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Improved Multi-Grating Filtering Demodulation Method Based on Cascading Neural Networks for Fiber Bragg Grating Sensor

机译:基于级联神经网络的光纤布拉格光栅传感器改进的多光栅过滤解调方法

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摘要

In recent decades, fiber Bragg grating (FBG) sensors have proven useful for structural health monitoring. An accurate and low-cost FBG demodulation method is needed to improve the performance of these sensors in structural-monitoring applications. This paper presents an improved method of matched multi-FBG-filtering demodulation that uses two cascading artificial neural networks (ANNs). The first net is used to select the matched-FBG, and the second net is used to demodulate the sensing signal from the FBG sensor. Several algorithms were tested for training the ANNs. The scaled conjugate gradient backpropagation algorithm proves to be the best algorithm for training the first ANN, and the one-step-secant backpropagation algorithm is most suitable for training the second ANN. Errors in the cascading ANNs can be decreased by adjusting the difference in wavelength between the matched FBGs and varying the algorithms used in the ANNs. When the difference in wavelength is 0.2271 nm, the maximum errors returned with test sets using the optimal algorithms are -10.39 pm and -10.11 mu epsilon for wavelength and strain, respectively. The ANNs prove to be generalizable, given in our results.
机译:近几十年来,纤维布拉格光栅(FBG)传感器已被证明可用于结构性健康监测。需要准确和低成本的FBG解调方法来提高结构监测应用中这些传感器的性能。本文介绍了匹配多功能滤波解调的改进方法,其使用两个级联人工神经网络(ANNS)。第一网络用于选择匹配的FBG,第二个网用于从FBG传感器解调传感信号。测试了几种算法以训练ANN。缩放的共轭梯度逆产算法被证明是训练第一ANN的最佳算法,并且单步线反向验证算法最适合训练第二个ANN。通过调整匹配的FBG之间的波长差并改变ANNS中使用的算法,可以降低级联ANN中的错误。当波长的差异为0.2271nm时,使用最佳算法与测试组返回的最大误差分别为-10.39pm和波长和菌株的-10.11μmepsilon。在我们的结果中给出了ANNS是概括的。

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