TY - JOUR
T1 - Minimizing Off-Axis Bending Effects on Flexible Surface Acoustic Wave Sensing Powered by Integrated Machine Learning Algorithms
AU - Ji, Zhangbin
AU - Zhou, Jian
AU - Guo, Yihao
AU - Xia, Yanhong
AU - Liang, Dongfang
AU - Fu, Yongqing
PY - 2025/3/1
Y1 - 2025/3/1
N2 - Flexible surface acoustic wave (SAW) sensors have gained significant attention due to their favorable attributes such as conformability to curved surfaces, wireless/passive functions, and digital outputs. However, bending, especially complex off-axis bending deformation, often causes severe interference to the targeted detection signals with flexible SAW sensors, limiting their accurate monitoring on the curved/deformed surfaces. To address such a critical issue, we selected AlScN/ultrathin flexible glass-based SAW devices as an example, chose temperature as the targeted sensing parameter, and developed a model based on machine learning algorithms to minimize complex off-axis bending effects in temperature monitoring. Response characteristics of the flexible SAW devices to temperature variations and off-axis deformations were experimentally and theoretically investigated. Correlations between device’s responsive features and target parameter (temperature) were established using eight machine -learning algorithms. The optimized model was established with a normalized root mean square error of less than 1% and the determination coefficient R 2 was larger than 0.997 for temperature predictions subject to complex off-axis strain perturbations. Finally, the flexible SAW sensor showed a highly consistent temperature sensing capability under arbitrary off-axis bending conditions on a curved surface of a jet engine model.
AB - Flexible surface acoustic wave (SAW) sensors have gained significant attention due to their favorable attributes such as conformability to curved surfaces, wireless/passive functions, and digital outputs. However, bending, especially complex off-axis bending deformation, often causes severe interference to the targeted detection signals with flexible SAW sensors, limiting their accurate monitoring on the curved/deformed surfaces. To address such a critical issue, we selected AlScN/ultrathin flexible glass-based SAW devices as an example, chose temperature as the targeted sensing parameter, and developed a model based on machine learning algorithms to minimize complex off-axis bending effects in temperature monitoring. Response characteristics of the flexible SAW devices to temperature variations and off-axis deformations were experimentally and theoretically investigated. Correlations between device’s responsive features and target parameter (temperature) were established using eight machine -learning algorithms. The optimized model was established with a normalized root mean square error of less than 1% and the determination coefficient R 2 was larger than 0.997 for temperature predictions subject to complex off-axis strain perturbations. Finally, the flexible SAW sensor showed a highly consistent temperature sensing capability under arbitrary off-axis bending conditions on a curved surface of a jet engine model.
KW - Antiinterference
KW - flexible SAW detection
KW - machine learning
KW - off-axis bending
KW - temperature
UR - https://www.scopus.com/pages/publications/85218956604
U2 - 10.1109/TIE.2024.3436600
DO - 10.1109/TIE.2024.3436600
M3 - Article
SN - 0278-0046
VL - 72
SP - 3194
EP - 3201
JO - IEEE Transactions on Industrial Electronics
JF - IEEE Transactions on Industrial Electronics
IS - 3
ER -