Electronics | |
LC-IDS: Loci-Constellation-Based Intrusion Detection for Reconfigurable Wireless Networks | |
Jaime Zuniga-Mejia1  Cesar Vargas-Rosales1  Rafaela Villalpando-Hernandez1  Mahdi Zareei1  | |
[1] Tecnologico de Monterrey, Escuela de Ingenieria y Ciencias, Monterrey 64849, Mexico; | |
关键词: distributed network intrusion detection; scalable intrusion detection; anomaly detection; misuse detection; reconfigurable networks; dimensionality reduction; | |
DOI : 10.3390/electronics10243053 | |
来源: DOAJ |
【 摘 要 】
Detection accuracy of current machine-learning approaches to intrusion detection depends heavily on feature engineering and dimensionality-reduction techniques (e.g., variational autoencoder) applied to large datasets. For many use cases, a tradeoff between detection performance and resource requirements must be considered. In this paper, we propose Loci-Constellation-based Intrusion Detection System (LC-IDS), a general framework for network intrusion detection (detection of already known and previously unknown routing attacks) for reconfigurable wireless networks (e.g., vehicular ad hoc networks, unmanned aerial vehicle networks). We introduce the concept of ‘attack-constellation’, which allows us to represent all the relevant information for intrusion detection (misuse detection and anomaly detection) on a latent 2-dimensional space that arises naturally by considering the temporal structure of the input data. The attack/anomaly-detection performance of LC-IDS is analyzed through simulations in a wide range of network conditions. We show that for all the analyzed network scenarios, we can detect known attacks, with a good detection accuracy, and anomalies with low false positive rates. We show the flexibility and scalability of LC-IDS that allow us to consider a dynamic number of neighboring nodes and routing attacks in the ‘attack-constellation’ in a distributed fashion and with low computational requirements.
【 授权许可】
Unknown