Manie Yibeltal Chanie, Li Jyun-Wei, Peng Peng-Chun, Shiu Run-Kai, Chen Ya-Yu, Hsu Yuan-Ta
Department of Electro-Optical Engineering, National Taipei University of Technology, Taipei 10608, Taiwan.
Sensors (Basel). 2020 Feb 16;20(4):1070. doi: 10.3390/s20041070.
In this paper, for an intensity wavelength division multiplexing (IWDM)-based multipoint fiber Bragg grating (FBG) sensor network, an effective strain sensing signal measurement method, called a long short-term memory (LSTM) machine learning algorithm, integrated with data de-noising techniques is proposed. These are considered extremely accurate for the prediction of very complex problems. Four ports of an optical coupler with distinct output power ratios of 70%, 60%, 40%, and 30% have been used in the proposed distributed IWDM-based FBG sensor network to connect a number of FBG sensors for strain sensing. In an IWDM-based FBG sensor network, distinct power ratios of coupler ports can contain distinct powers or intensities. However, unstable output power in the sensor system due to random noise, harsh environments, aging of the equipment, or other environmental factors can introduce fluctuations and noise to the spectra of the FBGs, which makes it hard to distinguish the sensing signals of FBGs from the noise signals. As a result, noise reduction and signal processing methods play a significant role in enhancing the capability of strain sensing. Thus, to reduce the noise, to improve the signal-to-noise ratio, and to accurately measure the sensing signal of FBGs, we proposed a long short-term memory (LSTM) deep learning algorithm integrated with discrete waveform transform (DWT) data smoother (de-noising) techniques. The DWT data de-noising methods are important techniques for analyzing and de-noising the sensor signals, and it further improves the strain sensing signal measurement accuracy of the LSTM model. Thus, after de-noising the sensor data, these data are fed into the LSTM model to measure the sensing signal of each FBG. The experimental results prove that the integration of LSTM with the DWT data de-noising technique achieved better sensing signal measurement accuracy, even in noisy data or environments. Therefore, the proposed IWDM-based FBG sensor network can accurately sense the signal of strain, even in bad or noisy environments; can increase the number of FBG sensors multiplexed in the sensor system; and can enhance the capacity of the sensor system.
在本文中,针对基于强度波分复用(IWDM)的多点光纤布拉格光栅(FBG)传感器网络,提出了一种有效的应变传感信号测量方法,即结合数据去噪技术的长短期记忆(LSTM)机器学习算法。这些方法对于预测非常复杂的问题被认为极其准确。在所提出的基于分布式IWDM的FBG传感器网络中,使用了具有70%、60%、40%和30%不同输出功率比的光耦合器的四个端口来连接多个用于应变传感的FBG传感器。在基于IWDM的FBG传感器网络中,耦合器端口的不同功率比可以包含不同的功率或强度。然而,由于随机噪声、恶劣环境、设备老化或其他环境因素导致的传感器系统中不稳定的输出功率,会给FBG的光谱引入波动和噪声,这使得难以将FBG的传感信号与噪声信号区分开来。因此,降噪和信号处理方法在增强应变传感能力方面起着重要作用。因此,为了降低噪声、提高信噪比并准确测量FBG的传感信号,我们提出了一种结合离散波形变换(DWT)数据平滑器(去噪)技术的长短期记忆(LSTM)深度学习算法。DWT数据去噪方法是分析和去噪传感器信号的重要技术,它进一步提高了LSTM模型的应变传感信号测量精度。因此,在对传感器数据进行去噪后,将这些数据输入到LSTM模型中以测量每个FBG的传感信号。实验结果证明,LSTM与DWT数据去噪技术的结合即使在有噪声的数据或环境中也能实现更好的传感信号测量精度。因此,所提出的基于IWDM的FBG传感器网络即使在恶劣或有噪声的环境中也能准确地感测应变信号;可以增加传感器系统中复用的FBG传感器数量;并且可以增强传感器系统的容量。