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Detection and identification of external intrusion signals from 33 km optical fiber sensing system based on deep learning

机译:基于深度学习的33 km光纤传感系统外部入侵信号检测与识别

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摘要

In real-world environments, it is usually hard to achieve accurate identification and classification of external vibration signals collected by optical fiber. In this paper, we have applied deep neural networks to a 33 km optical fiber sensing system to recognize and classify the signals of the external intrusion (third-party intrusion) events. It enables the fast identification and localization of the destructive events in complex environments with large amount of monitoring data. Pipeline intrusion events intelligent identification system in this paper is mainly divided into two parts: a distributed acoustic sensing (DAS) System and a pattern recognition system (PRS). DAS was utilized to monitor external intrusion signals in the real-world environment. A Deep learning model, which is called Convolutional, Long Short-Term Memory, Fully Connected Deep Neural Networks (CLDNN), is first applied in PRS to directly input the time series of data into the network for deep learning without any preprocessing, which is simpler and better than the ways used in the previous work. After training and testing with real data, the average recognition rate of the constructed model for intrusion events can reach over 97%. Finally, 33 km blind tests were carried out to verify that the model has good recognition, classification and localization applications for external intrusion signals in the real-world environment.
机译:在实际环境中,通常很难对光纤收集的外部振动信号进行准确的识别和分类。在本文中,我们将深度神经网络应用于33 km的光纤传感系统,以识别和分类外部入侵(第三方入侵)事件的信号。它可以在具有大量监视数据的复杂环境中快速识别和定位破坏性事件。本文中的管道入侵事件智能识别系统主要分为两部分:分布式声传感(DAS)系统和模式识别系统(PRS)。 DAS被用来监视现实环境中的外部入侵信号。深度学习模型(称为卷积,长期短期记忆,全连接深度神经网络(CLDNN))首先在PRS中应用,无需经过任何预​​处理即可将数据的时间序列直接输入到网络中进行深度学习。比以前的工作中使用的方法更简单,更好。经过对真实数据的训练和测试,构造的入侵事件模型的平均识别率可以达到97%以上。最后,进行了3​​3 km的盲测,以验证该模型对于真实环境中的外部入侵信号具有良好的识别,分类和定位应用。

著录项

  • 来源
    《Optical fiber technology》 |2019年第12期|102060.1-102060.9|共9页
  • 作者

  • 作者单位

    Beijing Inst Technol Optoelect Dept 5 Zhongguancun South St Beijing 100081 Peoples R China;

    Portland State Univ Dept Comp Sci Portland OR 97201 USA;

    China Petr & Gas Pipeline Bur Natl Engn Lab Pipeline Transportat Secur Langfang 065000 Hebei Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Signal recognition; Distributed fiber optic sensing; Deep learning; Neural network;

    机译:信号识别分布式光纤传感深度学习;神经网络;

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