It is of great significance to perform FBG sensor calibration in shape reconstruction for a board. It impacts on the shape reconstruction accuracy directly. Aiming at the deficiencies of traditional off-line calibration method, an online calibration for FBG networks based on improved particle swarm optimization algorithm was put forward, optimization model was established, and fitness function was given. The optimal goal is to obtain the minimum of fitness function. Improved particle swarm optimization algorithm was used to obtain the optimal solution, ie. strain-curvature coefficients of FBG networks. The simulation experiments verified the effectiveness of the method. Finally, experimental platform was built for experimental verification and analysis of the results of calibration. Experimental results showed that high reconstruction accuracy can be obtained by this calibration method, while the measurement characteristics of the FBG sensors can be reflected more accurately.
[1]
Xiaojin Zhu,et al.
Spatial shape reconstruction using orthogonal fiber Bragg grating sensor array
,
2012
.
[2]
ChunXia Zhao,et al.
Particle swarm optimization with adaptive population size and its application
,
2009,
Appl. Soft Comput..
[3]
Li Ren-qiang.
Research on the smart layer of a curvature fiber-optic sensor
,
2010
.
[4]
Li Li,et al.
Online curvature calibration for flexible structure deformation detection based on the finite element method
,
2013,
2013 6th International Congress on Image and Signal Processing (CISP).
[5]
Qin Yuan-qing.
Path Planning of Mobile Robot Based on Particle Swarm Optimization Algorithm
,
2006
.