神经形态工程学
油藏计算
记忆电阻器
计算机科学
硅
电导
频道(广播)
材料科学
突触后电流
电极
人工神经网络
导电体
电子工程
光电子学
兴奋性突触后电位
人工智能
工程类
循环神经网络
物理
电信
化学
复合材料
受体
量子力学
生物化学
凝聚态物理
作者
Dongyeol Ju,Jungwoo Lee,Sungjun Kim,Seongjae Cho
摘要
Conductive-bridge random access memory can be used as a physical reservoir for temporal learning in reservoir computing owing to its volatile nature. Herein, a scaled Cu/HfOx/n+-Si memristor was fabricated and characterized for reservoir computing. The scaled, silicon nanofin bottom electrode formation is verified by scanning electron and transmission electron microscopy. The scaled device shows better cycle-to-cycle switching variability characteristics compared with those of large-sized cells. In addition, synaptic characteristics such as conductance changes due to pulses, paired-pulse facilitation, and excitatory postsynaptic currents are confirmed in the scaled memristor. High-pattern accuracy is demonstrated by deep neural networks applied in neuromorphic systems in conjunction with the use of the Modified National Institute of Standards and Technology database. Furthermore, a reservoir computing system is introduced with six different states attained by adjusting the amplitude of the input pulse. Finally, high-performance and efficient volatile reservoir computing in the scaled device is demonstrated by conductance control and system-level reservoir computing simulations.
科研通智能强力驱动
Strongly Powered by AbleSci AI