Department of Materials Science & Engineering, UC Berkeley, Berkeley, CA 94720, USA.
Mater Horiz. 2021 Aug 1;8(8):2169-2198. doi: 10.1039/d1mh00495f. Epub 2021 May 26.
Autonomous experimentation driven by artificial intelligence (AI) provides an exciting opportunity to revolutionize inorganic materials discovery and development. Herein, we review recent progress in the design of self-driving laboratories, including robotics to automate materials synthesis and characterization, in conjunction with AI to interpret experimental outcomes and propose new experimental procedures. We focus on efforts to automate inorganic synthesis through solution-based routes, solid-state reactions, and thin film deposition. In each case, connections are made to relevant work in organic chemistry, where automation is more common. Characterization techniques are primarily discussed in the context of phase identification, as this task is critical to understand what products have formed during synthesis. The application of deep learning to analyze multivariate characterization data and perform phase identification is examined. To achieve "closed-loop" materials synthesis and design, we further provide a detailed overview of optimization algorithms that use active learning to rationally guide experimental iterations. Finally, we highlight several key opportunities and challenges for the future development of self-driving inorganic materials synthesis platforms.
人工智能驱动的自主实验为彻底改变无机材料的发现和开发提供了令人兴奋的机会。在此,我们回顾了设计自动驾驶实验室的最新进展,包括用于自动化材料合成和表征的机器人技术,以及用于解释实验结果和提出新实验程序的人工智能。我们专注于通过基于溶液的途径、固态反应和薄膜沉积来自动化无机合成的努力。在每种情况下,都与有机化学中更常见的自动化相关工作建立了联系。主要在相鉴定的背景下讨论了表征技术,因为这项任务对于理解在合成过程中形成了哪些产物至关重要。还研究了深度学习在分析多元表征数据和进行相鉴定中的应用。为了实现“闭环”材料合成和设计,我们进一步详细介绍了使用主动学习合理指导实验迭代的优化算法。最后,我们强调了自主无机材料合成平台未来发展的几个关键机遇和挑战。