Large Language Model-Driven Knowledge Discovery for Designing Advanced Micro/Nano Electrocatalyst Materials

纳米- 纳米技术 电催化剂 计算机科学 工程类 材料科学 化学 化学工程 电化学 电极 物理化学
作者
Ying Shen,Shichao Zhao,Yanfei Lv,Fei Chen,Li Fu,Hassan Karimi‐Maleh
出处
期刊:Computers, materials & continua 卷期号:84 (2): 1921-1950 被引量:2
标识
DOI:10.32604/cmc.2025.067427
摘要

This review presents a comprehensive and forward-looking analysis of how Large Language Models (LLMs) are transforming knowledge discovery in the rational design of advanced micro/nano electrocatalyst materials. Electrocatalysis is central to sustainable energy and environmental technologies, but traditional catalyst discovery is often hindered by high complexity, fragmented knowledge, and inefficiencies. LLMs, particularly those based on Transformer architectures, offer unprecedented capabilities in extracting, synthesizing, and generating scientific knowledge from vast unstructured textual corpora. This work provides the first structured synthesis of how LLMs have been leveraged across various electrocatalysis tasks, including automated information extraction from literature, text-based property prediction, hypothesis generation, synthesis planning, and knowledge graph construction. We comparatively analyze leading LLMs and domain-specific frameworks (e.g., CatBERTa, CataLM, CatGPT) in terms of methodology, application scope, performance metrics, and limitations. Through curated case studies across key electrocatalytic reactions—HER, OER, ORR, and CO2RR—we highlight emerging trends such as the growing use of embedding-based prediction, retrieval-augmented generation, and fine-tuned scientific LLMs. The review also identifies persistent challenges, including data heterogeneity, hallucination risks, lack of standard benchmarks, and limited multimodal integration. Importantly, we articulate future research directions, such as the development of multimodal and physics-informed MatSci-LLMs, enhanced interpretability tools, and the integration of LLMs with self-driving laboratories for autonomous discovery. By consolidating fragmented advances and outlining a unified research roadmap, this review provides valuable guidance for both materials scientists and AI practitioners seeking to accelerate catalyst innovation through large language model technologies.

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