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Enhancement of the Multiplexing Capacity and Measurement Accuracy of FBG Sensor System Using IWDM Technique and Deep Learning Algorithm

机译:使用IWDM技术和深层学习算法增强FBG传感器系统的复用容量和测量精度

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In this article, we are the first to propose deep learning algorithms for intensity wavelength division multiplexing (IWDM)-based self-healing fiber Bragg grating (FBG) sensor network. A deep learning algorithm is proposed to improve the accuracy of measuring the sensing signal of the sensor system. Furthermore, to increase the total number of FBG sensors multiplexed in the sensor network for multipoint measurements, a multiplexing technique called IWDM is proposed. The proposed IWDM-based ring structure FBG sensor network can also have a self-healing purpose to improve the sensor system's reliability and survivability. However, IWDM has unmeasurable gap or crosstalk problems when the number of FBG sensors increases, which causes high sensing signal measurement errors. To solve this problem, a gated recurrent unit (GRU) deep learning algorithm is proposed and experimentally demonstrated. To prove the sensing signal measurement performance of our proposed algorithm, we test the well-trained GRU model using two cases. The first case is when the spectra of FBGs are overlapped as well as the minimum intensity difference between FBGs is 10%, and the second case is when the spectra of FBGs are overlapped as well as the minimum intensity difference between FBGs is 3% which is a very small intensity difference. From the experimental results, the well-trained GRU algorithm achieves high strain sensing signal measurement performance in both cases compared to other algorithms. Therefore, the proposed IWDM based FBG sensor system using deep learning algorithm enhances the multiplexing capacity and survivability of the sensor system, reduces the computational time, and improves strain sensing signal measurement accuracy of FBGs even when FBGs has very small intensity difference and overlap problem.
机译:在本文中,我们是第一个提出用于强度波分复用(IWDM)的深度学习算法(IWDM)的自修复光纤布拉格光栅(FBG)传感器网络。提出了一种深度学习算法,提高了测量传感器系统的感测信号的准确性。此外,为了增加在传感器网络中复用的FBG传感器的总数,提出了一种称为IWDM的多路复用技术。所提出的基于IWDM的环形结构FBG传感器网络也可以具有自我修复目的来提​​高传感器系统的可靠性和生存能力。然而,当FBG传感器的数量增加时,IWDM具有不可衡量的间隙或串扰问题,这导致了高感测信号测量误差。为了解决这个问题,提出了一种凸起的经常性单元(GRU)深度学习算法和实验证明。为了证明我们所提出的算法的传感信号测量性能,我们使用两种情况测试训练有素的GRU模型。第一种情况是当FBG的光谱重叠时以及FBG之间的最小强度差异为10%,第二种情况是当FBG的光谱重叠时以及FBG之间的最小强度差为3%强度差异非常小。从实验结果来看,训练有素的GRU算法与其他算法相比,这两种情况下的高应变感测信号测量性能。因此,使用深度学习算法的所提出的基于IWDM的FBG传感器系统增强了传感器系统的复用容量和生存能力,降低了计算时间,即使在FBG具有非常小的强度差异和重叠问题时,也可以提高FBG的应变感测信号测量精度。

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