节点(物理)
定位关键字
油藏计算
声表面波
计算机科学
声学
物理
人工智能
人工神经网络
循环神经网络
作者
Yi Cao,Zefeng Zhang,Bo-Wei Qin,Weihui Sang,Honghong Li,Tinghao Wang,Feixia Tan,Gan Yang,Xumeng Zhang,Tao Liu,Du Xiang,Wei Lin,Qi Liu
出处
期刊:ACS Nano
[American Chemical Society]
日期:2024-08-14
标识
DOI:10.1021/acsnano.4c06144
摘要
Acoustic keyword spotting (KWS) plays a pivotal role in the voice-activated systems of artificial intelligence (AI), allowing for hands-free interactions between humans and smart devices through information retrieval of the voice commands. The cloud computing technology integrated with the artificial neural networks has been employed to execute the KWS tasks, which however suffers from propagation delay and the risk of privacy breach. Here, we report a single-node reservoir computing (RC) system based on the CuInP2S6 (CIPS)/graphene heterostructure planar device for implementing the KWS task with low computation cost. Through deliberately tuning the Schottky barrier height at the ferroelectric CIPS interfaces for the thermionic injection and transport of the electrons, the typical nonlinear current response and fading memory characteristics are achieved in the device. Additionally, the device exhibits diverse synaptic plasticity with an excellent separation capability of the temporal information. We construct a RC system through employing the ferroelectric device as the physical node to spot the acoustic keywords, i.e., the natural numbers from 1 to 9 based on simulation, in which the system demonstrates outstanding performance with high accuracy rate (>94.6%) and recall rate (>92.0%). Our work promises physical RC in single-node configuration as a prospective computing platform to process the acoustic keywords, promoting its applications in the artificial auditory system at the edge.
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