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Database of Topological Materials
&
Spin-orbit Spillage
Kamal Choudhary, Kevin Garrity, Francesca Tavazza
NIST
American Physical Society
March 7, 2019
1
https://jarvis.nist.gov/
Motivation
2
https://doi.org/10.1093/nsr/nww026
Device perspective Exotic physics
• Dissipation-less spintronic devices
• Quantum computer
• Magnetic monopole
• Quantum anomalous Hall Effect
• Dirac-cones,…
Email: kamal.choudhary@nist.gov
Topological materials
New class of materials
(electronic bandgap perspective)
3
Email: kamal.choudhary@nist.gov
https://phys.org/news/2014-01-quantum-natural-3d-counterpart-graphene.html
https://encrypted-tbn0.gstatic.com/images?q=tbn:ANd9GcSzMKD5ICIkR9neJRre3prqIjp_iqLMu6TQp7mXKJqmmh-HqjFB
No U-turn material
(2016 Nobel prize)
Metal
Semiconductor
Insulator
Spin-orbit Spillage
• Majority of the topological materials driven by spin-orbit coupling (SOC)
• Simple idea: Compare wavefunctions of a material with and without SOC?
• Spillage initially proposed for insulators only, now extended to metals also
• Advantages over symmetry-based approaches:
disordered and magnetic mats.
• For trivial materials, spillage 0.0, non-trivial materials ≥ 0.5
• Starting from 30000 materials in JARVIS-DFT database:
1868 high-spillage materials found
4
https://www.ctcms.nist.gov/~knc6/jsmol/JVASP-1067
𝜂 𝐤 = 𝑛 𝑜𝑐𝑐(𝐤) − Tr 𝑃 ෨𝑃 ; 𝑃 𝐤 = ෍
𝑛=1
)𝑛 𝑜𝑐𝑐(𝐤
ۧ|𝜓 𝑛𝐤 ൻ𝜓 𝑛𝐤|
Liu and Vanderbilt, Phys. Rev. B 90, 125133 (2014).
https://arxiv.org/abs/1810.10640
Email: kamal.choudhary@nist.gov
Spillage and other distributions analysis
5
30000 materials
Bandgap<1 eV, atomic
weight>65, non-magnetic
(4835)
Spillage>0.5
(1868)
Wannier calc. for
289
High-symmetry and ternary structures favored
For trivial mats (red) generally SOC/NSOC bandgap same
Email: kamal.choudhary@nist.gov
Wannier function, band-crossings, inversion…
6
Email: kamal.choudhary@nist.gov
https://arxiv.org/abs/1810.10640
Examples after spillage-based narrowing down the list of materials…
PbS, P63/mmc, Z2 TI
Band-inv. at Г
Dirac cone for (001) at Г
LiBiS2, P4/mmm, weak TI
Band-inv. at R
Dirac at M and Z
KHgAs, P63/mmc, CTI InSb, P63mc, bulk Dirac cone at Г-A
GaSb, P63mc, two Dirac cones at Г-A
Weyl crossing along Γ – K and Γ – M
Periodic table and dimensionality trends
7
Email: kamal.choudhary@nist.gov
High-spillage materials generally with Pb, Bi,…
https://arxiv.org/abs/1810.10640
More than 10% low-dimensional
89.61
10.39
Dimensionality distribution
3D 2D+1D+0D
89.61
10.39
Dimensionality distribution
3D 2D+1D+0D
Demo
8
Got to https://jarvis.nist.gov/
Then JARVIS-DFT ; click ‘Bi and ‘Se’ then click ‘Search’
https://www.ctcms.nist.gov/~knc6/JVASP.html
Click on JVASP-1067 for R-3m Bi2Se3
Scroll-down to spillage-section
Email: kamal.choudhary@nist.gov
Summary and Future Work
9
➢Simple and robust criteria to identify topological materials, can be complimentary to
symmetry-based approaches
➢Publicly available database: https://jarvis.nist.gov/
➢Coupled with other databases such as for optoelectronic, mechanical, thermoelectric,
electronic properties: a great resource to accelerate material-design
➢On-going work for 2D, disordered and magnetic materials
Thank you for your time!
Email: kamal.choudhary@nist.gov

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Database of Topological Materials and Spin-orbit Spillage

  • 1. Database of Topological Materials & Spin-orbit Spillage Kamal Choudhary, Kevin Garrity, Francesca Tavazza NIST American Physical Society March 7, 2019 1 https://jarvis.nist.gov/
  • 2. Motivation 2 https://doi.org/10.1093/nsr/nww026 Device perspective Exotic physics • Dissipation-less spintronic devices • Quantum computer • Magnetic monopole • Quantum anomalous Hall Effect • Dirac-cones,… Email: kamal.choudhary@nist.gov
  • 3. Topological materials New class of materials (electronic bandgap perspective) 3 Email: kamal.choudhary@nist.gov https://phys.org/news/2014-01-quantum-natural-3d-counterpart-graphene.html https://encrypted-tbn0.gstatic.com/images?q=tbn:ANd9GcSzMKD5ICIkR9neJRre3prqIjp_iqLMu6TQp7mXKJqmmh-HqjFB No U-turn material (2016 Nobel prize) Metal Semiconductor Insulator
  • 4. Spin-orbit Spillage • Majority of the topological materials driven by spin-orbit coupling (SOC) • Simple idea: Compare wavefunctions of a material with and without SOC? • Spillage initially proposed for insulators only, now extended to metals also • Advantages over symmetry-based approaches: disordered and magnetic mats. • For trivial materials, spillage 0.0, non-trivial materials ≥ 0.5 • Starting from 30000 materials in JARVIS-DFT database: 1868 high-spillage materials found 4 https://www.ctcms.nist.gov/~knc6/jsmol/JVASP-1067 𝜂 𝐤 = 𝑛 𝑜𝑐𝑐(𝐤) − Tr 𝑃 ෨𝑃 ; 𝑃 𝐤 = ෍ 𝑛=1 )𝑛 𝑜𝑐𝑐(𝐤 ۧ|𝜓 𝑛𝐤 ൻ𝜓 𝑛𝐤| Liu and Vanderbilt, Phys. Rev. B 90, 125133 (2014). https://arxiv.org/abs/1810.10640 Email: kamal.choudhary@nist.gov
  • 5. Spillage and other distributions analysis 5 30000 materials Bandgap<1 eV, atomic weight>65, non-magnetic (4835) Spillage>0.5 (1868) Wannier calc. for 289 High-symmetry and ternary structures favored For trivial mats (red) generally SOC/NSOC bandgap same Email: kamal.choudhary@nist.gov
  • 6. Wannier function, band-crossings, inversion… 6 Email: kamal.choudhary@nist.gov https://arxiv.org/abs/1810.10640 Examples after spillage-based narrowing down the list of materials… PbS, P63/mmc, Z2 TI Band-inv. at Г Dirac cone for (001) at Г LiBiS2, P4/mmm, weak TI Band-inv. at R Dirac at M and Z KHgAs, P63/mmc, CTI InSb, P63mc, bulk Dirac cone at Г-A GaSb, P63mc, two Dirac cones at Г-A Weyl crossing along Γ – K and Γ – M
  • 7. Periodic table and dimensionality trends 7 Email: kamal.choudhary@nist.gov High-spillage materials generally with Pb, Bi,… https://arxiv.org/abs/1810.10640 More than 10% low-dimensional 89.61 10.39 Dimensionality distribution 3D 2D+1D+0D 89.61 10.39 Dimensionality distribution 3D 2D+1D+0D
  • 8. Demo 8 Got to https://jarvis.nist.gov/ Then JARVIS-DFT ; click ‘Bi and ‘Se’ then click ‘Search’ https://www.ctcms.nist.gov/~knc6/JVASP.html Click on JVASP-1067 for R-3m Bi2Se3 Scroll-down to spillage-section Email: kamal.choudhary@nist.gov
  • 9. Summary and Future Work 9 ➢Simple and robust criteria to identify topological materials, can be complimentary to symmetry-based approaches ➢Publicly available database: https://jarvis.nist.gov/ ➢Coupled with other databases such as for optoelectronic, mechanical, thermoelectric, electronic properties: a great resource to accelerate material-design ➢On-going work for 2D, disordered and magnetic materials Thank you for your time! Email: kamal.choudhary@nist.gov