상세 보기
- 김선권;
- Im Seongil;
- Kwak In Cheol;
- Lee Jungwha;
- Roe Dong Gue;
- 외 2명
WEB OF SCIENCE
0초록
The von Neumann bottleneck and growing energy demands of conventional computing systems require innovative architectural solutions. Although neuromorphic computing is a promising alternative, implementing efficient on-chip learning mechanisms remains a fundamental challenge. Herein, a novel artificial neural platform is presented that integrates three synergistic components: modulation-optimized presynaptic transistors, threshold switching memristor-based neurons, and adaptive feedback synapses. The platform demonstrates real-time synaptic weight modification through correlation-based learning, effectively implementing Hebbian principles in hardware without requiring extensive peripheral circuitry. Stable device operation and successful implementation of local learning rules are confirmed by systematically characterizing a 6 x 6 array configuration. The experimental results demonstrate a correlation between input-output signals and subsequent weight modifications, establishing a viable pathway toward hardware implementation of Hebbian learning in neuromorphic systems.
- 제목
- Hardware Implementation of On-Chip Hebbian Learning Through Integrated Neuromorphic Architecture
- 저자
- 김선권; Im Seongil; Kwak In Cheol; Lee Jungwha; Roe Dong Gue; Ju Hyunsu; Cho Jeong Ho
- 발행일
- 2025-09
- 권
- 37
- 호
- 38