基于特征增强LSTM自编码器的无监督Φ-OTDR异常检测研究

    Unsupervised Φ-OTDR anomaly detection based on feature-enhanced LSTM autoencoder

    • 摘要: 针对相位敏感光时域反射仪在复杂环境监测中面临大量数据标记成本高的挑战,提出一种基于双滑动窗口预处理特征增强与长短期记忆自编码器相结合的无监督异常事件检测方法。通过采用双滑动窗口预处理方法从相位信号中有效提取特征增强时间序列,并由长短期记忆自编码器进行编码与重构,根据原始信号与输出信号的重构误差动态调整阈值,以实现无监督异常检测。采集架空光缆振动数据用于训练模型,以进行异常扰动检测实验,结果表明,在无需标记数据集的情况下,该方法的检测准确率高达94.85%,较传统自编码器方法的准确率提高了11.82%。本研究对于Φ-OTDR在电力光缆监测、周界安防等领域的工程应用提供了有效的无监督异常检测解决方案。

       

      Abstract: To address the challenge of labeling large datasets and scarcity of anomalous samples for phase-sensitive optical time-domain reflectometers (Φ-OTDR) in complex environmental monitoring, an unsupervised anomaly detection method based on dual sliding window preprocessing feature enhancement with long short-term memory (LSTM) auto-encoder (AE) was proposed. A preprocessing method containing dual sliding window operations was employed to effectively extract the feature-enhanced temporal sequences from phase signals, which were encoded and reconstructed by LSTM-AE, and the threshold was dynamically adjusted according to the reconstruction error (RE) of the original and output signals to achieve unsupervised anomaly detection. In the experiment, the vibration data of the suspended optical cable was collected for training the model to conduct the anomalous disturbance detection experiment. The results show that the proposed method without labeling the dataset achieves the detection accuracy of 94.85%, which is an improvement of 11.82% over the accuracy of the traditional AE. This research provides an effective unsupervised anomaly detection solution for the engineering applications of Φ-OTDR in the fields of power fiber optic cable monitoring and perimeter security.

       

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