机器人
模块化设计
移动机器人
航程(航空)
计算机科学
机器人学
比例(比率)
工程类
生化工程
模拟
人工智能
航空航天工程
物理
量子力学
操作系统
作者
Benjamin Burger,Phillip M. Maffettone,Vladimir V. Gusev,Catherine M. Aitchison,Yang Bai,Xiaoyan Wang,Xiaobo Li,Ben M. Alston,Buyi Li,Rob Clowes,Nicola Rankin,Brandon Harris,Reiner Sebastian Sprick,Andrew I. Cooper
出处
期刊:Nature
[Springer Nature]
日期:2020-07-08
卷期号:583 (7815): 237-241
被引量:897
标识
DOI:10.1038/s41586-020-2442-2
摘要
Technologies such as batteries, biomaterials and heterogeneous catalysts have functions that are defined by mixtures of molecular and mesoscale components. As yet, this multi-length-scale complexity cannot be fully captured by atomistic simulations, and the design of such materials from first principles is still rare1–5. Likewise, experimental complexity scales exponentially with the number of variables, restricting most searches to narrow areas of materials space. Robots can assist in experimental searches6–14 but their widespread adoption in materials research is challenging because of the diversity of sample types, operations, instruments and measurements required. Here we use a mobile robot to search for improved photocatalysts for hydrogen production from water15. The robot operated autonomously over eight days, performing 688 experiments within a ten-variable experimental space, driven by a batched Bayesian search algorithm16–18. This autonomous search identified photocatalyst mixtures that were six times more active than the initial formulations, selecting beneficial components and deselecting negative ones. Our strategy uses a dexterous19,20 free-roaming robot21–24, automating the researcher rather than the instruments. This modular approach could be deployed in conventional laboratories for a range of research problems beyond photocatalysis. A mobile robot autonomously operates analytical instruments in a wet chemistry laboratory, performing a photocatalyst optimization task much faster than a human would be able to.
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