Use of Artificial Neural Networks for prediction of output response of fiber optic microbend sensors

H. S. Efendioglu, T. Yıldırım, K. Fidanboylu
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Abstract

The prediction of a microbend sensor response using Artificial Neural Networks (ANNs) has been investigated in this paper. Experiments were conducted with different microbend sensor configurations. By using the one experiment's input and output experimental data among the conducted experiments, the ability of the ANNs in the prediction of sensor response was analyzed. In the training process of the ANN, multi layer perceptron training algorithm such as, Resillient Backpropagation, Levenberg-Marquardt and Fletcher-Reeves Conjugate Gradient algorithms were used. After training process, network was tested and it was seen that, all the algorithms used can predict the sensor response with small errors. Hence, it was concluded that, ANNs can be used to decrease the fault tolerance of fiber optic microbend sensors, to design intelligent and more robust sensors.
应用人工神经网络预测光纤微弯曲传感器的输出响应
本文研究了利用人工神经网络(ann)预测微弯传感器响应的方法。采用不同微弯传感器配置进行了实验。通过在已进行的实验中使用一个实验的输入和输出实验数据,分析了人工神经网络预测传感器响应的能力。在人工神经网络的训练过程中,采用了弹性反向传播、Levenberg-Marquardt和Fletcher-Reeves共轭梯度算法等多层感知器训练算法。经过训练过程,对网络进行了测试,结果表明,所采用的算法都能准确预测传感器的响应,误差很小。因此,可以利用人工神经网络来降低光纤微弯传感器的容错性,从而设计出更智能、更鲁棒的传感器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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