论文标题
通过卷积神经网络提取分布式布里渊转移频率转移
Distributed Brillouin frequency shift extraction via a convolutional neural network
论文作者
论文摘要
分布式的光纤布里鲁因传感器根据当地的布里鲁因频移检测沿纤维的温度和应变,通常使用Lorentzian曲线拟合来计算出测量的Brillouin光谱。此外,已经提出了互相关,主成分分析和机器学习方法,以更有效地提取布里鲁因频率转移。但是,现有方法仅分别处理Brillouin频谱,而忽略了时域中的相关性,表明仍有改进的余地。在这里,我们提出并在实验上展示了一个完整的卷积神经网络,以直接从测得的二维数据中提取分布式的布里鲁因频移。使用各种参数的模拟理想的Brillouin光谱用于训练网络。仿真和实验结果都表明,网络的提取精度优于传统曲线拟合算法的提取精度,并且处理时间较短。该网络具有良好的普遍性和鲁棒性,可以有效地改善现有的Brillouin传感器的性能。
Distributed optical fiber Brillouin sensors detect the temperature and strain along a fiber according to the local Brillouin frequency shift, which is usually calculated by the measured Brillouin spectrum using Lorentzian curve fitting. In addition, cross-correlation, principal component analysis, and machine learning methods have been proposed for the more efficient extraction of Brillouin frequency shifts. However, existing methods only process the Brillouin spectrum individually, ignoring the correlation in the time domain, indicating that there is still room for improvement. Here, we propose and experimentally demonstrate a full convolution neural network to extract the distributed Brillouin frequency shift directly from the measured two-dimensional data. Simulated ideal Brillouin spectrum with various parameters are used to train the network. Both the simulation and experimental results show that the extraction accuracy of the network is better than that of the traditional curve fitting algorithm with a much shorter processing time. This network has good universality and robustness and can effectively improve the performances of existing Brillouin sensors.