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通过控制裂纹排列实现的具有高灵敏度和线性度的纳米裂纹应变传感器

Nano-Cracked Strain Sensor with High Sensitivity and Linearity by Controlling the Crack Arrangement.

作者信息

Jung Hyunsuk, Park Chan, Lee Hyunwoo, Hong Seonguk, Kim Hyonguk, Cho Seong J

机构信息

School of Mechanical Engineering, Chungnam National University, 99 Daehak-ro, Yuseong-gu, Daejeon 34134, Korea.

出版信息

Sensors (Basel). 2019 Jun 25;19(12):2834. doi: 10.3390/s19122834.

Abstract

Studies on wearable sensors that monitor various movements by attaching them to a body have received considerable attention. Crack-based strain sensors are more sensitive than other sensors. Owing to their high sensitivity, these sensors have been investigated for measuring minute deformations occurring on the skin, such as pulse. However, existing studies have limited sensitivity at low strain range and nonlinearity that renders any calibration process complex and difficult. In this study, we propose a pre-strain and sensor-extending process to improve the sensitivity and linearity of the sensor. By using these pre-strain and sensor-extending processes, we were able to control the morphology and alignment of cracks and regulate the sensitivity and linearity of the sensor. Even if the sensor was fabricated in the same manner, the sensor that involved the pre-strain and extending processes had a sensitivity 100 times greater than normal sensors. Thus, our crack-based strain sensor had high sensitivity (gauge factor > 5000, gauge factor (GF = (△R/R)/ε), linearity, and low hysteresis at low strain (<1% strain). Given its high sensing performance, the sensor can be used to measure micro-deformation, such as pulse wave and voice.

摘要

通过将可穿戴传感器附着于身体来监测各种运动的研究已受到广泛关注。基于裂纹的应变传感器比其他传感器更为灵敏。由于其高灵敏度,这些传感器已被用于研究测量皮肤表面发生的微小形变,如脉搏。然而,现有研究在低应变范围内灵敏度有限,且存在非线性问题,这使得任何校准过程都复杂且困难。在本研究中,我们提出了一种预应变和传感器扩展工艺,以提高传感器的灵敏度和线性度。通过使用这些预应变和传感器扩展工艺,我们能够控制裂纹的形态和排列,并调节传感器的灵敏度和线性度。即使以相同方式制造传感器,经过预应变和扩展工艺的传感器的灵敏度也比普通传感器高100倍。因此,我们的基于裂纹的应变传感器在低应变(<1%应变)下具有高灵敏度(应变片系数>5000,应变片系数(GF = (△R/R)/ε))、线性度和低滞后性。鉴于其高传感性能,该传感器可用于测量诸如脉搏波和声音等微形变。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/da53/6631595/9dfe560512a6/sensors-19-02834-g001.jpg

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