Mingchao Li, Chen Li, Kang Ye, Yunzhe Xu, Weichen Song, Cihui Liu, Fangjian Xing, Guiyuan Cao, Shibiao Wei, Zhihui Chen, Yunsong Di, Zhixing Gan
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引用次数: 0
摘要
光子突触结合了光敏性和突触功能,能够高效地感知和记忆视觉信息,因此对人工视觉系统的开发至关重要。然而,开发具有低功耗和快速光擦除能力的高性能光子突触仍具有挑战性。在这里,我们提出了一种用于自供电光子突触的光子调制充电/放电机制。电流滞后使基于 CsPbBr3/溶剂/氮化碳多层结构的器件能够模拟突触行为,如兴奋性突触后电流、成对脉冲促进和长短期记忆。有趣的是,独特的辐射方向依赖性光电流赋予了光子突触光学写入和快速光学擦除的能力。此外,由于突触具有显著的可塑性,光子突触在增强对比度和降低噪声方面表现出卓越的性能。在基于人工神经网络(ANN)算法的模拟中,我们的光子突触的预处理提高了手写数字的识别率,从 11.4%(200 个训练历时)提高到 85%(约 60 个训练历时)。此外,由于光子突触具有出色的特征提取和记忆能力,因此基于光子突触的阵列可以模仿人类视网膜的面部识别,而无需 ANN 的辅助。
Self-Powered Photonic Synapses with Rapid Optical Erasing Ability for Neuromorphic Visual Perception.
Photonic synapses combining photosensitivity and synaptic function can efficiently perceive and memorize visual information, making them crucial for the development of artificial vision systems. However, the development of high-performance photonic synapses with low power consumption and rapid optical erasing ability remains challenging. Here, we propose a photon-modulated charging/discharging mechanism for self-powered photonic synapses. The current hysteresis enables the devices based on CsPbBr3/solvent/carbon nitride multilayer architecture to emulate synaptic behaviors, such as excitatory postsynaptic currents, paired-pulse facilitation, and long/short-term memory. Intriguingly, the unique radiation direction-dependent photocurrent endows the photonic synapses with the capability of optical writing and rapid optical erasing. Moreover, the photonic synapses exhibit exceptional performance in contrast enhancement and noise reduction owing to the notable synaptic plasticity. In simulations based on artificial neural network (ANN) algorithms, the pre-processing by our photonic synapses improves the recognition rate of handwritten digit from 11.4% (200 training epochs) to 85% (~60 training epochs). Furthermore, due to the excellent feature extraction and memory capability, an array based on the photonic synapses can imitate facial recognition of human retina without the assistance of ANN.
期刊介绍:
Research serves as a global platform for academic exchange, collaboration, and technological advancements. This journal welcomes high-quality research contributions from any domain, with open arms to authors from around the globe.
Comprising fundamental research in the life and physical sciences, Research also highlights significant findings and issues in engineering and applied science. The journal proudly features original research articles, reviews, perspectives, and editorials, fostering a diverse and dynamic scholarly environment.