AI Agents 相关度: 9/10

Escaping the Hydrolysis Trap: An Agentic Workflow for Inverse Design of Durable Photocatalytic Covalent Organic Frameworks

Iman Peivaste, Nicolas D. Boscher, Ahmed Makradi, Salim Belouettar
arXiv: 2603.05188v1 发布: 2026-03-05 更新: 2026-03-05

AI 摘要

利用LLM智能体加速耐用光催化共价有机框架(COF)的逆向设计,解决稳定性-活性权衡问题。

主要贡献

  • 提出了一种基于LLM的智能体Ara用于光催化COF材料的逆向设计
  • 证明了LLM化学先验知识可以显著加速多标准材料发现
  • 发现了智能体和贝叶斯优化之间的互补权衡关系

方法论

使用LLM智能体Ara,结合化学知识、供体-受体理论和GFN1-xTB片段筛选,搜索满足特定标准的光催化COF。

原文摘要

Covalent organic frameworks (COFs) are promising photocatalysts for solar hydrogen production, yet the most electronically favorable linkages, imines, hydrolyze rapidly in water, creating a stability--activity trade-off that limits practical deployment. Navigating the combinatorial design space of nodes, linkers, linkages, and functional groups to identify candidates that are simultaneously active and durable remains a formidable challenge. Here we introduce Ara, a large-language-model (LLM) agent that leverages pretrained chemical knowledge, donor--acceptor theory, conjugation effects, and linkage stability hierarchies, to guide the search for photocatalytic COFs satisfying joint band-gap, band-edge, and hydrolytic-stability criteria. Evaluated against random search and Bayesian optimization (BO) over a space consisting of candidates with various nodes, linkers, linkages, and r-groups, screened with a GFN1-xTB fragment pipeline, Ara achieves a 52.7\% hit rate (11.5$\times$ random, p = 0.006), finds its first hit at iteration 12 versus 25 for random search, and significantly outperforms BO (p = 0.006). Inspection of the agent's reasoning traces reveals interpretable chemical logic: early convergence on vinylene and beta-ketoenamine linkages for stability, node selection informed by electron-withdrawing character, and systematic R-group optimization to center the band gap at 2.0 eV. Exhaustive evaluation of the full search space uncovers a complementary exploitation--exploration trade-off between the agent and BO, suggesting that hybrid strategies may combine the strengths of both approaches. These results demonstrate that LLM chemical priors can substantially accelerate multi-criteria materials discovery.

标签

LLM AI Agent 材料发现 逆向设计 光催化COF

arXiv 分类

physics.chem-ph cond-mat.mtrl-sci cs.AI physics.comp-ph