论文标题

通过动态图神经网络进行多模式WSN数据流的新型异常检测方法

A Novel Anomaly Detection Method for Multimodal WSN Data Flow via a Dynamic Graph Neural Network

论文作者

Zhang, Qinghao, Ye, Miao, Qiu, Hongbing, Wang, Yong, Deng, Xiaofang

论文摘要

异常检测通过分析无线传感器网络(WSN)数据流的时间和空间特征来区分系统异常。这是确保WSN可靠性的关键技术之一。当前,图形神经网络(GNN)已成为对WSN数据流进行异常检测的流行最新方法。但是,基于GNN的现有异常检测方法并未同时考虑WSN数据流的时间和空间特征,例如多节点,多模式和多时间特征,从而严重影响其有效性。在本文中,为多模式WSN数据流提供了一种新型的异常检测模型,其中三个GNN用于分别提取WSN数据流的时间特征,不同模式之间的相关特征和传感器节点位置之间的空间特征之间的相关特征。具体而言,首先,将每个传感器节点提取的时间特征和模态相关特征融合到一个矢量表示中,该矢量表示与空间特征(即节点的空间位置关系)进一步汇总;最后,预测WSN节点的当前时间序列数据,并根据融合特征确定异常状态。在公共数据集上获得的仿真结果表明,所提出的方法能够从其鲁棒性方面显着改善现有方法,其F1分数达到0.90,比图形卷积网络(GCN)高14.2%,具有长期短期内存(LSTM)。

Anomaly detection is widely used to distinguish system anomalies by analyzing the temporal and spatial features of wireless sensor network (WSN) data streams; it is one of critical technique that ensures the reliability of WSNs. Currently, graph neural networks (GNNs) have become popular state-of-the-art methods for conducting anomaly detection on WSN data streams. However, the existing anomaly detection methods based on GNNs do not consider the temporal and spatial features of WSN data streams simultaneously, such as multi-node, multi-modal and multi-time features, seriously impacting their effectiveness. In this paper, a novel anomaly detection model is proposed for multimodal WSN data flows, where three GNNs are used to separately extract the temporal features of WSN data flows, the correlation features between different modes and the spatial features between sensor node positions. Specifically, first, the temporal features and modal correlation features extracted from each sensor node are fused into one vector representation, which is further aggregated with the spatial features, i.e., the spatial position relationships of the nodes; finally, the current time-series data of WSN nodes are predicted, and abnormal states are identified according to the fusion features. The simulation results obtained on a public dataset show that the proposed approach is able to significantly improve upon the existing methods in terms of its robustness, and its F1 score reaches 0.90, which is 14.2% higher than that of the graph convolution network (GCN) with long short-term memory (LSTM).

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