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Static shape measurements using a multiplexed fiber Bragg grating sensor system

机译:使用多路光纤布拉格光栅传感器系统进行静态形状测量

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The research presented in this paper demonstrates the feasibility of detecting deformations of wing-like structures (cantilever plates) using a distributed, multiplexed fiber Bragg grating (FBG) sensor system. Overall, the work accomplished during the research effort demonstrates the ability of a multiplexed network of FBG sensors to measure strain across a structure and have those strains determine the deformation or shape of the structure. A neural network approach and a structural mechanics approach were examined to determine the deformation of the cantilever plate based on the recorded strain readings from the FBG sensors. This paper presents analytical and experimental results for both approaches. The experimental setup consisted of a cantilever plate with 36 FBG sensors mounted in longitudinal, transverse, and off-axis orientations on the plate's surface. The neural network method performed best when trained with experimentally measured strain and deflection data. The structural mechanics approach demonstrated more accurate comparisons to the ground truth shape, taken with a laser range finder, than the neural network approach. In all experimental cases using the structural mechanics approach, the root-mean-square error between the ground-truth measurements and the FBG sensor based measurements were less than 0.52 inches (approximately 10% of maximum deflection). In approximately 30% of the test cases, the root-mean-square error was less than 0.2 inches.
机译:本文提出的研究证明了使用分布式多路光纤布拉格光栅(FBG)传感器系统检测机翼状结构(悬臂板)变形的可行性。总体而言,在研究过程中完成的工作证明了FBG传感器的多路复用网络能够测量整个结构的应变,并使这些应变确定结构的变形或形状。基于从FBG传感器记录的应变读数,检查了神经网络方法和结构力学方法,以确定悬臂板的变形。本文介绍了两种方法的分析和实验结果。实验装置由一个悬臂板组成,该悬臂板具有36个FBG传感器,分别以纵向,横向和离轴方向安装在该板的表面上。当使用实验测量的应变和挠度数据进行训练时,神经网络方法的效果最佳。与神经网络方法相比,结构力学方法显示了与激光测距仪进行的地面真形状更准确的比较。在所有使用结构力学方法的实验案例中,地面真实测量值与基于FBG传感器的测量值之间的均方根误差均小于0.52英寸(约为最大挠度的10%)。在大约30%的测试用例中,均方根误差小于0.2英寸。

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