Optimal Thresholds for Anomaly-Based Intrusion Detection in Dynamical Environments
Amin Ghafouri, Waseem Abbas, Aron Laszka, Yevgeniy Vorobeychik, and, Xenofon Koutsoukos

TL;DR
This paper develops methods to determine optimal static and dynamic detection thresholds for anomaly-based intrusion detection systems in cyber-physical systems, balancing early attack detection with false alarm reduction.
Contribution
It introduces algorithms for computing fixed and adaptive thresholds in dynamical environments, formulated as an attacker-defender security game.
Findings
Optimal fixed thresholds can be computed for static detection settings.
Adaptive thresholds improve detection performance in time-varying damage scenarios.
Numerical evaluation demonstrates effectiveness on a water distribution network case study.
Abstract
In cyber-physical systems, malicious and resourceful attackers could penetrate the system through cyber means and cause significant physical damage. Consequently, detection of such attacks becomes integral towards making these systems resilient to attacks. To achieve this objective, intrusion detection systems (IDS) that are able to detect malicious behavior can be deployed. However, practical IDS are imperfect and sometimes they may produce false alarms for a normal system behavior. Since alarms need to be investigated for any potential damage, a large number of false alarms may increase the operational costs significantly. Thus, IDS need to be configured properly, as oversensitive IDS could detect attacks early but at the cost of a higher number of false alarms. Similarly, IDS with low sensitivity could reduce the false alarms while increasing the time to detect the attacks. The…
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