Li Roujuan, Wei Di, Wang Zhonglin
Beijing Institute of Nanoenergy and Nanosystems, Chinese Academy of Sciences, Beijing 101400, China.
School of Nanoscience and Engineering, University of Chinese Academy of Sciences, Beijing 100049, China.
Nanomaterials (Basel). 2024 Jan 12;14(2):165. doi: 10.3390/nano14020165.
The advancement of the Internet of Things (IoT) has increased the demand for large-scale intelligent sensing systems. The periodic replacement of power sources for ubiquitous sensing systems leads to significant resource waste and environmental pollution. Human staffing costs associated with replacement also increase the economic burden. The triboelectric nanogenerators (TENGs) provide both an energy harvesting scheme and the possibility of self-powered sensing. Based on contact electrification from different materials, TENGs provide a rich material selection to collect complex and diverse data. As the data collected by TENGs become increasingly numerous and complex, different approaches to machine learning (ML) and deep learning (DL) algorithms have been proposed to efficiently process output signals. In this paper, the latest advances in ML algorithms assisting solid-solid TENG and liquid-solid TENG sensors are reviewed based on the sample size and complexity of the data. The pros and cons of various algorithms are analyzed and application scenarios of various TENG sensing systems are presented. The prospects of synergizing hardware (TENG sensors) with software (ML algorithms) in a complex environment and their main challenges for future developments are discussed.
物联网(IoT)的发展增加了对大规模智能传感系统的需求。无处不在的传感系统中电源的定期更换会导致大量资源浪费和环境污染。与更换相关的人力成本也增加了经济负担。摩擦纳米发电机(TENG)既提供了一种能量收集方案,也提供了自供电传感的可能性。基于不同材料之间的接触起电,TENG提供了丰富的材料选择来收集复杂多样的数据。随着TENG收集的数据越来越多且复杂,人们提出了不同的机器学习(ML)和深度学习(DL)算法方法来有效处理输出信号。本文基于数据的样本大小和复杂性,综述了ML算法辅助固-固TENG和液-固TENG传感器的最新进展。分析了各种算法的优缺点,并介绍了各种TENG传感系统的应用场景。讨论了在复杂环境中将硬件(TENG传感器)与软件(ML算法)协同的前景及其未来发展的主要挑战。