Leverhulme Centre for Functional Materials Design, Materials Innovation Factory and Department of Chemistry, University of Liverpool, Liverpool, UK.
Nature. 2020 Jul;583(7815):237-241. doi: 10.1038/s41586-020-2442-2. Epub 2020 Jul 8.
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 rare. Likewise, experimental complexity scales exponentially with the number of variables, restricting most searches to narrow areas of materials space. Robots can assist in experimental searches 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 water. The robot operated autonomously over eight days, performing 688 experiments within a ten-variable experimental space, driven by a batched Bayesian search algorithm. 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 dexterous free-roaming robot, automating the researcher rather than the instruments. This modular approach could be deployed in conventional laboratories for a range of research problems beyond photocatalysis.
电池、生物材料和多相催化剂等技术具有由分子和介观成分混合定义的功能。到目前为止,这种多长度尺度的复杂性还不能完全通过原子模拟来捕捉,从第一性原理设计这种材料仍然很少见。同样,实验的复杂性随变量数量呈指数级增长,这使得大多数搜索都局限在材料空间的狭窄区域内。机器人可以协助进行实验搜索,但由于需要的样本类型、操作、仪器和测量方法多种多样,它们在材料研究中的广泛应用具有挑战性。在这里,我们使用移动机器人来寻找用于从水中生产氢气的改良光催化剂。该机器人在八天内自主运行,在一个具有十个变量的实验空间中执行了 688 次实验,由分批贝叶斯搜索算法驱动。这种自主搜索确定了比初始配方活性高六倍的光催化剂混合物,选择了有益的成分并去除了负面的成分。我们的策略使用了灵活的自由漫游机器人,自动化了研究人员而不是仪器。这种模块化方法可以部署在传统实验室中,用于解决除光催化以外的一系列研究问题。