TY - JOUR AU - Qu, Zhaoyang AU - Dong, Yunchang AU - Qu, Nan AU - Li, Huashun AU - Cui, Mingshi AU - Bo, Xiaoyong AU - Wu, Yun AU - Mugemanyi, Sylvère PY - 2021 M3 - Technology and Code TI - False Data Injection Attack Detection in Power Systems Based on Cyber-Physical Attack Genes JO - Frontiers in Energy Research UR - https://www.frontiersin.org/articles/10.3389/fenrg.2021.644489 VL - 9 SN - 2296-598X N2 - In the process of the detection of a false data injection attack (FDIA) in power systems, there are problems of complex data features and low detection accuracy. From the perspective of the correlation and redundancy of the essential characteristics of the attack data, a detection method of the FDIA in smart grids based on cyber-physical genes is proposed. Firstly, the principle and characteristics of the FDIA are analyzed, and the concept of the cyber-physical FDIA gene is defined. Considering the non-functional dependency and nonlinear correlation of cyber-physical data in power systems, the optimal attack gene feature set of the maximum mutual information coefficient is selected. Secondly, an unsupervised pre-training encoder is set to extract the cyber-physical attack gene. Combined with the supervised fine-tuning classifier to train and update the network parameters, the FDIA detection model with stacked autoencoder network is constructed. Finally, a self-adaptive cuckoo search algorithm is designed to optimize the model parameters, and a novel attack detection method is proposed. The analysis of case studies shows that the proposed method can effectively improve the detection accuracy and effect of the FDIA on cyber-physical power systems. ER -