SCI和EI收录∣中国化工学会会刊

Chinese Journal of Chemical Engineering ›› 2025, Vol. 84 ›› Issue (8): 117-132.DOI: 10.1016/j.cjche.2025.04.012

• Review • Previous Articles     Next Articles

The integration of artificial intelligence and high-throughput experiments: An innovative driving force in catalyst design

Zhi Ma1, Peng Cui2, Xu Wang2, Lanyu Li1, Haoxiang Xu1, Adrian Fisher3, Daojian Cheng1   

  1. 1. State Key Laboratory of Organic-Inorganic Composites and Beijing Advanced Innovation Center for Soft Matter Science and Engineering, Beijing University of Chemical Technology, Beijing 100029, China;
    2. Petrochemical Research Institute, PetroChina, Beijing 102206, China;
    3. Department of Chemical Engineering and Biotechnology, University of Cambridge, Cambridge CB3 0AS, UK
  • Received:2025-01-15 Revised:2025-04-14 Accepted:2025-04-15 Online:2025-05-14 Published:2025-08-28
  • Contact: Lanyu Li,E-mail:lilanyu@buct.edu.cn;Daojian Cheng,E-mail:chengdj@mail.buct.edu.cn
  • Supported by:
    This work is supported by the Special Project of National Natural Science Foundation (42341204) and the the National Natural Science Foundation of China (W2411009).

The integration of artificial intelligence and high-throughput experiments: An innovative driving force in catalyst design

Zhi Ma1, Peng Cui2, Xu Wang2, Lanyu Li1, Haoxiang Xu1, Adrian Fisher3, Daojian Cheng1   

  1. 1. State Key Laboratory of Organic-Inorganic Composites and Beijing Advanced Innovation Center for Soft Matter Science and Engineering, Beijing University of Chemical Technology, Beijing 100029, China;
    2. Petrochemical Research Institute, PetroChina, Beijing 102206, China;
    3. Department of Chemical Engineering and Biotechnology, University of Cambridge, Cambridge CB3 0AS, UK
  • 通讯作者: Lanyu Li,E-mail:lilanyu@buct.edu.cn;Daojian Cheng,E-mail:chengdj@mail.buct.edu.cn
  • 基金资助:
    This work is supported by the Special Project of National Natural Science Foundation (42341204) and the the National Natural Science Foundation of China (W2411009).

Abstract: The integration of artificial intelligence (AI) with high-throughput experimentation (HTE) techniques is revolutionizing catalyst design, addressing challenges in efficiency, cost, and scalability. This review explores the synergistic application of AI and HTE, highlighting their role in accelerating catalyst discovery, optimizing reaction parameters, and understanding structure-performance relationships. HTE facilitates the rapid preparation, characterization, and evaluation of diverse catalyst formulations, generating large datasets essential for AI model training. Machine learning algorithms, including regression models, neural networks, and active learning frameworks, analyze these datasets to uncover the underlying relationships between the data, predict performance, and optimize experimental workflows in real-time. Case studies across heterogeneous, homogeneous, and electrocatalysis demonstrate significant advancements, including improved reaction selectivity, enhanced material stability, and shorten discovery cycles. The integration of AI with HTE has significantly accelerated discovery cycles, enabling the optimization of catalyst formulations and reaction conditions. Despite these achievements, challenges remain, including reliance on researcher expertise, real-time adaptability, and the complexity of large-scale data analysis. Addressing these limitations through refined experimental protocols, standardized datasets, and interpretable AI models will unlock the full potential of AI-HTE integration.

Key words: Catalysis, Machine learning, High-throughput experiment, Catalyst, Optimization, Data-driven research

摘要: The integration of artificial intelligence (AI) with high-throughput experimentation (HTE) techniques is revolutionizing catalyst design, addressing challenges in efficiency, cost, and scalability. This review explores the synergistic application of AI and HTE, highlighting their role in accelerating catalyst discovery, optimizing reaction parameters, and understanding structure-performance relationships. HTE facilitates the rapid preparation, characterization, and evaluation of diverse catalyst formulations, generating large datasets essential for AI model training. Machine learning algorithms, including regression models, neural networks, and active learning frameworks, analyze these datasets to uncover the underlying relationships between the data, predict performance, and optimize experimental workflows in real-time. Case studies across heterogeneous, homogeneous, and electrocatalysis demonstrate significant advancements, including improved reaction selectivity, enhanced material stability, and shorten discovery cycles. The integration of AI with HTE has significantly accelerated discovery cycles, enabling the optimization of catalyst formulations and reaction conditions. Despite these achievements, challenges remain, including reliance on researcher expertise, real-time adaptability, and the complexity of large-scale data analysis. Addressing these limitations through refined experimental protocols, standardized datasets, and interpretable AI models will unlock the full potential of AI-HTE integration.

关键词: Catalysis, Machine learning, High-throughput experiment, Catalyst, Optimization, Data-driven research