Author:
Zhang Jia-Wei,Yao Hong-Bo,Zhang Yuan-Zheng,Jiang Wei-Bo,Wu Yong-Hui,Zhang Ya-Ju,Ao Tian-Yong,Zheng Hai-Wu, , ,
Abstract
In the era of The Internet of Things, how to develop a smart sensor system with sustainable power supply, easy deployment and flexible use has become an urgent problem to be solved. Triboelectric nanogenerator (TENG) driven by Maxwell’s Displacement Current can convert mechanical motion into electrical signals, thus it can be used as a self-powered sensor. Sensors based on TENGs have the advantages of simple structure and high instantaneous power density, which provide an important means to build intelligent sensor systems. Meanwhile, machine learning, as a technique with low cost, short development cycle, and strong data processing capabilities and predictive capabilities, is effective in processing the large amount of electrical signals generated by TENG. This article combines the latest research progress of TENG-based sensor systems for signal processing and intelligent recognition by employing machine learning techniques, and outlines the technical features and research status of this research direction from the perspectives of traffic safety, environmental monitor, information security, human-computer interaction and health motion detection. Finally, this article also in-depth discusses the current challenges and future development trends in this field, and analyzes how to improve in the future to open up a broader application space. It is suggested that the integration of machine learning technology and TENG-based sensors will promote the rapid development of intelligent sensor networks in the future.
Publisher
Acta Physica Sinica, Chinese Physical Society and Institute of Physics, Chinese Academy of Sciences
Subject
General Physics and Astronomy
Reference74 articles.
1. Xie Y Z 2020 Internet Things Technol. 10 4
解运洲 2020 物联网技术 10 4
2. Portilla J, Mujica G, Lee J S, Riesgo T 2019 IEEE Sens. J. 19 3179
3. Lin R, Kim H J, Achavananthadith S, Kurt S A, Tan S C, Yao H, Tee B C, Lee J K, Ho J S 2020 Nat. Commun. 11 444
4. Fan F R, Tian Z Q, Wang Z L 2012 Nano Energy 1 328
5. Alagumalai A, Mahian O, Aghbashlo M, Tabatabaei M, Wongwises S, Wang Z L 2021 Nano Energy 83 105844
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
1. Nanogenerators for biomedical applications;Materials Today Communications;2023-06