合理设计
计算机科学
化学
过氧化氢
特征(语言学)
共价键
代表(政治)
光合作用
传感器融合
编码(内存)
生物系统
生化工程
人工智能
共价有机骨架
机器学习
产量(工程)
光催化
分子
支持向量机
均方误差
口译(哲学)
数据挖掘
特征选择
氢键
纳米技术
训练集
融合
作者
Xiaoke Jia,Li Chen,Kun Xiong,Yujie Wang,Linjie Zhou,Xiaohui Xu,Shuang Li,Mao Wang,Arne Thomas,Chong Cheng
标识
DOI:10.1038/s44160-026-01037-0
摘要
Abstract Covalent organic frameworks (COFs) are promising photocatalysts for hydrogen peroxide (H 2 O 2 ) production, yet their rational design remains challenging. Although machine learning has advanced the prediction of properties of porous materials, its application to COF-based photocatalysis faces two major challenges: the representation of multilevel structural features and the limited availability of training datasets. Here we present a comprehensive computational framework, termed ‘information co-evolution’, that accelerates the discovery of efficient COF structures for H 2 O 2 photosynthesis. This framework integrates two pathways: to mitigate data limitations, we introduce data augmentation techniques and ensemble modelling; concurrently, to address the structural encoding challenge, we introduce a cross-level feature fusion strategy that integrates these fragment descriptors with mechanism-driven physical descriptors. These strategies collectively reduced the validation root mean square error from 4.70 to 3.31. Among over 10,000 candidates, our framework can successfully identify high-performance COFs for H 2 O 2 photosynthesis, for example, COF-343 achieves a H 2 O 2 photosynthetic rate of 12,978.7 μmol h −1 g −1 . The model interpretation further unveiled critical structural motifs, offering information for the rational design of COF photocatalysts beyond traditional trial-and-error methods.
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