Cao Zhiyuan, Guo Nan, Li Meihong, Yu Kuanglu, Gao Kaiqiang
Opt Express. 2019 Feb 18;27(4):4549-4561. doi: 10.1364/OE.27.004549.
This manuscript proposes a method based on back propagation (BP) neural network and the spectral subtraction method to quickly obtain sensing information in Brillouin fiber optics sensors. BP neural network's characteristics which can realize any complex nonlinear mapping help to determine the frequency shift section(s) information. The training function, transfer function and number of hidden layer nodes of BP neural network are determined with experimental data. The experimental results show that comparing with traditional Lorentz fitting algorithm and edge detection with Sobel operator, the BP neural network is about 1/12 in terms of time complexity with the Lorentz algorithm, about 1/9 with the edge detection based on Sobel operator; while the respective accuracy on determine the frequency shifted section(s) has improved by 79.4% and 27.9%.
本手稿提出了一种基于反向传播(BP)神经网络和谱减法的方法,用于在布里渊光纤传感器中快速获取传感信息。BP神经网络能够实现任何复杂非线性映射的特性有助于确定频移段信息。利用实验数据确定了BP神经网络的训练函数、传递函数和隐藏层节点数。实验结果表明,与传统的洛伦兹拟合算法和基于Sobel算子的边缘检测相比,BP神经网络在时间复杂度方面,与洛伦兹算法相比约为其1/12,与基于Sobel算子的边缘检测相比约为其1/9;而在确定频移段方面的各自精度分别提高了79.4%和27.9%。