Unsupervised Machine Learning-Derived Anion-Exchange Membrane Polymers Map: A Guideline for Polymers Exploration and Design

IF 3.5 4区 化学 Q2 ELECTROCHEMISTRY
Yin Kan Phua, Nana Terasoba, Prof. Manabu Tanaka, Prof. Tsuyohiko Fujigaya, Prof. Koichiro Kato
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引用次数: 0

Abstract

Although anion-exchange membranes (AEMs) are commonly used in fuel cells and water electrolyzers, their widespread commercialization is hindered by problems such as low anion conductivity and durability. Moreover, the development of high-performance AEMs remains complex and time consuming. Here, we address these challenges by proposing an innovative approach for the efficient design and screening of AEM polymers using unsupervised machine learning. Our model, which combines principal component analysis with uniform manifold approximation and projection, generates an intuitive map that clusters AEM polymers based on structural similarities without any predefined knowledge regarding anion conductivity or other experimentally derived variables. As a powerful navigation tool, this map provides insights into promising main-chain structures, such as poly(arylene alkylene)s with consistently high conductivity and polyolefins with exceptional performance depending on the substituent. Furthermore, assisted by key molecular descriptors, inverse analysis with this model allows targeted design and property prediction before synthesis, which will significantly accelerate the discovery of novel AEM polymers. This work represents a paradigm shift not only in AEM research but also generally in materials research, moving from black-box predictions toward interpretable guidelines that foster collaboration between researchers and machine learning for efficient and informed material development.

Abstract Image

Abstract Image

无监督机器学习得出的阴离子交换膜聚合物图谱:聚合物探索与设计指南
尽管阴离子交换膜(AEM)通常用于燃料电池和水电解槽,但其广泛的商业化却受到阴离子导电率低和耐用性差等问题的阻碍。此外,高性能 AEM 的开发仍然复杂而耗时。在此,我们提出了一种创新方法,利用无监督机器学习来高效设计和筛选 AEM 聚合物,从而应对这些挑战。我们的模型将主成分分析与均匀流形近似和投影相结合,生成了一个直观的地图,可根据结构相似性对 AEM 聚合物进行聚类,而无需任何有关阴离子电导率或其他实验变量的预定义知识。作为一种功能强大的导航工具,该图谱可帮助人们深入了解具有发展前景的主链结构,如具有持续高电导率的聚(芳烯烃)和根据取代基不同而具有优异性能的聚烯烃。此外,在关键分子描述符的辅助下,利用该模型进行反分析,可以在合成前进行有针对性的设计和性能预测,这将大大加快新型 AEM 聚合物的发现。这项工作不仅代表了 AEM 研究领域的范式转变,也代表了材料研究领域的范式转变,即从黑箱预测转向可解释的指南,从而促进研究人员与机器学习之间的合作,实现高效、知情的材料开发。
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来源期刊
ChemElectroChem
ChemElectroChem ELECTROCHEMISTRY-
CiteScore
7.90
自引率
2.50%
发文量
515
审稿时长
1.2 months
期刊介绍: ChemElectroChem is aimed to become a top-ranking electrochemistry journal for primary research papers and critical secondary information from authors across the world. The journal covers the entire scope of pure and applied electrochemistry, the latter encompassing (among others) energy applications, electrochemistry at interfaces (including surfaces), photoelectrochemistry and bioelectrochemistry.
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