计算机科学
假阳性悖论
默认网关
计算机网络
阿罗哈
无线传感器网络
协议(科学)
异常检测
图层(电子)
无线
吞吐量
数据挖掘
人工智能
电信
医学
化学
替代医学
有机化学
病理
作者
Mi Chen,Lynda Mokdad,Jalel Ben‐Othman,Jean-Michel Fourneau
标识
DOI:10.1109/globecom48099.2022.10000852
摘要
LoRaWAN is one of the network technologies that provide a long-range wireless network at low energy consumption. However, the pure Aloha MAC protocol and the duty-cycle limitation at both end devices and gateway make LoRaWAN very sensitive to malicious behaviors in the MAC layer. Moreover, this kind of sensitivity makes the false-positives problem challenging for malicious behavior detection with simple threshold methods. This study investigates two malicious behaviors - greedy and attack on the MAC layer. Furthermore, by combining the threshold method with a Local Outlier Factor (LOF) model in machine learning, LoRaLOFT is proposed. It is a centralized malicious node detection method. Analytical results show that the proposed method gives high detection accuracy while significantly reducing the false-positive rate in both behaviors.
科研通智能强力驱动
Strongly Powered by AbleSci AI