CRMay 28, 2019

A Question of Context: Enhancing Intrusion Detection by Providing Context Information

arXiv:1905.11735v112 citations
Originality Synthesis-oriented
AI Analysis

This addresses the need for more effective intrusion detection in industrial settings, but it is incremental as it builds on existing methods by incorporating context.

The paper tackled the problem of intrusion detection in industrial networks by comparing context-based and context-less systems, finding that context information improves reliability in identifying malicious actions.

Due to the fourth industrial revolution, and the resulting increase in interconnectivity, industrial networks are more and more opened to publicly available networks. Apart from the huge benefit in manageability and flexibility, the openness also results in a larger attack surface for malicious adversaries. In comparison to office environments, industrial networks have very high volumes of data. In addition to that, every delay will most likely lead to loss of revenue. Hence, intrusion detection systems for industrial applications have different requirements than office-based intrusion detection systems. On the other hand, industrial networks are able to provide a lot of contextual information due to manufacturing execution systems and enterprise resource planning. Additionally, industrial networks tend to be more uniform, making it easier to determine outliers. In this work, an abstract simulation of industrial network behaviour is created. Malicious actions are introduced into a set of sequences of valid behaviour. Finally, a context-based and context-less intrusion detection system is used to find the attacks. The results are compared and commented. It can be seen that context information can help in identifying malicious actions more reliable than intrusion detection with only one source of information, e.g. the network.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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