Biblio

Filters: Author is Zhu, Lei  [Clear All Filters]
2023-05-11
Zhu, Lei, Huang, He, Gao, Song, Han, Jun, Cai, Chao.  2022.  False Data Injection Attack Detection Method Based on Residual Distribution of State Estimation. 2022 12th International Conference on CYBER Technology in Automation, Control, and Intelligent Systems (CYBER). :724–728.
While acquiring precise and intelligent state sensing and control capabilities, the cyber physical power system is constantly exposed to the potential cyber-attack threat. False data injection (FDI) attack attempts to disrupt the normal operation of the power system through the coupling of cyber side and physical side. To deal with the situation that stealthy FDI attack can bypass the bad data detection and thus trigger false commands, a system feature extraction method in state estimation is proposed, and the corresponding FDI attack detection method is presented. Based on the principles of state estimation and stealthy FDI attack, we analyze the impacts of FDI attack on measurement residual. Gaussian fitting method is used to extract the characteristic parameters of residual distribution as the system feature, and attack detection is implemented in a sliding time window by comparison. Simulation results prove that the proposed attack detection method is effectiveness and efficiency.
ISSN: 2642-6633
2022-10-06
Zhu, Xiaoyan, Zhang, Yu, Zhu, Lei, Hei, Xinhong, Wang, Yichuan, Hu, Feixiong, Yao, Yanni.  2021.  Chinese named entity recognition method for the field of network security based on RoBERTa. 2021 International Conference on Networking and Network Applications (NaNA). :420–425.
As the mobile Internet is developing rapidly, people who use cell phones to access the Internet dominate, and the mobile Internet has changed the development environment of online public opinion and made online public opinion events spread more widely. In the online environment, any kind of public issues may become a trigger for the generation of public opinion and thus need to be controlled for network supervision. The method in this paper can identify entities from the event texts obtained from mobile Today's Headlines, People's Daily, etc., and informatize security of public opinion in event instances, thus strengthening network supervision and control in mobile, and providing sufficient support for national security event management. In this paper, we present a SW-BiLSTM-CRF model, as well as a model combining the RoBERTa pre-trained model with the classical neural network BiLSTM model. Our experiments show that this approach provided achieves quite good results on Chinese emergency corpus, with accuracy and F1 values of 87.21% and 78.78%, respectively.