论文标题
工业传感器网络中的混合云边缘协作数据异常检测
Hybrid Cloud-Edge Collaborative Data Anomaly Detection in Industrial Sensor Networks
论文作者
论文摘要
工业控制系统(ICS)面临着越来越多的网络物理攻击,可能导致物理系统中的灾难。工业传感器网络中有效的异常检测模型对于增强ICS的可靠性和安全性至关重要,因为传感器数据与IC的操作状态有关。考虑到计算资源的可用性有限,本文提出了云边缘协作工业传感器网络中的混合异常检测方法。混合方法由部署在边缘部署的传感器数据检测模型以及部署在云中的传感器数据分析模型。基于高斯和贝叶斯算法的传感器数据检测模型可以实时检测异常传感器数据,并将其上传到云中以进行进一步分析,从而过滤正常的传感器数据并减少流量负载。传感器数据分析模型基于图形卷积网络,残留算法和长期短期存储网络(GCRL)可以有效提取空间和时间特征,然后精确地识别攻击。使用基准数据集和基线异常检测模型评估了提出的杂种异常检测方法。实验结果表明,与现有模型相比,所提出的方法可以实现总体召回率增长11.19%,而F1分数提高了14.29%。
Industrial control systems (ICSs) are facing increasing cyber-physical attacks that can cause catastrophes in the physical system. Efficient anomaly detection models in the industrial sensor networks are essential for enhancing ICS reliability and security, due to the sensor data is related to the operational state of the ICS. Considering the limited availability of computing resources, this paper proposes a hybrid anomaly detection approach in cloud-edge collaboration industrial sensor networks. The hybrid approach consists of sensor data detection models deployed at the edges and a sensor data analysis model deployed in the cloud. The sensor data detection model based on Gaussian and Bayesian algorithms can detect the anomalous sensor data in real-time and upload them to the cloud for further analysis, filtering the normal sensor data and reducing traffic load. The sensor data analysis model based on Graph convolutional network, Residual algorithm and Long short-term memory network (GCRL) can effectively extract the spatial and temporal features and then identify the attack precisely. The proposed hybrid anomaly detection approach is evaluated using a benchmark dataset and baseline anomaly detection models. The experimental results show that the proposed approach can achieve an overall 11.19% increase in Recall and an impressive 14.29% improvement in F1-score, compared with the existing models.