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Combining High-Throughput Computing and Statistical Learning to Develop and Understand New Thermoelectric Compounds
Anubhav JainEnergy Technologies Area
Lawrence Berkeley National LaboratoryBerkeley, CA
MRS Fall 2016
Slides (already) posted to http://www.slideshare.net/anubhavster
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Thermoelectric materials convert heat to electricity• A thermoelectric material
generates a voltage based on thermal gradient
• Applications– Heat to electricity– Refrigeration
• Advantages include:– Reliability– Easy to scale to different
sizes (including compact)
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www.alphabetenergy.com
Alphabet Energy – 25kW generator
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Thermoelectric figure of merit
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• Require new, abundant materials that possess a high “figure of merit”, or zT, for high efficiency
• Target: zT at least 1, ideally >2
ZT = α2σT/κ
power factor >2 mW/mK2
(PbTe=10 mW/mK2)
Seebeck coefficient > 100 �V/K Band structure + Boltztrap
electrical conductivity > 103 /(ohm-cm) Band structure + Boltztrap
thermal conductivity < 1 W/(m*K) • �e from Boltztrap • �l difficult (phonon-phonon scattering)
• Very difficult to balance these properties using intuition alone!
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Example: Seebeck and conductivity tradeoff
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Heavy band:ü Large DOS
(higher Seebeck and more carriers)✗Large effective mass
(poor mobility)
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Example: Seebeck and conductivity tradeoff
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Heavy band:ü Large DOS
(higher Seebeck and more carriers)✗Large effective mass
(poor mobility)
Light band:ü Small effective mass
(improved mobility)✗Small DOS
(lower Seebeck, fewer carriers)
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Example: Seebeck and conductivity tradeoff
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Heavy band:ü Large DOS
(higher Seebeck and more carriers)✗Large effective mass
(poor mobility)
Light band:ü Small effective mass
(improved mobility)✗Small DOS
(lower Seebeck, fewer carriers)
Multiple bands, off symmetry:ü Large DOS with small
effective mass✗Difficult to design!
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We’ve initiated a search for new bulk thermoelectrics
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Initial procedure similar to Madsen (2006)
On top of this traditional procedure we add:• thermal conductivity
model of Pohl-Cahill• targeted defect
calculations to assess doping
• Today - ~50,000 compounds screened!
Madsen, G. K. H. Automated search for new thermoelectric materials: the case of LiZnSb.J. Am. Chem. Soc., 2006, 128, 12140–6
Chen,W.etal.Understandingthermoelectricpropertiesfromhigh-throughputcalculations:trends,insights,andcomparisonswithexperiment.J.Mater.Chem.C 4, 4414–4426(2016).
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Going beyond constant relaxation time - AMSET• Fully ab initio mobility and Seebeck
including realistic scattering effects• Previously aMOBT (Washington
University in St. Louis)• Parameterizes the band structure
into 1D– Misses anisotropic effects and doesn’t
fully treat multi-band effects (for now)• Uses scattering expressions derived
by previous work by Rode with DFT parameters– ionized impurity scattering– deformation potential scattering– piezoelectric scattering– polar optical phonon
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Faghaninia, A., Ager, J. W. & Lo, C. S. Ab initio electronic transport model with explicit solution to the linearized Boltzmann transport equation. Phys. Rev. B 91, 235123 (2015).
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Transport database
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All data will be made available via upcoming publication as well as on Materials Project• Seebeck• conductivity/tau• effective mass• electronic thermal conductivity
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New Materials from screening – TmAgTe2 (calcs)
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Zhu, H.; Hautier, G.; Aydemir, U.; Gibbs, Z. M.; Li, G.; Bajaj, S.; Pöhls, J.-H.; Broberg, D.; Chen, W.; Jain, A.; White, M. A.; Asta, M.; Snyder, G. J.; Persson, K.; Ceder, G. Computational and experimental investigation of TmAgTe 2 and XYZ 2 compounds, a new group of thermoelectric materials identified by first-principles high-throughput screening, J. Mater. Chem. C, 2015, 3
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TmAgTe2 (experiments)
11Zhu, H.; Hautier, G.; Aydemir, U.; Gibbs, Z. M.; Li, G.; Bajaj, S.; Pöhls, J.-H.; Broberg, D.; Chen, W.; Jain, A.; White, M. A.; Asta, M.; Snyder, G. J.; Persson, K.; Ceder, G. Computational and experimental investigation of TmAgTe 2 and XYZ 2 compounds, a new group of thermoelectric materials identified by first-principles high-throughput screening, J. Mater. Chem. C, 2015, 3
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YCuTe2 – friendlier elements, higher zT (0.75)
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• A combination of intuition and calculations suggest to try YCuTe2
• Higher carrier concentration of ~1019
• Retains very low thermal conductivity, peak zT ~0.75
• But – unlikely to improve further
Aydemir, U.; Pöhls, J.-H.; Zhu, H.l Hautier, G.; Bajaj, S.; Gibbs, Z. M.; Chen, W.; Li, G.; Broberg, D.; Kang, S.D.; White, M. A.; Asta, M.; Ceder, G.; Persson, K.; Jain, A.; Snyder, G. J. YCuTe2: A Member of a New Class of Thermoelectric Materials with CuTe4-Based Layered Structure. J. Mat Chem C, 2016
experiment
computation
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Bournonites – CuPbSbS3 and analogues
• Natural mineral• Measured thermal conductivity for
CuPbSbS3 < 1 W/m*K– Stereochemical lone pair scattering
mechanisms• Measured Seebeck coefficient in
the range of 400 µV/K• BUT electrical conductivity likely
requires improvement – can calculations help?
• Total of 320 substitutions into ABCD3 formula computed
• Experimental study is next
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Faghaninia A., Yu G., Aydemir U., Wood M., Chen W., Rignanese G.M., Snyder J., Hautier G., Jain, A. A computational assessment of the electronic, thermoelectric, and defect properties of bournonite (CuPbSbS3) and related substitutions (submitted)
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Variation of properties with substitution
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Variation of properties with substitution
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B and C groups (lone pair sites) require heavier elements for stability (low Eh) – Si and N are very unstable!
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Variation of properties with substitution
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As expected, band gaps tend to decrease with heavier anionsThis is due to shifting up of the VBM level
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Variation of properties with substitution
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Variation of properties with substitution
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Cu has lowest bandgap because Cu1+ also tends to be very high up in the valence band
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Variation of properties with substitution
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Jain,A.,Hautier,G.,Ong,S.P.&Persson,K.Newopportunitiesformaterialsinformatics:Resourcesanddataminingtechniquesforuncoveringhiddenrelationships.J.Mater.Res. 31, 977–994(2016).
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Interesting bournonites and effect of scattering
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AMSET indicates interband scattering is extremely significant – need to confirm
Substitutions listed here are close to thermodynamic stability (<0.05 eV /atom unstable)
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Defects – selenide looks slightly better than sulfide
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(a) (b)
• Multiple defects prevent n-type formation• p-type limited by SbPb defect. Situation slightly better in selenide because CuPb can help
compensate• Extrinsic defects calculations (not shown) do not provide clear paths forward
Faghaninia A., Yu G., Aydemir U., Wood M., Chen W., Rignanese G.M., Snyder J., Hautier G., Jain, A. A computational assessment of the electronic, thermoelectric, and defect properties of bournonite (CuPbSbS3) and related substitutions (submitted)
CuPbSbS3 CuPbSbSe3
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Open data and software
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www.materialsproject.org
www.pymatgen.org
www.github.com/hackingmaterials/MatMethods
www.pythonhosted.org/FireWorksNote: results of 50,000 transport calcs will eventually be posted here
Coming soon: AMSETComing soon: MatMiner
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MatMiner (coming soon)MatMiner’s goal: help enable data mining studies in materials science
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Interactive demo of MatMiner
• Can we create a machine learning model to predict bulk modulus that is accurate to ~20GPa in ~10 mins?
• Let’s find out!
• Code posted at:– https://gist.github.com/computron
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Thank you!• Collaborating research groups
– Jeffrey Snyder– Geoffroy Hautier– Mary Anne White
– Mark Asta– Hong Zhu– Kristin Persson– Gerbrand Ceder
• Primary researchers– TmAgTe2 – Prof. Hong Zhu and Dr. Umut Aydemir– YCuTe2 – Dr. Umut Aydemir and Dr. Jan Pohls
– CuPbSbS3 – Dr. Alireza Faghaninia– MatMiner – Dr. Saurabh Bajaj
• NERSC computing center and staff• Funding: U.S. Department of Energy, Basic Energy Sciences
25Slides (already) posted to http://www.slideshare.net/anubhavster