2016
DOI: 10.1073/pnas.1607412113
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Accelerated search for BaTiO 3 -based piezoelectrics with vertical morphotropic phase boundary using Bayesian learning

Abstract: An outstanding challenge in the nascent field of materials informatics is to incorporate materials knowledge in a robust Bayesian approach to guide the discovery of new materials. Utilizing inputs from known phase diagrams, features or material descriptors that are known to affect the ferroelectric response, and Landau-Devonshire theory, we demonstrate our approach for BaTiO 3 -based piezoelectrics with the desired target of a vertical morphotropic phase boundary. We predict, synthesize, and characterize a sol… Show more

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Cited by 137 publications
(86 citation statements)
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“…Subsequently, Xue et al have applied Bayesian learning framework with uncertainties estimation and took linear regression as surrogate model to guide the discovery of new BaTiO 3 ‐based materials with desirable temperature reliability (see Figure 16 ). The authors used the atomic, crystal, and electronic structure properties of the tetragonal and rhombohedral ends of composition‐temperature phase diagram as features and the change of composition dx along each MPB when temperature decreases by 100 K from room temperature (298 K) as the target.…”
Section: Applicationmentioning
confidence: 99%
See 2 more Smart Citations
“…Subsequently, Xue et al have applied Bayesian learning framework with uncertainties estimation and took linear regression as surrogate model to guide the discovery of new BaTiO 3 ‐based materials with desirable temperature reliability (see Figure 16 ). The authors used the atomic, crystal, and electronic structure properties of the tetragonal and rhombohedral ends of composition‐temperature phase diagram as features and the change of composition dx along each MPB when temperature decreases by 100 K from room temperature (298 K) as the target.…”
Section: Applicationmentioning
confidence: 99%
“…Similarly, Yuan et al have used Bayesian learning to lead the synthesis of the piezoelectric (Ba 0.84 Ca 0.16 )(Ti 0.90 Zr 0.07 Sn 0.03 )O 3 compound with largest electrostrain of 0.23% in the BaTiO 3 ‐based family and (Ba 0.85 Ca 0.15 ) (Ti 0.91 Zr 0.09 )O 3 compound with “optimal” d 33 of 362 pC N −1 . While these studies paved a way in accelerating the discovery of targeted piezoelectric materials, one objective optimization may sometimes lead to the expense of other properties not in the optimized targets or failure in reproducing the best available results …”
Section: Applicationmentioning
confidence: 99%
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“…[5,16] However, the use of Bayesian inference in materials science and related contexts is much more recent, having only emerged in the past few years. [1, 19,21] We have previously demonstrated the value of a BPE approach in using automated high-throughput temperatureand illumination-dependent current-voltage measurements (JV T i) to fit material/interface properties and defect recombination parameters in photovoltaic (PV) absorbers [1,9], i.e. as a replacement for direct experimental characterization via probabilitistic inversion of a forward model.…”
Section: Introductionmentioning
confidence: 99%
“…In later work, Seko et al [25] employed BO based on the GPR model and PI acquisition function to discover low thermal conductivity compounds. While most approaches have been implemented over a computational space, Xue et al [20], [21] used BO to accelerate the experimental and computational discovery of NiTi-based SMAs (Ti50.0Ni46.7Cu0.8Fe2.3Pd0.2) with very low thermal hysteresis and BaTiO3based piezoelectrics with vertical morphotropic phase boundary. In [20], Xue et al performed BOED using the EGO framework and KG while utilizing various probabilistic models (GPR, Support Vector Regression (SVR) with a radial basis function kernel and with a linear kernel and using bootstrap uncertainty estimates).…”
Section: Introductionmentioning
confidence: 99%