchange membraneExplainable AI
spellingShingle Okorie Ekwe Agwu
Saad Alatefi
Ahmad Alkouh
Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimation
Cleaner Engineering and Technology
Hydrogen
Neural networks
Electrolysis
Proton exchange membrane
Explainable AI
title Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimation
title_full Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimation
title_fullStr Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimation
title_full_unstemmed Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimation
title_short Modelling the future of cleaner energy: Explainable artificial intelligence model for green hydrogen production rate estimation
title_sort modelling the future of cleaner energy explainable artificial intelligence model for green hydrogen production rate estimation
topic Hydrogen
Neural networks
Electrolysis
Proton exchange membrane
Explainable AI
url http://www.sciencedirect.com/science/article/pii/S2666790825001636
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