Machine learning applications on proton exchange membrane water electrolyzers: A component-level overview

IF 8.1 2区 工程技术 Q1 CHEMISTRY, PHYSICAL
Abdelmola Albadwi , Saltuk Buğra Selçuklu , Mehmet Fatih Kaya
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引用次数: 0

Abstract

Machine Learning (ML) has emerged as a pivotal force in enhancing Proton Exchange Membrane Water Electrolyzer (PEMWE) devices. These devices are critical for transforming renewable electricity into hydrogen, a key clean energy vector. Despite their prospects, the broader implementation of PEMWE is hindered by cost and efficiency barriers. PEMWEs are inherently complex, involving multi-scale processes such as electrochemical reactions, reactant transportation, and thermo-electrical interactions. This complexity has previously limited optimizations to isolated components like electrocatalysts, membrane electrode assemblies (MEAs), Bipolar plates (BPs), and Gas Diffusion Electrodes (GDEs). ML presents a revolutionary pathway to address these obstacles by enabling system-wide optimization. In this paper, we offer an in-depth review of cutting-edge ML applications for improving PEMWE performance and efficiency. ML's ability to process large datasets and identify intricate patterns accelerates the research and development of PEMWEs, thereby reducing costs and boosting efficiency. We describe a variety of algorithms, such as Artificial Neural Networks (ANN), Deep Learning (DL), Long Short-Term Memory (LSTM), Support Vector Machine (SVM), Categorical Boosting (CatBoost), and Light Gradient Boosting Machine (LightGBM), commonly used in PEMWE applications, highlighting their significance in enhancing PEMWE systems. Additionally, we explore hybrid methods that combine various ML techniques to further improve PEMWE performance and efficiency. The review provides a concise overview and forward-looking perspective on the role of ML in advancing PEMWE technology, marking a significant step towards their cost-effective and scalable deployment.
质子交换膜水电解器中的机器学习应用:组件级概述
机器学习(ML)已成为提升质子交换膜水电解槽(PEMWE)设备的关键力量。这些设备对于将可再生电力转化为氢气这一关键的清洁能源载体至关重要。尽管前景广阔,但由于成本和效率方面的障碍,PEMWE 的广泛应用仍受到阻碍。PEMWE 本身非常复杂,涉及电化学反应、反应物运输和热电相互作用等多尺度过程。这种复杂性以前限制了对电催化剂、膜电极组件 (MEA)、双极板 (BP) 和气体扩散电极 (GDE) 等孤立组件的优化。ML 通过实现全系统优化,为解决这些障碍提供了一条革命性的途径。在本文中,我们将深入评述 ML 在提高 PEMWE 性能和效率方面的前沿应用。ML 处理大型数据集和识别复杂模式的能力加快了 PEMWE 的研发速度,从而降低了成本并提高了效率。我们介绍了人工神经网络 (ANN)、深度学习 (DL)、长短期记忆 (LSTM)、支持向量机 (SVM)、分类提升 (CatBoost) 和轻梯度提升机 (LightGBM) 等 PEMWE 应用中常用的各种算法,强调了它们在增强 PEMWE 系统中的重要作用。此外,我们还探讨了结合各种 ML 技术的混合方法,以进一步提高 PEMWE 的性能和效率。这篇综述以简明扼要的概述和前瞻性的视角阐述了 ML 在推动 PEMWE 技术发展中的作用,标志着 PEMWE 向着具有成本效益和可扩展的部署方向迈出了重要一步。
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来源期刊
International Journal of Hydrogen Energy
International Journal of Hydrogen Energy 工程技术-环境科学
CiteScore
13.50
自引率
25.00%
发文量
3502
审稿时长
60 days
期刊介绍: The objective of the International Journal of Hydrogen Energy is to facilitate the exchange of new ideas, technological advancements, and research findings in the field of Hydrogen Energy among scientists and engineers worldwide. This journal showcases original research, both analytical and experimental, covering various aspects of Hydrogen Energy. These include production, storage, transmission, utilization, enabling technologies, environmental impact, economic considerations, and global perspectives on hydrogen and its carriers such as NH3, CH4, alcohols, etc. The utilization aspect encompasses various methods such as thermochemical (combustion), photochemical, electrochemical (fuel cells), and nuclear conversion of hydrogen, hydrogen isotopes, and hydrogen carriers into thermal, mechanical, and electrical energies. The applications of these energies can be found in transportation (including aerospace), industrial, commercial, and residential sectors.
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