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Title
Computational Design of Interfacial Properties for Materials Discovery
Description
Interfacial interactions between materials in complex heterostructures can dominate the material's response in manymodern-day energy-related devices and processes. Considerable research has been dedicated towards addressing
the profound effects of interfaces. Here, first-principles-based quantum mechanical simulations are discussed to
characterize the interfacial materials properties of two systems. First, density-functional theory (DFT) calculations
were performed for ceramic oxide grain boundaries in undoped and doped CeO2. Second, the development,
theoretical framework, and utilization of high-throughput, workflow-based, DFT calculations are presented to model
the synthesis of two-dimensional (2D) heterostructured materials. Utilizing this workflow, predictive machine learning
models were created to elucidate key interface-property relationships in 2D heterostructured materials. The DFT simulations reveal that the Σ3(111)/[101] grain boundary was energetically more stable than theΣ3(121)/[101]grain boundary due to the larger atomic coherency in the Σ3(111)/[101] grain boundary plane. The
alkaline-earth metal-doped grain boundary energies demonstrate a parabolic dependence on the size of the
solutes, interfacial strain, and packing density of the grain boundary. The grain boundary energies were stabilized
upon Ca, Sr, and Ba doping whereas Be and Mg render them energetically unstable. The electronic density of states
reveals that no defect states were present in/above the band gap. The thermodynamic trapping of oxygen
vacancies in the near grain boundary region was not significantly impacted by the presence of Ca-solute ions.
However, the migration energy barriers within the grain boundary core were dramatically reduced with high local
Ca-solute concentrations, around 0.3 eV-0.5 eV. Chapter 5 and Chapter 6 discusses the development of the open-source, high-throughput computational "synthesis"based workflow package Hetero2d and the application of Hetero2d using 52 Janus 2D materials and 19 metallic,
cubic phase, elemental substrates. The 438 Janus 2D-substrate pairs were analyzed by identifying substrate
surfaces that stabilize metastable Janus 2D materials, characterizing their effects on the post-adsorbed 2D
materials, and identifying the bonding between the 2D material and substrate. Machine learning models were
applied to predict the binding energy, z-separation, and charge transfer of the Janus 2D-substrate pairs providing
insight into the critical properties which factor into these properties.
Date Created
2022
Contributors
- Boland, Tara Maria (Author)
- Crozier, Peter A (Thesis advisor)
- Singh, Arunima K (Thesis advisor)
- Rez, Peter (Committee member)
- Muhich, Christopher (Committee member)
- Dholabhai, Pratik (Committee member)
- Arizona State University (Publisher)
Topical Subject
Resource Type
Extent
241 pages
Language
eng
Copyright Statement
In Copyright
Primary Member of
Peer-reviewed
No
Open Access
No
Handle
https://hdl.handle.net/2286/R.2.N.171364
Level of coding
minimal
Cataloging Standards
Note
Partial requirement for: Ph.D., Arizona State University, 2022
Field of study: Materials Science and Engineering
System Created
- 2022-12-20 12:33:10
System Modified
- 2022-12-20 12:52:47
- 1 year 11 months ago
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