Engineering and TechnologyNature Communications
A neuromorphic physiological signal processing system based on VO2 memristor for next-generation human-machine interface
R. Yuan, P. J. Tiw, et al.
Discover a groundbreaking neuromorphic physiological signal processing system utilizing VO2 memristors, achieving remarkable accuracies for arrhythmia classification and epileptic seizure detection. This innovative research conducted by Rui Yuan, Pek Jun Tiw, Lei Cai, Zhiyu Yang, Chang Liu, Teng Zhang, Chen Ge, Ru Huang, and Yuchao Yang showcases the incredible potential of memristors for enhancing human-machine interfaces.
Related Publications
Explore these studies to deepen your understanding
Adjacent work that informs or extends this paper's methodology and findings.
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.
Engineering and Technology
A double-layered liquid metal-based electrochemical sensing system on fabric as a wearable detector for glucose in sweat
X. Chen, H. Wan, et al.
Engineering and Technology
A skin-conformal and breathable humidity sensor for emotional mode recognition and non-contact human-machine interface
T. Li, T. Zhao, et al.
Chemistry
Developing a machine learning model for accurate nucleoside hydrogels prediction based on descriptors
W. Li, Y. Wen, et al.

