Han Linkai, Xiang Zhonghua
State Key Laboratory of Organic-Inorganic Composites, Beijing University of Chemical Technology, Beijing 100029, China.
Fundam Res. 2023 Dec 10;5(2):624-639. doi: 10.1016/j.fmre.2023.10.012. eCollection 2025 Mar.
Efficient energy conversion and storage are crucial for the sustainable development and growth of renewable energy sources. However, the limited varieties of traditional energy catalytic materials cannot match the fast-expansion requirement of raising various clean energy for industrial applications. Thus, accelerating the design and synthesis of high-performance catalysts is necessary for the application of energy equipment. Recently, with artificial intelligence (AI) technology being advanced by leaps and bounds, it is feasible to efficiently and precisely screen materials and optimize synthesis conditions in a huge unknown space. Here, we introduce and review AI techniques used in the development of catalytic materials in detail. We describe the workflow for designing and synthesizing new materials using machine learning (ML) and robotics. We summarize the sources of data collection, the intelligent algorithms commonly used to build ML models, and the laboratory modules for the intelligent synthesis of materials. We provide the illustrations of predicting the properties of catalytic materials with ML assistance in different material types. In addition, we present the potential strategies for finding material synthesis pathways, and advances in robotics to accelerate high-performance catalytic materials synthesis in the review. Finally, the summary, challenges, and potential directions in the development of AI-assisted catalytic materials are presented and discussed.
高效的能量转换和存储对于可再生能源的可持续发展和增长至关重要。然而,传统能源催化材料种类有限,无法满足工业应用中各种清洁能源快速增长的需求。因此,加速高性能催化剂的设计和合成对于能源设备的应用至关重要。近年来,随着人工智能(AI)技术的飞速发展,在巨大的未知空间中高效、精确地筛选材料和优化合成条件成为可能。在此,我们详细介绍和综述了用于催化材料开发的AI技术。我们描述了使用机器学习(ML)和机器人技术设计和合成新材料的工作流程。我们总结了数据收集的来源、常用于构建ML模型的智能算法以及材料智能合成的实验室模块。我们提供了在不同材料类型中借助ML预测催化材料性能的示例。此外,我们在综述中展示了寻找材料合成途径的潜在策略以及机器人技术在加速高性能催化材料合成方面的进展。最后,我们介绍并讨论了AI辅助催化材料开发的总结、挑战和潜在方向。