Machine Learning‐Enhanced Triboelectric Sensing Application

Author:

Shang Ruzhi1,Chen Huamin2ORCID,Cai Xu2,Shi Xin2,Yang Yanhui2,Wei Xuan1,Wang Jun2,Xu Yun34

Affiliation:

1. College of Mechanical and Electrical Engineering Fujian Agriculture and Forestry University Fuzhou 350108 China

2. College of Materials and Chemical Engineering Minjiang University Fuzhou 350108 China

3. Institute of Semiconductors Chinese Academy of Sciences Beijing 100083 China

4. Beijing Key Laboratory of Inorganic Stretchable and Flexible Information Technology Beijing 100083 China

Abstract

AbstractTriboelectric nanogenerator (TENG) has become a promising candidate for wearable energy harvesting and self‐powered sensing systems. However, processing large amounts of data imposes a computing power barrier for practical application. Machine learning‐assisted self‐powered sensors based on TENG have been widely used in data‐driven applications due to their excellent characteristics such as no additional power supply, high sensing accuracy, low cost, and good biocompatibility. This work comprehensively reviews the latest progress in machine learning (ML)‐assisted TENG‐based sensors. The future challenges and opportunities are discussed. First, the fundamental principles including the working mode of ML‐assisted TENG‐based sensor and common algorithms are systematically and comprehensively illustrated, which emphasizes the algorithm definition and principle. Subsequently, the progress of ML methods in the field of TENG‐based sensors is further reviewed, summarizing the advantages and disadvantages of various algorithms in practical examples, and providing guidance and suggestions on how to choose the appropriate methods. Finally, the prospects and challenges of ML‐assisted TENG‐based sensors is summarized. Directions and important insights for the future development of TENG and AI integration is provided.

Funder

National Natural Science Foundation of China

Natural Science Foundation of Fujian Province

Publisher

Wiley

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