基于卷积神经网络融合长短期记忆网络的用于关节运动识别的柔性石墨烯混合针织传感器研究

IF 2.2 4区 工程技术 Q1 MATERIALS SCIENCE, TEXTILES Journal of Industrial Textiles Pub Date : 2024-01-01 DOI:10.1177/15280837231225827
Qin Yi Shao, Yilin Zhang, Jun Liu, Zhan Sun, Shijian Dong
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引用次数: 0

摘要

可穿戴电子设备因其在运动监测和人机交互方面的广阔应用前景而受到广泛关注。本文提出了一种柔性可穿戴关节运动智能传感和识别系统,以实现稳定可靠的运动特征提取和识别。柔性石墨烯混合针织传感器是通过简单的喷雾干燥方法将石墨烯(GNs)剂转移到可拉伸针织品上制备而成。所制备的石墨烯混合传感手套、护肘和护膝可将人体关节的微小动态运动转化为电信号,进行灵敏检测。建立了具有自我注意机制(SAM)的卷积神经网络融合长短期记忆(CNN-LSTM)网络,用于对测量到的关节信息进行特征训练和智能动态识别。相互连接的导电网络赋予了针织传感器良好的柔韧性和高达 37 S/m 的导电率。织物中独特的导电网络提供了出色的线性和可重复的电阻响应变化,从而更好地检测关节运动。通过特征提取、数据相关性捕捉和时序关系建模,对电阻信号进行了分析。最后,测试结果表明,采用 SAM 网络的 CNN-LSTM 对手势信号、肘腕信号和膝关节信号的识别正确率分别达到了 97%、96% 和 100%,明显高于其他识别算法。它在智能穿戴、医疗检测、智能养老等领域具有广阔的应用前景。
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Investigation of flexible graphene hybrid knitted sensor for joint motion recognition based on convolutional neural network fusion long short-term memory network
Wearable electronics have attracted have attracted widespread attentions for their promising applications in motion monitoring and human-computer interaction. This paper proposes a flexible wearable joint movement intelligent sensing and recognition system to achieve stable and reliable motion feature extraction and recognition. Flexible graphene hybrid knitted sensor were prepared by transferring graphenes (GNs) agent onto stretchable knitted products via a simple spray-drying approach. The small dynamic movement of human joints for the prepared GNs hybrid sensing gloves, elbow pads and knee pads were converted into electrical signals for sensitive detection. The convolutional neural network fusion long short-term memory (CNN-LSTM) network with self-attention mechanism (SAM) is established for feature training and intelligent dynamic recognition of the measured joint information. The interconnected conductive networks endowed knitted sensor with good flexibility and remarkable electrical conductivity of 37 S/m. The unique conductive networks in the fabric offered excellent linearity and repeatable resistance response variation for better detection of joint motion. The resistant signal was analyzed by feature extraction, data correlation capture and time sequence relationship modeling. Finally, the test results show that the proposed CNN-LSTM with SAM network achieves 97%, 96% and 100% correct recognition rates for gesture signals, elbow and wrist signals and knee signals respectively, which is obviously higher than other recognition algorithms. It has great application prospects in the fields of smart wear, medical detection, and smart elderly care.
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来源期刊
Journal of Industrial Textiles
Journal of Industrial Textiles MATERIALS SCIENCE, TEXTILES-
CiteScore
5.30
自引率
18.80%
发文量
165
审稿时长
2.3 months
期刊介绍: The Journal of Industrial Textiles is the only peer reviewed journal devoted exclusively to technology, processing, methodology, modelling and applications in technical textiles, nonwovens, coated and laminated fabrics, textile composites and nanofibers.
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