Metallic Metal-Organic Frameworks Predicted by the Combination of Machine Learning Methods and Ab Initio Calculations.
Yuping HeEkin D CubukMark D AllendorfEvan J ReedPublished in: The journal of physical chemistry letters (2018)
Emerging applications of metal-organic frameworks (MOFs) in electronic devices will benefit from the design and synthesis of intrinsically, highly electronically conductive MOFs. However, very few are known to exist. It is a challenging task to search for electronically conductive MOFs within the tens of thousands of reported MOF structures. Using a new strategy (i.e., transfer learning) of combining machine learning techniques, statistical multivoting, and ab initio calculations, we screened 2932 MOFs and identified 6 MOF crystal structures that are metallic at the level of semilocal DFT band theory: Mn2[Re6X8(CN)6]4 (X = S, Se,Te), Mn[Re3Te4(CN)3], Hg[SCN]4Co[NCS]4, and CdC4. Five of these structures have been synthesized and reported in the literature, but their electrical characterization has not been reported. Our work demonstrates the potential power of machine learning in materials science to aid in down-selecting from large numbers of potential candidates and provides the information and guidance to accelerate the discovery of novel advanced materials.
Keyphrases
- risk assessment
- metal organic framework
- machine learning
- density functional theory
- artificial intelligence
- molecular dynamics
- big data
- molecular dynamics simulations
- systematic review
- lymph node metastasis
- high resolution
- small molecule
- deep learning
- public health
- reduced graphene oxide
- monte carlo
- cell cycle
- health information
- social media
- cell proliferation
- fluorescent probe
- climate change
- tissue engineering
- room temperature
- living cells