基于摩擦电纳米发电机的自供电可穿戴婴儿跌倒检测传感器

IF 2.8 4区 材料科学 Q3 MATERIALS SCIENCE, MULTIDISCIPLINARY
Luoke Hu, Hui Meng, Zhonggui Xu, Yong Wang
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引用次数: 0

摘要

婴儿跌倒检测对于及时识别跌倒事件、评估严重程度和减少潜在伤害至关重要。传统的跌倒检测技术通常依赖于摄像头、力传感器、加速度计和陀螺仪等设备。虽然这些设备提供精确的测量,但它们通常价格昂贵,需要复杂的安装,并且依赖外部电源,导致更高的系统复杂性和维护成本。本文报道了一种基于摩擦电纳米发电机(TENG)的自供电可穿戴式婴儿跌倒检测传感器,该传感器具有桥式结构的PDMS层和铜箔电极。通过将TENG传感器连接到婴儿模型或人体的皮肤或关节上,我们成功地检测到跌倒状态、频率、冲击强度和冲击定位。该传感器在人体皮肤上的最小可检测加速度为0.4 g,灵敏度为2.6 V/g。当与人工智能算法相结合时,该系统在预测坠落位置方面的准确率超过94%。此外,传感器在数万次循环后保持稳定的输出,表现出卓越的稳定性和可重复性。与传统的跌倒检测技术相比,该系统具有成本低、制造简单、安装方便、自供电、便携性高等优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A self-powered wearable sensor for infant fall detection based on triboelectric nanogenerator

Infant fall detection is critical for the timely identification of fall events, assessment of the severity, and reduction of potential injuries. Traditional fall detection technologies typically rely on devices such as cameras, force sensors, accelerometers, and gyroscopes. While these devices provide accurate measurements, they are often expensive, require complex installation, and depend on external power sources, leading to higher system complexity and maintenance costs. This paper reports a self-powered, wearable sensor based on triboelectric nanogenerator (TENG) for infant fall detection, featuring a bridge-structured PDMS layer and a copper foil electrode. By attaching the TENG sensor to the skin or joints of an infant model or human body, we successfully detected fall status, frequency, impact intensity, and impact localization. The sensor achieves a minimum detectable acceleration of 0.4 g on human skin, with a sensitivity of 2.6 V/g. When integrated with artificial intelligence algorithms, the system achieves over 94% accuracy in predicting fall locations. Furthermore, the sensor maintains a stable output after tens of thousands of cycles, demonstrating exceptional stability and repeatability. Compared to traditional fall detection technologies, the proposed system offers several advantages, including low cost, simple manufacturing, easy installation, self-powered operation, and high portability.

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来源期刊
Applied Physics A
Applied Physics A 工程技术-材料科学:综合
CiteScore
4.80
自引率
7.40%
发文量
964
审稿时长
38 days
期刊介绍: Applied Physics A publishes experimental and theoretical investigations in applied physics as regular articles, rapid communications, and invited papers. The distinguished 30-member Board of Editors reflects the interdisciplinary approach of the journal and ensures the highest quality of peer review.
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