基于多头关注的双lstm的WSN多元时间序列异常检测

Mustafa Matar, Tian Xia, Kimberly Huguenard, D. Huston, S. Wshah
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引用次数: 1

摘要

异常检测是无线传感器网络(WSNs)数据流分析领域中广泛应用的一种技术,旨在早期识别异常事件或异常。然而,无线传感器网络应用的局限性对实现有效和高效的异常检测提出了重大挑战。在这项工作中,我们提出了一种新的基于多头注意力的Bi-LSTM方法用于多变量时间序列的异常检测。该方法不是单独对单个传感器的时间序列进行建模,而是同时对多个传感器的时间序列进行建模,考虑了它们之间潜在的相互作用,从而提高了异常检测的准确性。所提出的方法不需要标记数据,可以直接应用于现实世界的场景,在这些场景中,标记来自异构传感器的大量数据流既困难又耗时。最后,使用现实世界WSN的经验评估证明了所提出方法的有效性和鲁棒性,优于传统的深度学习方法。
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Multi-Head Attention based Bi-LSTM for Anomaly Detection in Multivariate Time-Series of WSN
Anomaly detection is a widely utilized technique in the field of wireless sensor networks (WSNs) data stream analysis, aimed at identifying unusual events or anomalies in an early stage. However, the constraints of WSN applications pose a significant challenge in achieving effective and efficient anomaly detection. In this work, we proposes a new multi-head attention-based Bi-LSTM approach for anomaly detection in multivariate time-series. Rather than modeling the time series of individual sensor independently, the proposed approach models the time series of multiple sensors concurrently, taking into account potential latent interactions among them, thereby enhancing the accuracy of anomaly detection. The proposed approach does not require labeled data and can be directly applied in real-world scenarios where labeling a large stream of data from heterogeneous sensors is both difficult and time-consuming. Finally, empirical evaluations using a real-world WSN demonstrate effectiveness and robustness of the proposed approach, outperforming traditional deep learning approaches.
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