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Towards universal neural network potential for material discovery applicable to arbitrary combination of 45 elements.

So TakamotoChikashi ShinagawaDaisuke MotokiKosuke NakagoWenwen LiIori KurataTaku WatanabeYoshihiro YayamaHiroki IriguchiYusuke AsanoTasuku OnoderaTakafumi IshiiTakao KudoHideki OnoRyohto SawadaRyuichiro IshitaniMarc OngTaiki YamaguchiToshiki KataokaAkihide HayashiNontawat CharoenphakdeeTakeshi Ibuka
Published in: Nature communications (2022)
Computational material discovery is under intense study owing to its ability to explore the vast space of chemical systems. Neural network potentials (NNPs) have been shown to be particularly effective in conducting atomistic simulations for such purposes. However, existing NNPs are generally designed for narrow target materials, making them unsuitable for broader applications in material discovery. Here we report a development of universal NNP called PreFerred Potential (PFP), which is able to handle any combination of 45 elements. Particular emphasis is placed on the datasets, which include a diverse set of virtual structures used to attain the universality. We demonstrated the applicability of PFP in selected domains: lithium diffusion in LiFeSO 4 F, molecular adsorption in metal-organic frameworks, an order-disorder transition of Cu-Au alloys, and material discovery for a Fischer-Tropsch catalyst. They showcase the power of PFP, and this technology provides a highly useful tool for material discovery.
Keyphrases
  • neural network
  • small molecule
  • metal organic framework
  • high throughput
  • molecular dynamics simulations
  • ionic liquid
  • room temperature
  • aqueous solution
  • sensitive detection
  • gold nanoparticles
  • rna seq
  • single molecule