상세 보기
- Lim, Eunjin;
- Seo, Euncho;
- Kim, Sungjun
WEB OF SCIENCE
1SCOPUS
1초록
The HfOx-based ferroelectric memristor is in the spotlight due to its complementary metal-oxide-semiconductor compatibility and scaling compared to existing perovskite-based ferroelectric memory. However, ferroelectric properties vary depending on the coefficient of thermal expansion of the top electrode, which is caused by strain engineering. When tungsten (W) with a small coefficient of thermal expansion is used as an electrode, the ferroelectric properties are improved, although the reliability is poor due to the diffusion of W atoms. Here, TiN can be used to prevent the diffusion of W. This metal nitride successfully suppresses the leakage current and induces a larger remanent polarization of 19.7 mu C cm(-2), a smaller coercive voltage of 9.26 V, and a faster switching speed. W/TiN/HAO/n(+) Si can also exhibit multi-level characteristics and achieve a 10% read margin in 320 x 320 arrays. Ferroelectrics can also be applied to neuromorphic computing by imitating synaptic properties such as potentiation, depression, paired-pulse facilitation, and excitatory postsynaptic current. Using short-term plasticity, successful implementation in reservoir computing is also realized, achieving 95% classification accuracy. This paper shows promise for the use of memristors in artificial neural networks.
키워드
- 제목
- Influence of the TiN diffusion barrier on the leakage current and ferroelectricity in an Al-doped HfOx ferroelectric memristor and its application to neuromorphic computing
- 저자
- Lim, Eunjin; Seo, Euncho; Kim, Sungjun
- 발행일
- 2024-10
- 유형
- Article
- 저널명
- Nanoscale
- 권
- 16
- 호
- 41
- 페이지
- 19445 ~ 19452