生成式人工智能在纳米多孔材料设计中的应用:综述与展望

IF 6.2 Q1 CHEMISTRY, MULTIDISCIPLINARY
Evan Xie, Xijun Wang, J. Ilja Siepmann, Haoyuan Chen and Randall Q. Snurr
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引用次数: 0

摘要

生成式人工智能(AI)正在成为推进纳米多孔材料(如金属有机框架、共价有机框架和沸石)设计的有力工具。由于其模块化、可调结构,这些材料在碳捕获、催化、气体储存、化学分离和药物输送等重要领域具有潜在的应用前景,其在这些领域的性能取决于对其结构、化学功能和性质的精确控制。在此,我们提供了生成人工智能算法的回顾,这些算法正在成为纳米多孔材料设计的强大工具,即生成对抗网络、变分自编码器、扩散模型、遗传算法、强化学习和大型语言模型。有些模型特别擅长产生多样化和高质量的设计,而其他模型则擅长探索大型设计空间或优化具有所需性能的材料。某些算法还允许不同设计之间的有效转换,有些算法还提供基于文本输入生成材料的多功能性。我们讨论了这些算法在多孔材料设计中的优势、局限性和应用,并强调了将人工智能与实验工作流程集成以加速人工智能生成材料的开发和验证的未来潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Generative AI for design of nanoporous materials: review and future prospects

Generative AI for design of nanoporous materials: review and future prospects

Generative artificial intelligence (AI) is emerging as a powerful tool for advancing the design of nanoporous materials such as metal–organic frameworks, covalent–organic frameworks, and zeolites. These materials have potential application in important areas such as carbon capture, catalysis, gas storage, chemical separation, and drug delivery due to their modular, tunable structures, and their performance in these areas depends on precise control over their structure, chemical functionalities, and properties. Herein, we provide a review of generative AI algorithms that are emerging as powerful tools for the design of nanoporous materials, namely generative adversarial networks, variational autoencoders, diffusion models, genetic algorithms, reinforcement learning, and large language models. Some models are particularly good at generating diverse and high-quality designs, while others excel at exploring large design spaces or optimizing materials with desired properties. Certain algorithms also allow for efficient transitions between different designs, and some offer versatility in generating materials based on textual input. We discuss the advantages, limitations, and applications of these algorithms in porous material design and emphasize the future potential of integrating AI with experimental workflows to accelerate the development and validation of AI-generated materials.

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