TY - JOUR
T1 - A Unified Cybersecurity Framework for Smart Grids Against Data Integrity Attacks Using Ensemble Learning and Hybrid Encryption
AU - Pallakonda, Archana
AU - Ravishanmugam, K.
AU - Raj, Rayappa David Amar
AU - Sivagnanam, Sharvesh
AU - Yanamala, Rama Muni Reddy
AU - Prakasha, Krishna K.
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2025
Y1 - 2025
N2 - The increasing frequency and sophistication of cyberattacks on smart grid infrastructures have raised critical concerns over data integrity, operational resilience, and real-time response capabilities. This study introduces a unified cybersecurity framework for cyber-physical power systems that integrate high-performance anomaly detection with provably secure cryptographic protection. A comprehensive dataset, built upon the IEEE 24-bus test system, includes a diverse set of operational states and five classes of false data injection attacks (FDIAs), including stealthy and replay-based intrusions. To accurately detect both common and sophisticated threats, we implement a suite of supervised learning models—RF, MLP, and Decision Trees—alongside an ensemble strategy termed MVCC, which achieves up to 99.90% accuracy in binary classification and 99.88% in multiclass settings. For defense at the data level, we deploy a two-tier encryption architecture combining AES-GCM (for confidentiality and authenticity) with RSA-OAEP (for secure key management), demonstrating strong resilience against standard attack models (COA, KPA, CPA, CCA) and achieving nearly uniform ciphertext entropy (7.99 bits/byte). The system’s real-time applicability is validated through the deployment of the RF classifier on a PYNQ-Z2 FPGA platform, attaining sub-second inference latency. Further, unsupervised (DBSCAN, K-Means) and temporal (LSTM) models are incorporated for stealthy anomaly localization and early threat prediction. This work presents a scalable, interpretable, and cryptographically secure solution for protecting next-generation smart grids against evolving data integrity threats.
AB - The increasing frequency and sophistication of cyberattacks on smart grid infrastructures have raised critical concerns over data integrity, operational resilience, and real-time response capabilities. This study introduces a unified cybersecurity framework for cyber-physical power systems that integrate high-performance anomaly detection with provably secure cryptographic protection. A comprehensive dataset, built upon the IEEE 24-bus test system, includes a diverse set of operational states and five classes of false data injection attacks (FDIAs), including stealthy and replay-based intrusions. To accurately detect both common and sophisticated threats, we implement a suite of supervised learning models—RF, MLP, and Decision Trees—alongside an ensemble strategy termed MVCC, which achieves up to 99.90% accuracy in binary classification and 99.88% in multiclass settings. For defense at the data level, we deploy a two-tier encryption architecture combining AES-GCM (for confidentiality and authenticity) with RSA-OAEP (for secure key management), demonstrating strong resilience against standard attack models (COA, KPA, CPA, CCA) and achieving nearly uniform ciphertext entropy (7.99 bits/byte). The system’s real-time applicability is validated through the deployment of the RF classifier on a PYNQ-Z2 FPGA platform, attaining sub-second inference latency. Further, unsupervised (DBSCAN, K-Means) and temporal (LSTM) models are incorporated for stealthy anomaly localization and early threat prediction. This work presents a scalable, interpretable, and cryptographically secure solution for protecting next-generation smart grids against evolving data integrity threats.
UR - https://www.scopus.com/pages/publications/105018090600
UR - https://www.scopus.com/pages/publications/105018090600#tab=citedBy
U2 - 10.1109/ACCESS.2025.3616505
DO - 10.1109/ACCESS.2025.3616505
M3 - Article
AN - SCOPUS:105018090600
SN - 2169-3536
VL - 13
SP - 177595
EP - 177614
JO - IEEE Access
JF - IEEE Access
ER -