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A neuromorphic physiological signal processing system based on VO₂ memristor for next-generation human-machine interface

Engineering and Technology

A neuromorphic physiological signal processing system based on VO₂ memristor for next-generation human-machine interface

R. Yuan, P. J. Tiw, et al.

Physiological signal processing is advanced by a VO₂ memristor–based neuromorphic system that encodes sparse, high-fidelity spikes and implements compact LIF/ALIF neurons within an LSNN, achieving 95.83% and 99.79% for arrhythmia classification and epileptic seizure detection. Research conducted by Rui Yuan, Pek Jun Tiw, Lei Cai, Zhiyu Yang, Chang Liu, Teng Zhang, Chen Ge, Ru Huang, and Yuchao Yang.

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Abstract
Physiological signal processing plays a key role in next-generation human-machine interfaces as physiological signals provide rich cognition- and health-related information. However, the explosion of physiological signal data presents challenges for traditional systems. Here, we propose a highly efficient neuromorphic physiological signal processing system based on VO₂ memristors. The volatile and positive/negative symmetric threshold switching characteristics of VO₂ memristors are leveraged to construct a sparse-spiking yet high-fidelity asynchronous spike encoder for physiological signals. Besides, the dynamical behavior of VO₂ memristors is utilized in compact Leaky Integrate and Fire (LIF) and Adaptive-LIF (ALIF) neurons, which are incorporated into a decision-making Long short-term memory Spiking Neural Network. The system demonstrates superior computing capabilities, needing only small-sized LSNNs to attain high accuracies of 95.83% and 99.79% in arrhythmia classification and epileptic seizure detection, respectively. This work highlights the potential of memristors in constructing efficient neuromorphic physiological signal processing systems and promoting next-generation human-machine interfaces.
Publisher
Nature Communications
Published On
Jun 21, 2023
Authors
Rui Yuan, Pek Jun Tiw, Lei Cai, Zhiyu Yang, Chang Liu, Teng Zhang, Chen Ge, Ru Huang, Yuchao Yang
Tags
VO₂ memristors
neuromorphic physiological signal processing
sparse-spiking encoder
LIF and ALIF neurons
LSNN decision-making
arrhythmia classification
epileptic seizure detection
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