A review of control strategies for proton exchange membrane (PEM) fuel cells and water electrolysers: From automation to autonomy

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-07-28 DOI:10.1016/j.egyai.2024.100406
Jiahao Mao , Zheng Li , Jin Xuan , Xinli Du , Meng Ni , Lei Xing
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Abstract

Proton exchange membrane (PEM) based electrochemical systems have the capability to operate in fuel cell (PEMFC) and water electrolyser (PEMWE) modes, enabling efficient hydrogen energy utilisation and green hydrogen production. In addition to the essential cell stacks, the system of PEMFC or PEMWE consists of four sub-systems for managing gas supply, power, thermal, and water, respectively. Due to the system's complexity, even a small fluctuation in a certain sub-system can result in an unexpected response, leading to a reduced performance and stability. To improve the system's robustness and responsiveness, considerable efforts have been dedicated to developing advanced control strategies. This paper comprehensively reviews various control strategies proposed in literature, revealing that traditional control methods are widely employed in PEMFC and PEMWE due to their simplicity, yet they suffer from limitations in accuracy. Conversely, advanced control methods offer high accuracy but are hindered by poor dynamic performance. This paper highlights the recent advancements in control strategies incorporating machine learning algorithms. Additionally, the paper provides a perspective on the future development of control strategies, suggesting that hybrid control methods should be used for future research to leverage the strength of both sides. Notably, it emphasises the role of artificial intelligence (AI) in advancing control strategies, demonstrating its significant potential in facilitating the transition from automation to autonomy.

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质子交换膜(PEM)燃料电池和水电解槽控制策略综述:从自动化到自主化
基于质子交换膜(PEM)的电化学系统可在燃料电池(PEMFC)和水电解槽(PEMWE)模式下运行,从而实现高效氢能利用和绿色制氢。除基本的电池堆外,PEMFC 或 PEMWE 系统还包括四个子系统,分别用于管理气体供应、电力、热力和水。由于系统的复杂性,即使是某个子系统的微小波动也会导致意外反应,从而降低性能和稳定性。为了提高系统的鲁棒性和响应能力,人们致力于开发先进的控制策略。本文全面回顾了文献中提出的各种控制策略,揭示了传统控制方法因其简单性而被广泛应用于 PEMFC 和 PEMWE,但在精度方面存在局限性。相反,先进的控制方法精度高,但动态性能差。本文重点介绍了结合机器学习算法的控制策略的最新进展。此外,本文还对控制策略的未来发展提出了展望,建议在未来的研究中采用混合控制方法,以充分利用双方的优势。值得注意的是,论文强调了人工智能(AI)在推进控制策略方面的作用,展示了人工智能在促进从自动化向自主化过渡方面的巨大潜力。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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