Fu Yu, Wang Shuangkun, Wang Dong, Tian Ye, Ban Xinxing, Wang Xing, Zhao Zhihua, Wan Zhenshuai, Wei Ronghan
Henan Key Laboratory of Superhard Abrasives and Grinding Equipment, Henan University of Technology, Zhengzhou 450001, P. R. China.
School of Mechanical and Electrical Engineering, Henan University of Technology, Zhengzhou 450001, P. R. China.
ACS Appl Mater Interfaces. 2024 Apr 24;16(16):21118-21132. doi: 10.1021/acsami.4c01929. Epub 2024 Apr 10.
Flexible foam-based sensors have attracted substantial interest due to their high specific surface area, light weight, superior deformability, and ease of manufacture. However, it is still a challenge to integrate multimodal stimuli-responsiveness, high sensitivity, reliable stability, and good biocompatibility into a single foam sensor. To achieve this, a magnetoresistive foam sensor was fabricated by an in situ freezing-polymerization strategy based on the interpenetrating networks of sodium alginate, poly(vinyl alcohol) in conjunction with glycerol, and physical reinforcement of core-shell bidisperse magnetic particles. The assembled sensor exhibited preferable magnetic/strain-sensing capability (GF ≈ 0.41 T for magnetic field, 4.305 for tension, -0.735 for bending, and -1.345 for pressing), quick response time, and reliable durability up to 6000 cycles under external stimuli. Importantly, a machine learning algorithm was developed to identify the encryption information, enabling high recognition accuracies of 99.22% and 99.34%. Moreover, they could be employed as health systems to detect human physiological motion and integrated as smart sensor arrays to perceive external pressure/magnetic field distributions. This work provides a simple and ecofriendly strategy to fabricate biocompatible foam-based multimodal sensors with potential applications in next-generation soft electronics.
基于柔性泡沫的传感器因其高比表面积、轻质、优异的可变形性和易于制造而备受关注。然而,将多模态刺激响应性、高灵敏度、可靠的稳定性和良好的生物相容性集成到单个泡沫传感器中仍然是一项挑战。为了实现这一目标,通过原位冷冻聚合策略,基于海藻酸钠、聚乙烯醇与甘油的互穿网络以及核壳双分散磁性颗粒的物理增强作用,制备了一种磁阻泡沫传感器。组装后的传感器表现出较好的磁/应变传感能力(磁场的GF≈0.41 T,拉伸为4.305,弯曲为-0.735,挤压为-1.345)、快速响应时间以及在外部刺激下高达6000次循环的可靠耐久性。重要的是,开发了一种机器学习算法来识别加密信息,实现了99.22%和99.34%的高识别准确率。此外,它们可用作健康监测系统来检测人体生理运动,并集成成智能传感器阵列来感知外部压力/磁场分布。这项工作提供了一种简单且环保的策略,用于制造具有生物相容性的基于泡沫的多模态传感器,在下一代柔性电子学中具有潜在应用。