4.3 Article

Crystallography companion agent for high-throughput materials discovery

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NATURE COMPUTATIONAL SCIENCE
卷 1, 期 4, 页码 290-297

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SPRINGERNATURE
DOI: 10.1038/s43588-021-00059-2

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资金

  1. Engineering and Physical Sciences Research Council (EPSRC) [EP/N004884/1]
  2. BNL Laboratory Directed Research and Development (LDRD) [20-032]
  3. Leverhulme Trust via the Leverhulme Research Centre for Functional Materials Design
  4. German Research Foundation (DFG) [TRR87/3, SFB-TR 87]
  5. DOE Office of Science by Brookhaven National Laboratory [DE-SC0012704]

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The article describes a computer program driven by artificial intelligence for autonomous characterization of X-ray diffraction data to discover new materials. By training an ensemble model using a physically accurate synthetic dataset, the program outputs probabilistic classifications to improve accuracy and save time, demonstrating applicability to various organic and inorganic materials.
The discovery of new structural and functional materials is driven by phase identification, often using X-ray diffraction (XRD). Automation has accelerated the rate of XRD measurements, greatly outpacing XRD analysis techniques that remain manual, time-consuming, error-prone and impossible to scale. With the advent of autonomous robotic scientists or self-driving laboratories, contemporary techniques prohibit the integration of XRD. Here, we describe a computer program for the autonomous characterization of XRD data, driven by artificial intelligence (AI), for the discovery of new materials. Starting from structural databases, we train an ensemble model using a physically accurate synthetic dataset, which outputs probabilistic classifications-rather than absolutes-to overcome the overconfidence in traditional neural networks. This AI agent behaves as a companion to the researcher, improving accuracy and offering substantial time savings. It is demonstrated on a diverse set of organic and inorganic materials characterization challenges. This method is directly applicable to inverse design approaches and robotic discovery systems, and can be immediately considered for other forms of characterization such as spectroscopy and the pair distribution function.

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