Huang Bingsen, Sheng Xinzhi, Cao Jiaqi, Jia Haoqiang, Gao Wei, Gu Shuai, Wang Xin, Chu Paul K, Lou Shuqin
Opt Lett. 2023 Oct 1;48(19):4929-4932. doi: 10.1364/OL.497509.
An omnidirectional bending sensor comprising cascaded asymmetric dual-core photonic crystal fibers (ADCPCFs) is designed and demonstrated experimentally. Upon cascading and splicing two ADCPCFs at a lateral rotation angle, the transmission spectrum of the sensor becomes highly dependent on the bending direction. Machine learning (ML) is employed to predict the curvature and bending orientation of the bending sensor for the first time, to the best of our knowledge. The experimental results demonstrate that the ADCPCF sensor used in combination with machine learning can predict the curvature and omnidirectional bending orientation within 360° without requiring any post-processing fabrication steps. The prediction accuracy is 99.85% with a mean absolute error (MAE) of 2.7° for bending direction measurement and 98.08% with an MAE of 0.03 m for the curvature measurement. This promising strategy utilizes the global features (full spectra) in combination with machine learning to overcome the dependence of the sensor on high-quality transmission spectra, the wavelength range, and a special wavelength dip in the conventional dip tracking method. This excellent omnidirectional bending sensor has large potential for structural health monitoring, robotic arms, medical instruments, and wearable devices.
设计并实验演示了一种由级联非对称双芯光子晶体光纤(ADCPCF)构成的全向弯曲传感器。当以横向旋转角度级联并拼接两根ADCPCF时,传感器的传输光谱变得高度依赖于弯曲方向。据我们所知,首次采用机器学习(ML)来预测弯曲传感器的曲率和弯曲方向。实验结果表明,与机器学习结合使用的ADCPCF传感器能够在无需任何后处理制造步骤的情况下,预测360°范围内的曲率和全向弯曲方向。弯曲方向测量的预测准确率为99.85%,平均绝对误差(MAE)为2.7°;曲率测量的预测准确率为98.08%,MAE为0.03 m。这种有前景的策略利用全局特征(全光谱)结合机器学习,克服了传感器对高质量传输光谱、波长范围以及传统凹陷跟踪方法中特殊波长凹陷的依赖。这种出色的全向弯曲传感器在结构健康监测、机器人手臂、医疗仪器和可穿戴设备方面具有巨大潜力。