神经形态工程学
激发态
材料科学
能源消耗
纳米-
光电子学
低能
计算机科学
纳米技术
人工神经网络
人工智能
物理
工程类
电气工程
复合材料
原子物理学
作者
Liubin Yang,Xiushuo Gu,Min Zhou,Jianya Zhang,Yonglin Huang,Yukun Zhao
标识
DOI:10.1088/1674-4926/24050037
摘要
Abstract Synaptic nano-devices have powerful capabilities in logic, memory and learning, making them essential components for constructing brain-like neuromorphic computing systems. Here, we have successfully developed and demonstrated a synaptic nano-device based on Ga 2 O 3 nanowires with low energy consumption. Under 255 nm light stimulation, the biomimetic synaptic nano-device can stimulate various functionalities of biological synapses, including pulse facilitation, peak time-dependent plasticity and memory learning ability. It is found that the artificial synaptic device based on Ga 2 O 3 nanowires can achieve an excellent "learning−forgetting−relearning" functionality. The transition from short-term memory to long-term memory and retention of the memory level after the stepwise learning can attribute to the great relearning functionality of Ga 2 O 3 nanowires. Furthermore, the energy consumption of the synaptic nano-device can be lower than 2.39 × 10 ‒11 J for a synaptic event. Moreover, our device demonstrates exceptional stability in long-term stimulation and storage. In the application of neural morphological computation, the accuracy of digit recognition exceeds 90% after 12 training sessions, indicating the strong learning capability of the cognitive system composed of this synaptic nano-device. Therefore, our work paves an effective way for advancing hardware-based neural morphological computation and artificial intelligence systems requiring low power consumption.
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