摘要

The advancement of 5G and the Internet of Things (IoT) has ushered in an era of super-interconnected intelli-gence, which promises high-quality social development. Triboelectric-based sensing systems, combined with big data, artificial intelligence (AI), wireless communications, and cloud computing, among others, have gained considerable attention in self-powered sensing technologies. Machine learning (ML), as a critical component of AI, offers a practical strategy for efficiently processing multi-dimensional and multi-type data collected by triboelectric-based intelligent sensing systems (TISSs). In this review, a comprehensive and systematic summary of the latest advances in ML for TISSs from the perspective of technology implementation is innovatively pre-sented. Then, we elaborate on the characteristics of common ML algorithms for TISSs and how ML broadens the applications of the triboelectric nanogenerator (TENG), which will provide valuable references for subsequent research. Finally, the limitations and prospects of ML for TENG are discussed for large-scale deployments, aiming to achieve higher-level intelligence in the future. These will provide significant insights to enable the advancement of self-powered sensing technology based on triboelectricity.

  • 单位
    同济大学