{"title":"预测阴离子导电膜聚合物材料的阴离子电导率和碱性稳定性:可解释的机器学习模型的开发。","authors":"Yin Kan Phua, Tsuyohiko Fujigaya, Koichiro Kato","doi":"10.1080/14686996.2023.2261833","DOIUrl":null,"url":null,"abstract":"<p><p>Anion exchange membranes (AEMs) are core components in fuel cells and water electrolyzers, which are crucial to realize a sustainable hydrogen society. The low anion conductivity and durability of AEMs have hindered the commercialization of AEM-based devices, and research and development (R&D) to improve AEM materials is often resource-intensive. Although machine learning (ML) is commonly used in many fields to accelerate R&D while reducing resource consumption, it is rarely used in the AEM field. Three problems hinder the adoption of ML models, namely, the low explainability of ML models; complication with expressing both homopolymers and copolymers in unity to train a single ML model; and difficulty in building a single ML model that comprehends various polymer types. 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引用次数: 0
摘要
阴离子交换膜是燃料电池和水电解槽的核心部件,对实现可持续的氢社会至关重要。AEM的低阴离子传导性和耐久性阻碍了基于AEM的设备的商业化,而改进AEM材料的研发(R&D)往往是资源密集型的。尽管机器学习(ML)在许多领域中普遍用于加速研发,同时减少资源消耗,但它很少用于AEM领域。三个问题阻碍了ML模型的采用,即ML模型的可解释性低;将均聚物和共聚物统一表达以训练单个ML模型的复杂性;以及难以建立理解各种聚合物类型的单个ML模型。本研究提出了第一个解决所有三个问题的ML模型。我们的模型以高精度(均方根误差 = 0.014 S cm-1),而不管它们的状态(新合成的或降解的)。这使得能够对新型AEM材料进行虚拟预合成筛选,从而减少资源消耗。此外,人类可理解的预测逻辑揭示了影响AEM材料阴离子电导率的新因素。这种为AEM材料设计揭示新的重要变量的能力可能会改变AEM研发的范式。这种提出的方法并不局限于AEM材料,相反,它提供了一种适用于目前可用的各种聚合物的技术。
Predicting the anion conductivities and alkaline stabilities of anion conducting membrane polymeric materials: development of explainable machine learning models.
Anion exchange membranes (AEMs) are core components in fuel cells and water electrolyzers, which are crucial to realize a sustainable hydrogen society. The low anion conductivity and durability of AEMs have hindered the commercialization of AEM-based devices, and research and development (R&D) to improve AEM materials is often resource-intensive. Although machine learning (ML) is commonly used in many fields to accelerate R&D while reducing resource consumption, it is rarely used in the AEM field. Three problems hinder the adoption of ML models, namely, the low explainability of ML models; complication with expressing both homopolymers and copolymers in unity to train a single ML model; and difficulty in building a single ML model that comprehends various polymer types. This study presents the first ML models that solve all three problems. Our models predicted the anion conductivity for a diverse set of unseen AEM materials with high accuracy (root mean squared error = 0.014 S cm-1), regardless of their state (freshly synthesized or degraded). This enables virtual pre-synthesis screening of novel AEM materials, reducing resource consumption. Moreover, human-comprehensible prediction logic revealed new factors affecting the anion conductivity of AEM materials. Such capability to reveal new important variables for AEM materials design could shift the paradigm of AEM R&D. This proposed method is not limited to AEM materials, instead it presents a technology that is applicable to the diverse set of polymers currently available.
期刊介绍:
Science and Technology of Advanced Materials (STAM) is a leading open access, international journal for outstanding research articles across all aspects of materials science. Our audience is the international community across the disciplines of materials science, physics, chemistry, biology as well as engineering.
The journal covers a broad spectrum of topics including functional and structural materials, synthesis and processing, theoretical analyses, characterization and properties of materials. Emphasis is placed on the interdisciplinary nature of materials science and issues at the forefront of the field, such as energy and environmental issues, as well as medical and bioengineering applications.
Of particular interest are research papers on the following topics:
Materials informatics and materials genomics
Materials for 3D printing and additive manufacturing
Nanostructured/nanoscale materials and nanodevices
Bio-inspired, biomedical, and biological materials; nanomedicine, and novel technologies for clinical and medical applications
Materials for energy and environment, next-generation photovoltaics, and green technologies
Advanced structural materials, materials for extreme conditions.