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Exploring Hydrogen Incorporation into the Nb 4 AlC 3 MAX Phases: Ab Initio Calculations.

Yudong FuZifeng LiWeihong GaoDanni ZhaoZhihao HuangBin SunMufu YanGuotan LiuZihang Liu
Published in: Materials (Basel, Switzerland) (2022)
The Nb 4 AlC 3 MAX phase can be regarded as a TMC structure with stacking faults, which has great potential as a novel solid hydrogen storage material. Herein, we used ab initio calculations for understanding the hydrogen incorporation into Nb 4 AlC 3 MAX phases, including equilibrium structural characteristics, energy changes, electronic structures, bonding characteristics, and diffusion paths. According to the calculated results, H has thermal stability in the interstice of the Nb-Al layer, and the most probable insertion site is an octahedron (3-site) composed of three Nb atoms and three Al atoms. When C vacancies are introduced, the Nb-C layer has a specific storage capacity for H. In addition, Al vacancies can also be used as possible sites for H incorporation. Moreover, the introduction of vacancies significantly increase the hydrogen storage capacity of the MAX phase. According to the electronic structure and bonding characteristics, the excellent hydrogen storage ability of the Nb 4 AlC 3 structure may be due to the formation of ionic bonds between H and Nb/Al. It is worth noting that the H-Al bond in the 1-site is a covalent bond and an ionic bond key mixture. The linear synchronous transit optimization study shows that only H diffusion in Al vacancies is not feasible. In conclusion, the Nb-Al layer in Nb 4 AlC 3 can provide favorable conditions for the continuous insertion and subsequent extraction of H, while the vacancy structure is more suitable for H storage. Our work provides solid theoretical results for understanding the hydrogen incorporation into Nb 4 AlC 3 MAX phases that can be helpful for the design of advanced hydrogen storage materials.
Keyphrases
  • molecular dynamics
  • density functional theory
  • visible light
  • mass spectrometry
  • monte carlo
  • neural network