Visible to the public Deep Learning Driven Security in Digital Twins of Drone Network

TitleDeep Learning Driven Security in Digital Twins of Drone Network
Publication TypeConference Paper
Year of Publication2022
AuthorsWu, Jingyi, Guo, Jinkang, Lv, Zhihan
Conference NameICC 2022 - IEEE International Conference on Communications
Date Publishedmay
KeywordsAttack, composability, CPS modeling, Data models, Deep Learning, Differential privacy, digital twins, dpfs frequent subgragh, Fitting, Metrics, Prediction algorithms, Predictive models, pubcrawl, resilience, Resiliency, Robustness, security, simulation, unmanned aerial vehicle
AbstractThis study aims to explore the security issues and computational intelligence of drone information system based on deep learning. Targeting at the security issues of the drone system when it is attacked, this study adopts the improved long short-term memory (LSTM) network to analyze the cyber physical system (CPS) data for prediction from the perspective of predicting the control signal data of the system before the attack occurs. At the same time, the differential privacy frequent subgraph (DPFS) is introduced to keep data privacy confidential, and the digital twins technology is used to map the operating environment of the drone in the physical space, and an attack prediction model for drone digital twins CPS is constructed based on differential privacy-improved LSTM. Finally, the tennessee eastman (TE) process is undertaken as a simulation platform to simulate the constructed model so as to verify its performance. In addition, the proposed model is compared with the Bidirectional LSTM (BiLSTM) and Attention-BiLSTM models proposed by other scholars. It was found that the root mean square error (RMSE) of the proposed model is the smallest (0.20) when the number of hidden layer nodes is 26. Comparison with the actual flow value shows that the proposed algorithm is more accurate with better fitting. Therefore, the constructed drone attack prediction model can achieve higher prediction accuracy and obvious better robustness under the premise of ensuring errors, which can provide experimental basis for the later security and intelligent development of drone system.
DOI10.1109/ICC45855.2022.9838734
Citation Keywu_deep_2022