Jiaxiang ChenHaitao DuHaolan QuHan GaoYitian GuYitai ZhuWenbo YeJun ZouHongzhi WangXinbo Zou
Artificial optoelectronic synaptic transistors have attracted extensive research interest as an essential component for neuromorphic computing systems and brain emulation applications. However, performance challenges still remain for synaptic devices, including low energy consumption, high integration density, and flexible modulation. Employing trapping and detrapping relaxation, a novel optically stimulated synaptic transistor enabled by the AlGaN/GaN hetero-structure metal-oxide semiconductor high-electron-mobility transistor has been successfully demonstrated in this study. Synaptic functions, including excitatory postsynaptic current (EPSC), paired-pulse facilitation index, and transition from short-term memory to long-term memory, are well mimicked and explicitly investigated. In a single EPSC event, the AlGaN/GaN synaptic transistor shows the characteristics of low energy consumption and a high signal-to-noise ratio. The EPSC of the synaptic transistor can be synergistically modulated by both optical stimulation and gate/drain bias. Moreover, utilizing a convolution neural network, hand-written digit images were used to verify the data preprocessing capability for neuromorphic computing applications.
Cuihong KaiYue WangXiaoping LiuXiao LiuXuqing ZhangXiaodong PiDeren Yang
Baikui LiXi TangJiannong WangKevin J. Chen
Yue WangLei YinWen HuangYayao LiShijie HuangYiyue ZhuDeren YangXiaodong Pi
Qingzhou WanMohammad Taghi SharbatiJohn R. EricksonYanhao DuFeng Xiong
Qingxuan LiTianyu WangXuemeng HuXiaohan WuHao ZhuJi LiQingqing SunDavid Wei ZhangLin Chen