Ji Zhangbin, Zhou Jian, Guo Yihao, Xia Yanhong, Abkar Ahmed, Liang Dongfang, Fu Yongqing
College of Mechanical and Vehicle Engineering, Hunan University, Changsha, 410082 China.
Department of Engineering, University of Cambridge, Trumpington Street, Cambridge, CB2 1PZ UK.
Microsyst Nanoeng. 2024 Jul 5;10:94. doi: 10.1038/s41378-024-00727-z. eCollection 2024.
Flexible surface acoustic wave technology has garnered significant attention for wearable electronics and sensing applications. However, the mechanical strains induced by random deformation of these flexible SAWs during sensing often significantly alter the specific sensing signals, causing critical issues such as inconsistency of the sensing results on a curved/flexible surface. To address this challenge, we first developed high-performance AlScN piezoelectric film-based flexible SAW sensors, investigated their response characteristics both theoretically and experimentally under various bending strains and UV illumination conditions, and achieved a high UV sensitivity of 1.71 KHz/(mW/cm²). To ensure reliable and consistent UV detection and eliminate the interference of bending strain on SAW sensors, we proposed using key features within the response signals of a single flexible SAW device to establish a regression model based on machine learning algorithms for precise UV detection under dynamic strain disturbances, successfully decoupling the interference of bending strain from target UV detection. The results indicate that under strain interferences from 0 to 1160 με the model based on the extreme gradient boosting algorithm exhibits optimal UV prediction performance. As a demonstration for practical applications, flexible SAW sensors were adhered to four different locations on spacecraft model surfaces, including flat and three curved surfaces with radii of curvature of 14.5, 11.5, and 5.8 cm. These flexible SAW sensors demonstrated high reliability and consistency in terms of UV sensing performance under random bending conditions, with results consistent with those on a flat surface.
柔性表面声波技术在可穿戴电子设备和传感应用中备受关注。然而,这些柔性表面声波在传感过程中因随机变形而产生的机械应变常常会显著改变特定的传感信号,导致诸如在弯曲/柔性表面上传感结果不一致等关键问题。为应对这一挑战,我们首先开发了基于高性能AlScN压电薄膜的柔性表面声波传感器,在各种弯曲应变和紫外线照射条件下从理论和实验两方面研究了它们的响应特性,并实现了1.71 KHz/(mW/cm²)的高紫外线灵敏度。为确保可靠且一致的紫外线检测并消除弯曲应变对表面声波传感器的干扰,我们提议利用单个柔性表面声波器件响应信号中的关键特征,基于机器学习算法建立回归模型,以在动态应变干扰下进行精确的紫外线检测,成功将弯曲应变的干扰与目标紫外线检测解耦。结果表明,在0至1160 με的应变干扰下,基于极端梯度提升算法的模型展现出最优的紫外线预测性能。作为实际应用的演示,柔性表面声波传感器被粘贴在航天器模型表面的四个不同位置,包括平面以及曲率半径分别为14.5、11.5和5.8 cm的三个曲面。这些柔性表面声波传感器在随机弯曲条件下的紫外线传感性能方面表现出高可靠性和一致性,结果与平面上的一致。