Chang Pei-Hsuan, Lin Wun-Yun, Huang Ya-Chi, Chen Yu-Chieh, Shih Li-Chung, Chen Jen-Sue
Department of Materials Science and Engineering, National Cheng Kung University, Tainan 70101, Taiwan.
Academy of Innovative Semiconductor and Sustainable Manufacturing, National Cheng Kung University, Tainan 70101, Taiwan.
ACS Appl Mater Interfaces. 2025 Jan 8;17(1):1477-1484. doi: 10.1021/acsami.4c15102. Epub 2024 Dec 18.
Components needed in Artificial Intelligence with a higher information capacity are critically needed and have garnered significant attention at the forefront of information technology. This study utilizes solution-processed zinc-tin oxide (ZTO) thin-film phototransistors and modulates the values of , which allows for the regulation of electron trapping/detrapping at the ZTO/SiO interface. By coupling the excited photonic carrier and electronic trapping, logic gates such as "AND," "OR," "NAND," and "NOR" can be achieved. With the exponential growth in data generation, efficient processing and storage solutions are imperative. However, extensive data transfer between computing units and storage limits the level of artificial neural networks (ANNs). Consequently, quantized neural networks (QNNs) have gained interest for their reduced computational resource requirements and lower consumption. In this context, we introduce an optimized ternary logic circuit based on ZTO devices. By utilizing optical modulation to adjust the turn-on voltage of the single device, we demonstrate the achievement of ternary current states, thereby providing three distinct discrete states. This configuration can be extended to QNN computing, demonstrating multilevel quantized current values for in-memory computation. We achieved a handwriting digit recognition rate of 91.6%, thereby demonstrating reliable QNN hardware performance. This robust QNN performance indicates that the metal oxide phototransistor shows significant potential for future ternary computing systems.
人工智能中急需具有更高信息容量的组件,这些组件在信息技术前沿已引起了极大关注。本研究利用溶液法制备的锌锡氧化物(ZTO)薄膜光电晶体管,并调节其值,这使得能够调控ZTO/SiO界面处的电子俘获/去俘获。通过耦合激发的光子载流子和电子俘获,可以实现诸如“与”“或”“与非”和“或非”等逻辑门。随着数据生成呈指数级增长,高效的处理和存储解决方案势在必行。然而,计算单元与存储之间广泛的数据传输限制了人工神经网络(ANN)的水平。因此,量化神经网络(QNN)因其降低的计算资源需求和更低的功耗而受到关注。在此背景下,我们介绍了一种基于ZTO器件的优化三元逻辑电路。通过利用光调制来调节单个器件的开启电压,我们展示了三元电流状态的实现,从而提供了三种不同的离散状态。这种配置可以扩展到QNN计算,展示了用于内存计算的多级量化电流值。我们实现了91.6%的手写数字识别率,从而证明了可靠的QNN硬件性能。这种强大的QNN性能表明金属氧化物光电晶体管在未来三元计算系统中具有巨大潜力。