Visible to the public FedMix: A Sybil Attack Detection System Considering Cross-layer Information Fusion and Privacy Protection

TitleFedMix: A Sybil Attack Detection System Considering Cross-layer Information Fusion and Privacy Protection
Publication TypeConference Paper
Year of Publication2022
AuthorsZhao, Jing, Wang, Ruwu
Conference Name2022 19th Annual IEEE International Conference on Sensing, Communication, and Networking (SECON)
KeywordsAnalytical models, ANN, composability, Cross layer design, data integrity, data privacy, federated learning, information fusion, Metrics, privacy, privacy protection, pubcrawl, Resiliency, Sybil attack detection, sybil attacks, Training, vehicular ad hoc networks
AbstractSybil attack is one of the most dangerous internal attacks in Vehicular Ad Hoc Network (VANET). It affects the function of the VANET network by maliciously claiming or stealing multiple identity propagation error messages. In order to prevent VANET from Sybil attacks, many solutions have been proposed. However, the existing solutions are specific to the physical or application layer's single-level data and lack research on cross-layer information fusion detection. Moreover, these schemes involve a large number of sensitive data access and transmission, do not consider users' privacy, and can also bring a severe communication burden, which will make these schemes unable to be actually implemented. In this context, this paper introduces FedMix, the first federated Sybil attack detection system that considers cross-layer information fusion and provides privacy protection. The system can integrate VANET physical layer data and application layer data for joint analyses simultaneously. The data resides locally in the vehicle for local training. Then, the central agency only aggregates the generated model and finally distributes it to the vehicles for attack detection. This process does not involve transmitting and accessing any vehicle's original data. Meanwhile, we also designed a new model aggregation algorithm called SFedAvg to solve the problems of unbalanced vehicle data quality and low aggregation efficiency. Experiments show that FedMix can provide an intelligent model with equivalent performance under the premise of privacy protection and significantly reduce communication overhead, compared with the traditional centralized training attack detection model. In addition, the SFedAvg algorithm and cross-layer information fusion bring better aggregation efficiency and detection performance, respectively.
DOI10.1109/SECON55815.2022.9918586
Citation Keyzhao_fedmix_2022