JOURNAL ARTICLE

Ultrasensitive Flexible Strain Sensor Made with Carboxymethyl-Cellulose-Anchored Carbon Nanotubes/MXene for Machine-Learning-Assisted Handwriting Recognition

Junming CaoXueguang YuanYangan ZhangQi WangQi HeShaohua GuoXiaomin Ren

Year: 2024 Journal:   ACS Applied Materials & Interfaces Vol: 16 (38)Pages: 51447-51458   Publisher: American Chemical Society

Abstract

The combination of wearable sensors with machine learning enables intelligent perception in human-machine interaction and healthcare, but achieving high sensitivity and a wide working range in flexible strain sensors for signal acquisition and accurate recognition remains challenging. Herein, we introduced carboxymethyl cellulose (CMC) into a carbon nanotubes (CNTs)/MXene hybrid network, forming tight anchoring among the conductive materials and, thus, bringing enhanced interaction. The silicone-rubber-encapsulated CMC-anchored CNTs/MXene (CCM) strain sensor exhibits an excellent sensitivity (maximum gauge factor up to 71 294), wide working range (200%), ultralow detection limit (0.05%), and outstanding durability (over 10 000 cycles), which is superior to most of the recently reported counterparts also based on a conductive composite film. Moreover, the sensor achieves seamless integration with human skin with the help of a poly(acrylic acid) adhesive layer, successfully obtaining stable and clear waveforms with meaningful profiles from the human body. On this basis, we proposed and realized a novel in-air handwriting recognition method via extracting multiple features of high-quality strain signals assisted by deep neural networks, achieving a high classification accuracy of 98.00 and 94.85% for Arabic numerals and letters, respectively. Our work provides an effective approach for significantly improving strain sensing performance, thereby facilitating innovative applications of flexible sensors.

Keywords:
Materials science Carboxymethyl cellulose Carbon nanotube Handwriting Nanotechnology Strain (injury) Cellulose Composite material Chemical engineering Computer science Artificial intelligence

Metrics

16
Cited By
5.88
FWCI (Field Weighted Citation Impact)
53
Refs
0.93
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Advanced Sensor and Energy Harvesting Materials
Physical Sciences →  Engineering →  Biomedical Engineering
Polydiacetylene-based materials and applications
Physical Sciences →  Chemistry →  Organic Chemistry
Conducting polymers and applications
Physical Sciences →  Materials Science →  Polymers and Plastics

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