Unraveling ionic switching dynamics in high-k dielectric double-gate transistors via low-frequency noise spectroscopy

  • Soi Jeong
  • , Chang Hyeon Han
  • , Been Kwak
  • , Ryun Han Koo
  • , Youngchan Cho
  • , Jangsaeng Kim
  • , Jong Ho Lee
  • , Daewoong Kwon
  • , Wonjun Shin

Research output: Contribution to journalArticlepeer-review

Abstract

Abstract: High-k dielectric materials such as HfO2 have garnered significant attention for their potential applications in advanced electronic devices due to their superior dielectric properties. Particularly, oxygen vacancies within these materials can be strategically utilized to implement memory functionalities. However, the precise analysis of the electrical, chemical, and electrochemical characteristics related to oxygen vacancies remains challenging. In this study, we fabricated a double-gate thin-film transistor (TFT) structure employing HfO2 as the gate dielectric for both top and bottom gates, with the oxygen vacancy concentration intentionally modulated by introducing a TiO2 interlayer at the bottom gate stack. This TiO2 layer effectively increases the oxygen vacancy content within the bottom gate dielectric, facilitating oxygen vacancy migration-based memory operation primarily through the bottom gate. The resulting asymmetry between the top and bottom gates was systematically analyzed using low-frequency noise (LFN) characterization, elucidating for the first time the distinct impacts of oxygen vacancy modulation on device electrical behavior and operational mechanisms. This comprehensive LFN analysis provides critical insights into the fundamental dynamics of defect-mediated memory operation, highlighting the importance of dielectric engineering in optimizing next-generation oxide-based electronic devices.

Original languageEnglish
Article number48
JournalNano Convergence
Volume12
Issue number1
DOIs
StatePublished - Dec 2025

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