Structural Learning Techniques for Bayesian Attack Graphs in Cyber Physical Power Systems
Title | Structural Learning Techniques for Bayesian Attack Graphs in Cyber Physical Power Systems |
Publication Type | Conference Paper |
Year of Publication | 2021 |
Authors | Sahu, Abhijeet, Davis, Katherine |
Conference Name | 2021 IEEE Texas Power and Energy Conference (TPEC) |
Keywords | Attack Graphs, Bayes methods, bayesian attack graph, Bayesian Network, Boolean functions, composability, control theory, data structures, Power systems, Predictive Metrics, pubcrawl, Real-time Systems, resilience, Resiliency, Structural Learning, Time complexity, Time factors |
Abstract | Updating the structure of attack graph templates based on real-time alerts from Intrusion Detection Systems (IDS), in an Industrial Control System (ICS) network, is currently done manually by security experts. But, a highly-connected smart power systems, that can inadvertently expose numerous vulnerabilities to intruders for targeting grid resilience, needs automatic fast updates on learning attack graph structures, instead of manual intervention, to enable fast isolation of compromised network to secure the grid. Hence, in this work, we develop a technique to first construct a prior Bayesian Attack Graph (BAG) based on a predefined threat model and a synthetic communication network for a cyber-physical power system. Further, we evaluate a few score-based and constraint-based structural learning algorithms to update the BAG structure based on real-time alerts, based on scalability, data dependency, time complexity and accuracy criteria. |
DOI | 10.1109/TPEC51183.2021.9384933 |
Citation Key | sahu_structural_2021 |