机构地区:[1]College of Electonic and Electrical Engineering, Henan Normal University, Xinxiang, Henan 453007, China [2]Henan Engineering Laboratory of Optoelectronic Technology and Advanced Manufacturing, Xinxiang, Henan 453007, China
出 处:《Journal of Beijing Institute of Technology》2017年第2期267-275,共9页北京理工大学学报(英文版)
基 金:Supported by the National Natural Science Foundation of China(61307122);the University Science and Technology Innovation Team Support Project of Henan Province(13IRTTHN016);the Innovative and Training Project of Post Graduate Funding from the Henan Normal University(201310476046)
摘 要:To investigate wavelength response of the no core fiber(NCF)interference spectrum to concentration,a three-layer back propagation(BP)neural network model was established to optimize the concentration sensing data.In this method,the measured wavelength and the corresponding concentration were trained by a BP neural network,so that the accuracy of the measurement system was optimized.The wavelength was used as the training set and got into the input layer of the three layer BP network model which is used as the input value of the network,and the corresponding actual concentration value was used as the output value of the network,and the optimal network structure was trained.This paper discovers a preferable correlation between the predicted value and the actual value,where the former is approximately equal to the latter.The correlation coefficients of the measured and predicted values for a sucrose concentration were 1.000 89 and 1.003 94;similarly,correlations of0.999 51 and 1.018 8 for a glucose concentration were observed.The results demonstrate that the BP neural network can improve the prediction accuracy of the nonlinear relationship between the interference spectral data and the concentration in NCF sensing systems.To investigate wavelength response of the no core fiber(NCF)interference spectrum to concentration,a three-layer back propagation(BP)neural network model was established to optimize the concentration sensing data.In this method,the measured wavelength and the corresponding concentration were trained by a BP neural network,so that the accuracy of the measurement system was optimized.The wavelength was used as the training set and got into the input layer of the three layer BP network model which is used as the input value of the network,and the corresponding actual concentration value was used as the output value of the network,and the optimal network structure was trained.This paper discovers a preferable correlation between the predicted value and the actual value,where the former is approximately equal to the latter.The correlation coefficients of the measured and predicted values for a sucrose concentration were 1.000 89 and 1.003 94;similarly,correlations of0.999 51 and 1.018 8 for a glucose concentration were observed.The results demonstrate that the BP neural network can improve the prediction accuracy of the nonlinear relationship between the interference spectral data and the concentration in NCF sensing systems.
关 键 词:no core fiber dislocation optical fiber BP neural network concentration detection interference spectrum
分 类 号:TN253[电子电信—物理电子学] TP183[自动化与计算机技术—控制理论与控制工程]
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