基于自整流 TiOx 光突触的传感器内存储计算,用于图像识别和语音信号处理

IF 5.3 2区 材料科学 Q2 MATERIALS SCIENCE, MULTIDISCIPLINARY
Dengshun Gu, Bingtao Yan, Bochang Zhang, Changrong Liao, Xiude Yang, Ping Li, Bo Wu, Bai Sun, Guangdong Zhou
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引用次数: 0

摘要

利用溶胶-凝胶法制备了一种具有双层电阻功能的同质结记忆晶体。电学测量结果表明,掺杂 F 的二氧化锡(FTO)/氧化钛/金记忆器表现出典型的波动性,使该器件具有优异的突触特性。通过分析 FTO/TiOx/Au 记忆晶闸管的伏安特性,可以看出氧化钛同模记忆晶闸管具有自整流和模拟开关特性,这为大规模阵列集成提供了先天优势,可用于高效生物启发计算和感知人工视觉计算。在电开关方面,这种光电子忆阻器具有低工作功耗、双脉冲异化学习规则(可忠实模拟突触的多重功能)和学习-遗忘-再学习规则。在光学特性方面,我们的忆阻器表现出卓越的正向光电导记忆效应(PPM),其电导状态对光照强度和频率非常敏感,显著呈现出完全可控的突触习惯化特性。更重要的是,将光刺激和电刺激控制融为一体,电导权重可高度线性更新,大大加快了储能计算(RC)的训练处理速度。使用我们的光电子 TiOx Memristor 演示了作为人工智能任务的图像和语音信号处理识别,经过数次历时训练后,准确率超过 90%。这种基于自矫正 TiOx 光突触的传感器内存储计算为未来边缘计算中的神经形态视觉计算提供了一个全新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

In-Sensor Reservoir Computing Based on Self-Rectifying TiOx Photosynapse for Image Recognition and Speech Signal Processing

In-Sensor Reservoir Computing Based on Self-Rectifying TiOx Photosynapse for Image Recognition and Speech Signal Processing
A homojunction memristor with a double layer of resistive function was prepared by the sol–gel method. Electrical measurements show that the F-doped SnO2 (FTO)/TiOx/Au memristor exhibits typical volatility, endowing the device with excellent synaptic properties. By analyzing the voltammetry characteristics of the FTO/TiOx/Au memristor, it is suggested that the titanium oxide homomode memristor exhibits self-rectifying and analog switching characteristics, which can provide inherent advantages for large-scale array integration for high-efficiency bioinspired computing as well as in-sensing artificial vision computing. For its electric switchings, this photoelectronic memristor holds a low operating power consumption, dual-pulse dissimilation learning rules that can faithfully simulate the multifunction of synapses, and learning–forgetting–relearning rules. In terms of optical properties, our memristor exhibits excellent positive photoconductance memory effect (PPM), and the conductance states are sensitive to the light intensity and frequency, significantly presenting synaptic habituation characteristics that are fully controlled. More importantly, integrating the light and electric stimuli control, the conductance weight can be highly linear update, largely accelerating training processing for the reservoir computing (RC). Recognition of image and speech signal processing as the artificial intelligence task is demonstrated using our photoelectronic TiOx memristor, showing over 90% accuracy after several epoch training. This in-sensor reservoir computing based on self-rectifying TiOx photosynapse gives a brand-new horizon on neuromorphic vision computing in future edge computing.
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来源期刊
CiteScore
8.30
自引率
3.40%
发文量
1601
期刊介绍: ACS Applied Nano Materials is an interdisciplinary journal publishing original research covering all aspects of engineering, chemistry, physics and biology relevant to applications of nanomaterials. The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrate knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important applications of nanomaterials.
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