A Distributed Network Intrusion Detection System for DDoS Detection in VANET

Ying Gao, Hongrui Wu, Binjie Song, Yaqia Jin, Xiongwen Luo, Xing Zeng
2019 IEEE Access  
Security assurance in Vehicular Ad hoc Network (VANET) is a crucial and challenging task due to the open-access medium. One great threat to VANETs is Distributed Denial-of-Service (DDoS) attack because the target of this attack is to prevent authorized nodes from accessing the services. To provide high availability of VANETs, a scalable, reliable and robust network intrusion detection system should be developed to efficiently mitigate DDoS. However, big data from VANETs poses serious challenges
more » ... to DDoS attack detection since the detection system require scalable methods to capture, store and process the big data. To overcome these challenges, this paper proposes a distributed DDoS network intrusion detection system based on big data technology. The proposed detection system consists of two main components: real-time network traffic collection module and network traffic detection module. To build our proposed system, we use Spark to speed up data processing and use HDFS to store massive suspicious attacks. In the network collection module, micro-batch data processing model is used to improve the real-time performance of traffic feature collection. In the traffic detection module, the classification algorithm based on Random Forest (RF) is adopted. In order to evaluate the accuracy of detection, the algorithm was evaluated and compared in the datasets, containing NSL-KDD and UNSW-NB15. The experimental results show that the proposed detection algorithm reached the accuracy rate of 99.95% and 98.75%, and the false alarm rate (FAR) of 0.05% and 1.08%, respectively, in two datasets. INDEX TERMS Artificial intelligence, distributed denial-of-services, intrusion detection, intelligent transportation systems, spark, vehicular ad hoc networks.
doi:10.1109/access.2019.2948382 fatcat:mwurvjphwzg7zjs6sgrx3jfexe