Gong Yue, Duan Ruihuan, Hu Yi, Wu Yao, Zhu Song, Wang Xingli, Wang Qijie, Lau Shu Ping, Liu Zheng, Tay Beng Kang
Interdisciplinary Graduate School, Nanyang Technological University, Singapore, 639798, Singapore.
School of Electrical and Electronic Engineering, Nanyang Technological University, Singapore, 639798, Singapore.
Nat Commun. 2025 Jan 2;16(1):230. doi: 10.1038/s41467-024-55562-7.
Hardware implementation of reconfigurable and nonvolatile photoresponsivity is essential for advancing in-sensor computing for machine vision applications. However, existing reconfigurable photoresponsivity essentially depends on the photovoltaic effect of p-n junctions, which photoelectric efficiency is constrained by Shockley-Queisser limit and hinders the achievement of high-performance nonvolatile photoresponsivity. Here, we employ bulk photovoltaic effect of rhombohedral (3R) stacked/interlayer sliding tungsten disulfide (WS) to surpass this limit and realize highly reconfigurable, nonvolatile photoresponsivity with a retinomorphic photovoltaic device. The device is composed of graphene/3R-WS/graphene all van der Waals layered structure, demonstrating a wide range of nonvolatile reconfigurable photoresponsivity from positive to negative ( ± 0.92 A W) modulated by the polarization of 3R-WS. Further, we integrate this system with a convolutional neural network to achieve high-accuracy (100%) color image recognition at σ = 0.3 noise level within six epochs. Our findings highlight the transformative potential of bulk photovoltaic effect-based devices for efficient machine vision systems.
可重构和非易失性光响应的硬件实现对于推进机器视觉应用中的传感器内计算至关重要。然而,现有的可重构光响应本质上依赖于p-n结的光伏效应,其光电效率受到肖克利-奎塞尔极限的限制,阻碍了高性能非易失性光响应的实现。在此,我们利用菱面体(3R)堆叠/层间滑动二硫化钨(WS)的体光伏效应来突破这一限制,并通过视网膜形态光伏器件实现高度可重构、非易失性的光响应。该器件由石墨烯/3R-WS/石墨烯全范德华层状结构组成,展示了由3R-WS的极化调制的从正到负(±0.92 A W)的广泛非易失性可重构光响应。此外,我们将该系统与卷积神经网络集成,以在六个训练周期内实现σ = 0.3噪声水平下的高精度(100%)彩色图像识别。我们的研究结果突出了基于体光伏效应的器件在高效机器视觉系统中的变革潜力。