基于TCN模型转换的自适应无人机传感器数据异常检测方法

Jingting You, Jun Liang, Datong Liu
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引用次数: 2

摘要

无人机在军事和民用领域都发挥着至关重要的作用,其安全性和可靠性也越来越受到人们的重视。无人机异常检测可以及时有效地发现和消除潜在的故障,降低事故发生的概率。由于操作环境复杂多变的影响,在时间序列异常检测中不可避免地存在数据移位问题。忽略这个问题可能会导致异常检测的准确性显著下降。为此,本文提出了一种基于时间卷积网络(TCN)模型传递的无人机传感器数据异常检测方法。首先,利用源域的大量数据对TCN模型进行预训练。然后,在目标域上对模型参数进行微调。最后,采用阈值检测法判断无人机传感器数据是否存在异常。该工作旨在解决无人机的多模式问题,提高数据驱动的异常检测自适应能力。在实验中,利用飞行传感器数据验证了所提模型的性能。实验结果表明,该方法在不同的领域均实现了高精度、高检出率和低误检率。
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An Adaptable UAV Sensor Data Anomaly Detection Method Based on TCN Model Transferring
Unmanned aerial vehicles play a critical role in both military and civilian applications, and their safety and reliability have also been paid more and more attention. UAV anomaly detection can detect and eliminate potential faults in a timely and effective manner, reducing the probability of accidents. Due to the influence of the complex and changeable operating environment, data shifting problems are inevitable in time series anomaly detection. Ignoring this issue may result in a significant drop in the accuracy of anomaly detection. Therefore, a UAV sensor data anomaly detection method based on Temporal Convolution Network (TCN) model transferring is proposed in this paper. First, the TCN model is pre-trained by using a large amount of data in the source domain. Then, parameters of the model are fine-tuned on the target domain. Finally, the threshold detection method is used to determine whether there is abnormality in the UAV sensor data. This work aims to address the multiple modes of UAV and improve the data-driven adaptivity for anomaly detection. In the experiments, the flight sensor data are used to verify the performance of the proposed model. The results show that the proposed method achieves high precision, high detection rate and low false detection rate in different domains.
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