Jieru SongJialin MengTianyu WangChangjin WanHao ZhuQingqing SunDavid Wei ZhangLin Chen
Abstract Photoelectric synaptic devices could emulate synaptic behaviors utilizing photoelectric effects and offer promising prospects with their high-speed operation and low crosstalk. In this study, we introduced a novel InGaZnO-based photoelectric memristor. Under both electrical and optical stimulation, the device successfully emulated synaptic characteristics including excitatory postsynaptic current (EPSC), paired-pulse facilitation (PPF), long-term potentiation (LTP), and long-term depression (LTD). Furthermore, we demonstrated the practical application of our synaptic devices through the recognition of handwritten digits. The devices have successfully shown their ability to modulate synaptic weights effectively through light pulse stimulation, resulting in a recognition accuracy of up to 93.4%. The results illustrated the potential of IGZO-based memristors in neuromorphic computing, particularly their ability to simulate synaptic functionalities and contribute to image recognition tasks.
Yixin ZhuHuiwu MaoYing ZhuLi ZhuChunsheng ChenXiangjing WangShuo KeChuanyu FuChangjin WanQing Wan
Wen HuangHuixing ZhangZhengjian LinPengjie HangXing’ao Li
Xue ChenBingkun ChenPengfei ZhaoVellaisamy A. L. RoySu‐Ting HanYe Zhou
Jieru SongJialin MengLu ChenTianyu WangHao ZhuQingqing SunDavid Wei ZhangLin Chen
Yuseong JangJunhyeong ParkJimin KangSoo‐Yeon Lee