A self-sensing photoactuator based on temperature self-compensated MXene/graphite composite ink for objects recognition and biomimetic soft robotics
He Chen, Liangliang Xu, Pengyang Li, Zhong Chen, Jinhua Xiong, Zonglin Liu, Qian Yan, Haowen Zheng, Xu Zhao, Fuhua Xue, Huanxin Lian, Yunxiang Chen, Teng Fei, Ying Hu, Qingyu Peng, Xiaodong He
- Year
- 2025
- Citations
- 2
- Access
- Open access
Abstract
Soft actuators endowed with self-sensing capability become highly sought after in recent years. Ti<sub>3</sub>C<sub>2</sub>T<sub>x</sub> MXene is expected to be used in the development of self-sensing actuators due to its outstanding physical and chemical properties. However, achieving precise deformation feedback of MXene-based actuators remains a challenge, as the resistance change of MXene is not only affected by deformation, but also by temperature, and the decoupling is difficult. Here, a composite ink with temperature self-compensation (0.00125% °C<sup>−1</sup> of temperature coefficient of resistance) is fabricated by combining MXene and graphite with opposite temperature coefficients of resistance. The composite ink can be written on a variety of substrates, including glass, cellulose paper, and various polymers. Based on this, an ink-cellulose/polymer composite actuator with self-sensing function is actualized. The actuator can achieve accurate real-time deformation feedback by monitoring the resistance signal of ink-cellulose layer which shows a high linear sensitivity (gauge factor ~ 14.5, R<sup>2</sup> > 0.99), thereby realizing the perception of touch behavior and distinguishing objects with different weights, softness, and roughness. Besides, a series of biomimetic devices and soft robot with programmable movements (rolling and self-sustained oscillating) are also demonstrated. The results offer new insights for the development of the self-sensing actuators.
Keywords
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