4.6 Article

Inter-Domain Fusion for Enhanced Intrusion Detection in Power Systems: An Evidence Theoretic and Meta-Heuristic Approach

Journal

SENSORS
Volume 22, Issue 6, Pages -

Publisher

MDPI
DOI: 10.3390/s22062100

Keywords

Dempster-Shafer theory; intrusion detection system; genetic algorithm

Funding

  1. National Academy of Sciences [2000009323]
  2. US Department of Energy's (DoE) Cybersecurity for Energy Delivery Systems program [DE-OE0000895]

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False alerts caused by misconfigured or compromised intrusion detection systems (IDS) in industrial control system (ICS) networks can lead to significant economic and operational damage. To address this issue, a research proposes an evidence theoretic approach that uses Dempster-Shafer combination rules to reduce false alerts. The approach is demonstrated in a cyber-physical power system testbed, and classifiers are trained using datasets from Man-In-The-Middle attack emulation in a synthetic electric grid. The results show the effectiveness of the proposed method.
False alerts due to misconfigured or compromised intrusion detection systems (IDS) in industrial control system (ICS) networks can lead to severe economic and operational damage. However, research using deep learning to reduce false alerts often requires the physical and cyber sensor data to be trustworthy. Implicit trust is a major problem for artificial intelligence or machine learning (AI/ML) in cyber-physical system (CPS) security, because when these solutions are most urgently needed is also when they are most at risk (e.g., during an attack). To address this, the Inter-Domain Evidence theoretic Approach for Inference (IDEA-I) is proposed that reframes the detection problem as how to make good decisions given uncertainty. Specifically, an evidence theoretic approach leveraging Dempster-Shafer (DS) combination rules and their variants is proposed for reducing false alerts. A multi-hypothesis mass function model is designed that leverages probability scores obtained from supervised-learning classifiers. Using this model, a location-cum-domain-based fusion framework is proposed to evaluate the detector's performance using disjunctive, conjunctive, and cautious conjunctive rules. The approach is demonstrated in a cyber-physical power system testbed, and the classifiers are trained with datasets from Man-In-The-Middle attack emulation in a large-scale synthetic electric grid. For evaluating the performance, we consider plausibility, belief, pignistic, and general Bayesian theorem-based metrics as decision functions. To improve the performance, a multi-objective-based genetic algorithm is proposed for feature selection considering the decision metrics as the fitness function. Finally, we present a software application to evaluate the DS fusion approaches with different parameters and architectures.

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