Liang Xu, Songyi Zhong, Tao Yue, Zixuan Zhang, Xiao Lu, Yangqiao Lin, Long Li, Yingzhong Tian, Tao Jin, Quan Zhang, Chengkuo Lee
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引用次数: 0
摘要
久坐不动、睡眠不足和运动不足都会影响人体健康。人工智能(AI)和物联网(IoT)创造了人工智能物联网(AIoT),为解决这些问题提供了可能。本文介绍了一种利用三电纳米发电机(TENG)传感器监测各种人体行为的新方法,以实现基于 AIoT 的健康管理。鞋垫只配备了一个 TENG 传感器,创造了一个最简化的系统,利用机器学习(ML)进行个性化运动监测,包括身份识别和步态分类。配备 12 个 TENG 传感器的坐垫可实现实时身份和坐姿识别,准确率分别达到 98.86% 和 98.40%,有效纠正久坐行为。同样,配备 15 个传感通道的智能枕头可检测睡眠时的头部运动,识别出 8 种睡眠模式,准确率达 96.25%。最终,构建一个基于人工智能物联网的健康管理系统来分析这些数据,通过人机界面显示健康状况,有望帮助个人保持身体健康。
AIoT-enhanced health management system using soft and stretchable triboelectric sensors for human behavior monitoring
Sedentary, inadequate sleep and exercise can affect human health. Artificial intelligence (AI) and Internet of Things (IoT) create the Artificial Intelligence of Things (AIoT), providing the possibility to solve these problems. This paper presents a novel approach to monitor various human behaviors for AIoT-based health management using triboelectric nanogenerator (TENG) sensors. The insole with solely one TENG sensor, creating a most simplified system that utilizes machine learning (ML) for personalized motion monitoring, encompassing identity recognition and gait classification. A cushion with 12 TENG sensors achieves real-time identity and sitting posture recognition with accuracy rates of 98.86% and 98.40%, respectively, effectively correcting sedentary behavior. Similarly, a smart pillow, equipped with 15 sensory channels, detects head movements during sleep, identifying 8 sleep patterns with 96.25% accuracy. Ultimately, constructing an AIoT-based health management system to analyze these data, displaying health status through human-machine interfaces, offers the potential to help individuals maintain good health.