Artificial visual perception neural system using a solution-processable MoS2-based in-memory light sensor

计算机科学 感知 人造光 神经系统 材料科学 人工智能 光电子学 光学 神经科学 心理学 物理 照度
作者
Dayanand Kumar,Lana Joharji,Hanrui Li,Ayman Rezk,Ammar Nayfeh,Nazek El‐Atab
出处
期刊:Light-Science & Applications [Springer Nature]
卷期号:12 (1): 109-109 被引量:39
标识
DOI:10.1038/s41377-023-01166-7
摘要

Abstract Optoelectronic devices are advantageous in in-memory light sensing for visual information processing, recognition, and storage in an energy-efficient manner. Recently, in-memory light sensors have been proposed to improve the energy, area, and time efficiencies of neuromorphic computing systems. This study is primarily focused on the development of a single sensing-storage-processing node based on a two-terminal solution-processable MoS 2 metal–oxide–semiconductor (MOS) charge-trapping memory structure—the basic structure for charge-coupled devices (CCD)—and showing its suitability for in-memory light sensing and artificial visual perception. The memory window of the device increased from 2.8 V to more than 6 V when the device was irradiated with optical lights of different wavelengths during the program operation. Furthermore, the charge retention capability of the device at a high temperature (100 °C) was enhanced from 36 to 64% when exposed to a light wavelength of 400 nm. The larger shift in the threshold voltage with an increasing operating voltage confirmed that more charges were trapped at the Al 2 O 3 /MoS 2 interface and in the MoS 2 layer. A small convolutional neural network was proposed to measure the optical sensing and electrical programming abilities of the device. The array simulation received optical images transmitted using a blue light wavelength and performed inference computation to process and recognize the images with 91% accuracy. This study is a significant step toward the development of optoelectronic MOS memory devices for neuromorphic visual perception, adaptive parallel processing networks for in-memory light sensing, and smart CCD cameras with artificial visual perception capabilities.
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