Highly Elastic, Self-Healing, Recyclable Interlocking Double-Network Liquid-Free Ionic Conductive Elastomers via Facile Fabrication for Wearable Strain Sensors

材料科学 自愈 离子液体 制作 弹性体 导电体 联锁 复合材料 离子键合 可穿戴计算机 智能材料 拉伤 可穿戴技术 纳米技术 机械工程 计算机科学 有机化学 催化作用 替代医学 医学 化学 内科学 嵌入式系统 离子 病理 工程类
作者
Ming Hui Lan,Xiaoxiao Guan,Dong Yu Zhu,Zhi Peng Chen,Tingsu Liu,Zhenhua Tang
出处
期刊:ACS Applied Materials & Interfaces [American Chemical Society]
卷期号:15 (15): 19447-19458 被引量:65
标识
DOI:10.1021/acsami.3c01585
摘要

Liquid-free ionic conductive elastomers (ICEs) are ideal materials for wearable strain sensors in increasingly flexible electronic devices. However, developing recyclable ICEs with high elasticity, self-healability, and recyclability is still a great challenge. In this study, we fabricated a series of novel ICEs by in situ polymerization of lipoic acid (LA) in poly(acrylic acid) (PAA) solution and cross-linking by coordination bonding and hydrogen bonding. One of the obtained dynamically cross-linked interlocking double-network ICEs, PLA-PAA4-1% ICE, showed excellent mechanical properties, with high elasticity (90%) and stretchability (610%), as well as rapid self-healability (mechanical self-healing within 2 h and electrical recovery within 0.3 s). The PLA-PAA4-1% ICE was used as a strain sensor and possessed excellent linear sensitivity and highly cyclic stability, effectively monitoring diverse human motions with both stretched and compressed deformations. Notably, the PLA-PAA4-1% ICE can be fully recycled and reused as a new strain sensor without any structure change or degradation in performance. This work provided a viable path to fabricate conductive materials by solving the two contradictions of high mechanical property and self-healability, and structure stability and recyclability. We believe that the superior overall performance and feasible fabrication make the developed PLA-PAA4-1% ICE hold great promise as a multifunctional strain sensor for practical applications in flexible wearable electronic devices and humanoid robotics.
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