학술논문

Seclius: An Information Flow-Based, Consequence-Centric Security Metric
Document Type
Periodical
Source
IEEE Transactions on Parallel and Distributed Systems IEEE Trans. Parallel Distrib. Syst. Parallel and Distributed Systems, IEEE Transactions on. 26(2):562-573 Feb, 2015
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
Security
Measurement
Organizations
Databases
Web servers
Probabilistic logic
Intrusion detection systems
system security metric
information flow-based analysis
Language
ISSN
1045-9219
1558-2183
2161-9883
Abstract
It is critical to monitor IT systems that are part of energy delivery system infrastructure. The problem with intrusion detection systems (IDSes) is that they often produce thousands of alerts daily that must be dealt with by administrators manually. To provide situational awareness, detection systems usually employ (alert, priority) mappings that are either built in the IDS without consideration of the high-level mission objectives of the infrastructure, or manually defined by administrators through a time-consuming task that requires deep system-level expertise. In this paper, we present Seclius, an online security evaluation framework that translates low-level IDS alerts into a high-level system security measure and provides a ranking of past malicious events and affected system assets based on how crucial they are for the organization. Seclius significantly reduces human involvement by automatically learning system characteristics, providing a simple formalism that administrators can use to define security requirements. Experiments on a process control network with real vulnerabilities and a multistep attack show that Seclius can accurately report system security with low performance overhead and support the time-constrained security decision-making process that is necessary for critical infrastructure.