Smart City Gnosys

Smart city article details

Title Detection Of Data-Driven Blind Cyber-Attacks On Smart Grid: A Deep Learning Approach
ID_Doc 19262
Authors Mukherjee D.
Year 2023
Published Sustainable Cities and Society, 92
DOI http://dx.doi.org/10.1016/j.scs.2023.104475
Abstract An immense challenge to future smart cities is providing resilience against cyber-attacks on critical infrastructures like the smart grid. Data-driven cyber-attack strategies like the false data injection attack (FDIA) can modify the states of the grid, hence posing a critical scenario. With an accurate knowledge of measurement subspace, this work demonstrates an effective blind FDIA formulation strategy. The current trend in the identification of such attacks is generally confined to their presence detection within the measurements, while their intrusion points remain concealed. To alleviate this concern, this study promotes an effective execution of novel robust, nonlinear deep learning models which can not only effectually identify the presence but also the exact locations of intrusions of blind attacks in real-time while working concurrently with the conventional bad data detector, thus furnishing a cost-effective approach. Moreover, such neural network models demonstrate a multilabel classification strategy by capturing the inconsistency with co-occurrence dependency of the attack vectors introduced into the raw measurements. Furthermore, these deep learning structures prove to be model-free, hence attacks can be determined without any statistical knowledge of the grid. The performance of the proposed framework is evaluated utilizing the standard IEEE test bench undertaking diverse noise and attack scenarios. © 2023 Elsevier Ltd
Author Keywords Cyber-attacks; Deep learning; False data injection attack; Multilabel classifier; Smart grid; State estimation


Similar Articles


Id Similarity Authors Title Published
44345 View0.923Mohammadpourfard M.; Ghanaatpishe F.; Weng Y.; Genc I.; Sandikkaya M.T.Real-Time Detection Of Cyber-Attacks In Modern Power Grids With Uncertainty Using Deep LearningSEST 2022 - 5th International Conference on Smart Energy Systems and Technologies (2022)
20294 View0.891Tan Z.; Li Z.Digital Twins For Sustainable Design And Management Of Smart City Buildings And Municipal InfrastructureSustainable Energy Technologies and Assessments, 64 (2024)
19266 View0.891He Z.; Khazaei J.; Moazeni F.; Freihaut J.D.Detection Of False Data Injection Attacks Leading To Line Congestions Using Neural NetworksSustainable Cities and Society, 82 (2022)
17918 View0.873Abughali A.; Alansari M.; Al-Sumaiti A.S.Deep Learning Strategies For Detecting And Mitigating Cyber-Attacks Targeting Water-Energy NexusIEEE Access, 12 (2024)
61289 View0.867Acuña Acurio B.A.; Chérrez Barragán D.E.; López J.C.; Grijalva F.; Rodríguez J.C.; da Silva L.C.P.Visual State Estimation For False Data Injection Detection Of Solar Power Generation †Engineering Proceedings, 47, 1 (2023)
2164 View0.861Ji C.; Niu Y.A Hybrid Evolutionary And Machine Learning Approach For Smart City Planning: Digital Twin ApproachSustainable Energy Technologies and Assessments, 64 (2024)
37163 View0.859Naderi E.; Asrari A.Mitigating Voltage Violations In Smart City Microgrids Under Coordinated False Data Injection Cyberattacks: Simulation And Experimental InsightsSmart Cities, 8, 1 (2025)
39459 View0.857Yan Y.; Kunhui Y.Novel Cyber-Physical Architecture For Optimal Operation Of Renewable-Based Smart City Considering False Data Injection Attacks: Digital Twin Technologies For Smart City Infrastructure ManagementSustainable Energy Technologies and Assessments, 65 (2024)
24568 View0.855Younisse R.; AlKasassbeh M.Evaluating Deep Learning For Detecting Data Integrity Attacks In Energy Smart Grids2025 International Conference on New Trends in Computing Sciences, ICTCS 2025 (2025)
14289 View0.853Naeem H.; Ullah F.; Srivastava G.Classification Of Intrusion Cyber-Attacks In Smart Power Grids Using Deep Ensemble Learning With Metaheuristic-Based OptimizationExpert Systems, 42, 1 (2025)