Application of artificial intelligence in the materials science, with a special focus on fuel cells and electrolyzers

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-09-17 DOI:10.1016/j.egyai.2024.100424
Mariah Batool , Oluwafemi Sanumi , Jasna Jankovic
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Abstract

Artificial Intelligence (AI) has revolutionized technological development globally, delivering relatively more accurate and reliable solutions to critical challenges across various research domains. This impact is particularly notable within the field of materials science and engineering, where artificial intelligence has catalyzed the discovery of new materials, enhanced design simulations, influenced process controls, and facilitated operational analysis and predictions of material properties and behaviors. Consequently, these advancements have streamlined the synthesis, simulation, and processing procedures, leading to material optimization for diverse applications. A key area of interest within materials science is the development of hydrogen-based electrochemical systems, such as fuel cells and electrolyzers, as clean energy solutions, known for their promising high energy density and zero-emission operations. While artificial intelligence shows great potential in studying both fuel cells and electrolyzers, existing literature often separates them, with a clear gap in comprehensive studies on electrolyzers despite their similarities. This review aims to bridge that gap by providing an integrated overview of artificial intelligence's role in both technologies. This review begins by explaining the fundamental concepts of artificial intelligence and introducing commonly used artificial intelligence-based algorithms in a simplified and clearly comprehensible way, establishing a foundational knowledge base for further discussion. Subsequently, it explores the role of artificial intelligence in materials science, highlighting the critical applications and drawing on examples from recent literature to build on the discussion. The paper then examines how artificial intelligence has propelled significant advancements in studying various types of fuel cells and electrolyzers, specifically emphasizing proton exchange membrane (PEM) based systems. It thoroughly explores the artificial intelligence tools and techniques for characterizing, manufacturing, testing, analyzing, and optimizing these systems. Additionally, the review critically evaluates the current research landscape, pinpointing progress and prevailing challenges. Through this thorough analysis, the review underscores the fundamental role of artificial intelligence in advancing the generation and utilization of clean energy, illustrating its transformative potential in this area of research.

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人工智能在材料科学中的应用,特别关注燃料电池和电解槽
人工智能(AI)给全球的技术发展带来了革命性的变化,为各个研究领域的关键挑战提供了相对更准确、更可靠的解决方案。这种影响在材料科学与工程领域尤为显著,人工智能催化了新材料的发现,增强了设计模拟,影响了工艺控制,促进了材料特性和行为的操作分析与预测。因此,这些进步简化了合成、模拟和加工程序,为各种应用优化了材料。材料科学的一个重要兴趣领域是开发氢基电化学系统,如燃料电池和电解槽,作为清洁能源解决方案。虽然人工智能在研究燃料电池和电解槽方面都显示出巨大的潜力,但现有文献往往将两者割裂开来,尽管两者有相似之处,但对电解槽的全面研究明显不足。本综述旨在通过综合概述人工智能在这两种技术中的作用来弥补这一差距。本综述首先解释了人工智能的基本概念,并以简化和清晰易懂的方式介绍了常用的基于人工智能的算法,为进一步讨论奠定了基础知识。随后,本文探讨了人工智能在材料科学中的作用,重点介绍了人工智能的关键应用,并引用了近期文献中的实例,以进一步展开讨论。然后,论文探讨了人工智能如何推动各类燃料电池和电解槽研究取得重大进展,特别强调了基于质子交换膜(PEM)的系统。论文深入探讨了用于表征、制造、测试、分析和优化这些系统的人工智能工具和技术。此外,综述还对当前的研究状况进行了批判性评估,指出了取得的进展和面临的挑战。通过这一透彻的分析,综述强调了人工智能在推动清洁能源的生产和利用方面的基础性作用,并说明了人工智能在这一研究领域的变革潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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
期刊最新文献
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