4.5 Article

Identifying the 'inorganic gene' for high-temperature piezoelectric perovskites through statistical learning

Publisher

ROYAL SOC
DOI: 10.1098/rspa.2010.0543

Keywords

inorganic gene; high-temperature piezoelectrics; statistical learning; information theory; data-driven modelling

Funding

  1. Air Force Office of Scientific Research [FA9550-06-10501, FA9550-08-1-0316]
  2. National Science Foundation [DMR-08-33853]
  3. NSF-ARI Program [CMMI 09-389018]
  4. NSF-CDI Type II program [PHY 09-41576]
  5. NSF-AF [CCF09-17202]
  6. DARPA [HR0011-06-0049]
  7. Army Research Office [W911NF-10-0397]
  8. Iowa State University
  9. Direct For Computer & Info Scie & Enginr
  10. Division Of Computer and Network Systems [0751157] Funding Source: National Science Foundation
  11. Division Of Physics
  12. Direct For Mathematical & Physical Scien [0941576] Funding Source: National Science Foundation
  13. Div Of Civil, Mechanical, & Manufact Inn
  14. Directorate For Engineering [0938918] Funding Source: National Science Foundation

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This paper develops a statistical learning approach to identify potentially new high-temperature ferroelectric piezoelectric perovskite compounds. Unlike most computational studies on crystal chemistry, where the starting point is some form of electronic structure calculation, we use a data-driven approach to initiate our search. This is accomplished by identifying patterns of behaviour between discrete scalar descriptors associated with crystal and electronic structure and the reported Curie temperature (T-C) of known compounds; extracting design rules that govern critical structure-property relationships; and discovering in a quantitative fashion the exact role of these materials descriptors. Our approach applies linear manifold methods for data dimensionality reduction to discover the dominant descriptors governing structure-property correlations (the 'genes') and Shannon entropy metrics coupled to recursive partitioning methods to quantitatively assess the specific combination of descriptors that govern the link between crystal chemistry and T-C (their 'sequencing'). We use this information to develop predictive models that can suggest new structure/chemistries and/or properties. In this manner, BiTmO3-PbTiO3 and BiLuO3-PbTiO3 are predicted to have a T-C of 730 degrees C and 705 degrees C, respectively. A quantitative structure-property relationship model similar to those used in biology and drug discovery not only predicts our new chemistries but also validates published reports.

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