Direct imaging of asymmetric interfaces and electrostatic potentials inside a hafnia-zirconia ferroelectric nanocapacitor
Daniel B Durham, Manifa Noor, Khandker Akif Aabrar, Yuzi Liu, Suman, Datta, Kyeongjae Cho, Supratik Guha, Charudatta Phatak

TL;DR
This study uses advanced electron microscopy to directly image the nanoscale structure, chemistry, and electrostatic potentials in a hafnia-zirconia ferroelectric nanocapacitor, revealing interfacial layers and vacancy effects crucial for device performance.
Contribution
It provides the first direct nanoscale imaging of composition and electrostatic potential in a ferroelectric capacitor, uncovering interfacial chemistry and potential profiles affecting device behavior.
Findings
Identification of a tungsten sub-oxide interfacial layer
Detection of oxygen vacancies and negative built-in potential in HZO
Correlation of interfacial chemistry with asymmetric switching fields
Abstract
In hafnia-based thin-film ferroelectric devices, chemical phenomena during growth and processing such as oxygen vacancy formation and interfacial reactions appear to strongly affect device performance. However, the nanoscale structure, chemistry, and electrical potentials in these devices are not fully known, making it difficult to understand their influence on device properties. Here, we directly image the composition and electrostatic potential with nanometer resolution in the cross section of a nanocrystalline W / HfZrO (HZO) / W ferroelectric capacitor using multimodal electron microscopy. This reveals a 1.4 nm wide tungsten sub-oxide interfacial layer formed at the bottom interface during fabrication which introduces a potential dip and leads to asymmetric switching fields. Additionally, the measured inner potential in HZO is consistent with the…
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Taxonomy
TopicsFerroelectric and Negative Capacitance Devices · Machine Learning in Materials Science · Fuel Cells and Related Materials
