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基于混合输入神经网络的Φ-OTDR系统模式识别方法 被引量:5

Mode Recognition Method ofΦ⁃OTDR System Based on Mixed Input Neural Network
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摘要 相位敏感光时域反射仪(Φ-OTDR)已被广泛应用于周界安防以及轨道交通和管道监测等动态传感领域,进一步提升振动信号识别准确率对异常事件及时报警具有重要意义。针对长距离相干探测相位解调Φ-OTDR易受干涉衰落影响而导致误报率较高的问题,笔者提出了基于强度和相位信号混合输入的模式识别方法。所提方法使用多层感知模块提取强度信号中的衰落噪声特征,采用常规一维卷积神经网络作为对照模型。实验结果表明:使用强度和相位作为混合输入的模型对人工敲击、机械挖掘、人为行走和跳跃等4种事件的平均识别准确率可以达到98.8%,优于仅使用相位信号作为输入的一维卷积神经网络模型的平均识别准确率96.1%。采用强度信号辅助相位信号检测的模式识别方法可进一步提高Φ-OTDR的模式识别准确率。 Objective Phase-sensitive optical time-domain reflection(Φ-OTDR)has the advantages of high accuracy,fast response speed,long monitoring distance,and anti-electromagnetic interference and has been widely used in dynamic sensing fields such as perimeter security and railway and pipeline monitoring.For direct detection intensity-demodulationΦ-OTDR,the pulse power is limited by the nonlinear effect,which causes a weak signal-to-noise ratio of the end signal,and its sensing distance is usually less than 25 km.Because the optical phase signal is linearly related to the vibration signal imposed on the fiber and coherent detection can significantly improve the detection sensitivity,the long-distanceΦ-OTDR system mainly uses coherent detection and phase demodulation technology.Most coherent detection phase-demodulationΦ-OTDR system model recognition algorithms use phase signal as the input,combined with time-frequency feature extraction methods,such as Fourier transform and wavelet transform.However,interference fading occurs in the coherent detection system,which causes serious deterioration of the intensity signal,resulting in phase demodulation errors and false alarms.Common methods to eliminate interference fading are the frequency diversity,chirped pulses,and other frequency domain regulation technologies,which lead to complex system hardware.Moreover,owing to the variety of the disturbance signals and long sensing distance that results in a low signal-to-noise ratio of the end signal,Φ-OTDR systems suffer from false alarms in practical applications.It is of great significance to further improve the accuracy of the vibration signal identification for the timely detection of abnormal events.Methods A pattern recognition method based on a coherent detectionΦ-OTDR system with mixed intensity and phase signal inputs is proposed,which can effectively reduce the impact of interference fading on the accuracy of event alarms without increasing the hardware complexity.The proposed method uses a hybrid deep neural network(HDNN),which combines a one-dimensional convolutional neural network(1DCNN)and a multi-layer perceptron(MLP),as shown in Fig.4.The phase and intensity signal vectors are recovered simultaneously using the Hilbert demodulation algorithm.The phase and intensity vectors within a second are simply normalized by the max-min and tanh functions separately and then fed into the model.The model uses MLP to extract the fading noise features of the intensity signal and uses the 1DCNN model as the basic model to extract the disturbance characteristics of the phase signal.After the fusion of two-dimensional features and a classification layer,the model outputs the final detection results.Results and Discussions A long-distanceΦ-OTDR system of more than 25 km was built.An adjustable optical attenuator(VOA)was used to simulate disturbance events occurring at different locations along the fiber,with attenuation of the VOA ranging from 1 dB to 7 dB.Four types of events,such as human beatings,walking,jumping,and machine excavating,are imposed at the outdoor optical cable buried 0.5 m underground.A 1DCNN network with only phase signal input was used as the comparison model.After multiple rounds of training,the experimental results show that the proposed HDNN model with intensity and phase signal inputs can achieve an average accuracy of 98.8%,which is better than the 1DCNN model result of 96.1%with only the phase signal input.Furthermore,comparing the confusion matrix of the two models,the 1DCNN model had the worst recognition accuracy of 91.0%with background noise and human beat events.In contrast,the HDNN model significantly improves the recognition accuracy of the two events to 99.4%.This shows that the interference fading anomalies contained in the background noise can be identified by the HDNN model with additional intensity input.For the other three types of events,the accuracy results of the two models are very close,indicating that the phase signal has a better ability to recover the vibration events than the intensity signal,which is consistent with the previous analysis.Conclusions Aiming to further improve the event alarm accuracy of the long-distance coherent detectionΦ-OTDR system,a pattern recognition method with a mixed input of intensity and phase signals was proposed.To verify the improvement of the proposed method,a 1DCNN network with only the phase signal input was used as the comparison model.A hybrid deep neural network,combining 1DCNN and MLP,was used for the intensity and phase signal mixed-input classification.The model used MLP to extract the fading noise features of the intensity signal and used 1DCNN to extract the disturbance features of the phase signal.The phase and intensity vectors within a second are simply normalized by the max-min and tanh functions separately and then fed into the model.The experimental results show that the proposed HDNN model can achieve an average accuracy of 98.8%for four types of events,including human beatings,walking,jumping,and machine excavation,which is better than the 1DCNN model detection result of 96.1%with only a phase signal input.The method using intensity signal-assisted phase signal detection can further improve the accuracy ofΦ-OTDR pattern recognition.
作者 李笑 高毅 吴昊 王道宇 Li Xiao;Gao Yi;Wu Hao;Wang Daoyu(Department of Information and Electronics,Wuhan Digital Engineering Institute,Wuhan 430202,Hubei,China;National Engineering Laboratory for Next Generation Internet Access System,Huazhong University of Science and Technology,Wuhan 430074,Hubei,China)
出处 《中国激光》 EI CAS CSCD 北大核心 2023年第11期265-271,共7页 Chinese Journal of Lasers
关键词 光纤光学 光纤传感 相位敏感光时域反射仪 混合神经网络 模式识别 深度学习 fiber optics optical fiber sensing phase-sensitive optical time-domain reflectometer hybrid neural network mode recognition deep learning
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